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WO2018144599A1 - Caractérisation de nanoparticules magnétiques - Google Patents

Caractérisation de nanoparticules magnétiques Download PDF

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Publication number
WO2018144599A1
WO2018144599A1 PCT/US2018/016233 US2018016233W WO2018144599A1 WO 2018144599 A1 WO2018144599 A1 WO 2018144599A1 US 2018016233 W US2018016233 W US 2018016233W WO 2018144599 A1 WO2018144599 A1 WO 2018144599A1
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WIPO (PCT)
Prior art keywords
excitation
frequency
harmonic
predetermined
coil
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Application number
PCT/US2018/016233
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English (en)
Inventor
Kai Wu
Jian-Ping Wang
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Regents Of The University Of Minnesota
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Publication of WO2018144599A1 publication Critical patent/WO2018144599A1/fr

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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R33/00Arrangements or instruments for measuring magnetic variables
    • G01R33/12Measuring magnetic properties of articles or specimens of solids or fluids
    • G01R33/1276Measuring magnetic properties of articles or specimens of solids or fluids of magnetic particles, e.g. imaging of magnetic nanoparticles

Definitions

  • This disclosure relates to characterization of magnetic nanoparticles, for example, magnetic nanoparticles such as superparamagnetic iron oxide nanoparticles.
  • Ferrofluids composed of monodisperse magnetic nanoparticles (MNPs) in aqueous solutions, can be used in clinical and medical applications such as drug targeting and delivery, magnetic particle imaging (MPI), magnetic hyperthermia therapy, magnetic resonance imaging (MRI), etc. These applications are based on the nonlinear magnetic responses of MNPs to alternating current (AC) magnetic fields.
  • MNPs monodisperse magnetic nanoparticles
  • AC alternating current
  • SPIONs Superparamagnetic iron oxide nanoparticles possessing strong magnetic moments that saturate at relatively low fields on the order of tens of milliteslas may be used as constituents of the ferrofluidic magnetoresponsive nanosystems listed above.
  • SPIONs can be used for various applications, for example, bio-imaging contrast agents, heating sources for tumor therapy, and carriers for controlled drug delivery and release to target organs and tissues.
  • SPIONs may be functionalized with polymer shells for providing colloidal stability and biocompatibility. Due to the large variability in medical treatments and uses, SPIONs may be specifically tailored for different types of applications, which may include tuning the physical and magnetic properties of the SPIONs.
  • MNPs with large magnetic moments may be desirable for drug delivery, MRI, and MPI, so the external gradient field is able to guide MNPs to target tissues.
  • MRI applications may benefit from using relatively small diameter particles for in vivo cell tracking while drug delivery applications may benefit from using larger particles to ensure high magnetic moments.
  • the disclosure describes an example system including an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response including a plurality of harmonics from the sample volume.
  • the example system includes a detection coil configured to sense the magnetic response and output a response signal in response to the magnetic response.
  • the response signal is indicative of the plurality of harmonics.
  • the example system includes a computing device.
  • the computing device is configured to receive the response signal from the detection coil, extract predetermined harmonic components of the plurality of harmonics from the response signal, and determine an average saturation magnetization of the plurality of magnetic nanoparticles based on the predetermined harmonic components.
  • the disclosure describes an example technique including sending, by a computing device, an excitation signal to an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response including a plurality of harmonics from the sample volume.
  • the example technique includes receiving, by the computing device, a response signal indicative of the plurality of harmonics, extracting, by the computing device, predetermined harmonic components of the plurality of harmonics from the response signal, and determining, by the computing device, an average saturation magnetization of the plurality of magnetic nanoparticles based on the predetermined harmonic components.
  • the disclosure describes an example system including an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response having a phase lag relative to the first and the second excitation fields from the sample volume.
  • the example system includes a detection coil configured to sense the magnetic response and output a response signal in response to the magnetic response, wherein the response signal is indicative of the phase lag.
  • the example system includes a computing device.
  • the computing device is configured to receive the response signal from the detection coil, extract the phase lag from the response signal, and determine an average hydrodynamic volume of the plurality of magnetic nanoparticles based on the phase lag.
  • the disclosure describes an example technique including sending, by a computing device, an excitation signal to an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response having a phase lag relative to the first and second excitation fields from the sample volume.
  • the example technique includes, receiving, by the computing device, a response signal indicative of the phase lag, extracting, by the computing device, the phase lag from the response signal, and determining, by the computing device, an average hydrodynamic volume of the plurality of magnetic nanoparticles based on the phase lag.
  • the disclosure describes an example system including an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response including a plurality of harmonics from the sample volume.
  • the magnetic response has a phase lag relative to the first and second excitation fields.
  • the example system includes a detection coil configured to sense the magnetic response and output a response signal in response to the magnetic response.
  • the response signal is indicative of one or both of the plurality of harmonics or the phase lag.
  • the example system includes a computing device.
  • the computing devices is configured to receive the response signal from the detection coil, extract one or both of the phase lag or predetermined harmonic components of the plurality of harmonics from the response signal, and determine a core state of the plurality of magnetic nanoparticles based on one or both of the phase lag or the predetermined harmonic components, wherein the core state is one of a single-core state or a multi- core state.
  • the disclosure describes an example technique.
  • the example technique includes sending, by a computing device, an excitation signal to an excitation coil configured to simultaneously subject a sample volume including a plurality of magnetic nanoparticles to a first excitation field having a frequency f H and a second excitation field having a frequency f L .
  • the first and the second excitation fields are configured to generate a magnetic response including a plurality of harmonics from the sample volume.
  • the magnetic response has a phase lag relative to the first and second excitation fields.
  • the example technique includes receiving, by the computing device, a response signal indicative of one or both of the plurality of harmonics or the phase lag, extracting, by the computing device, one or both of the phase lag or predetermined harmonic components of the plurality of harmonics from the response signal, and determining, by the computing device, a core state of the plurality of magnetic nanoparticles based on one or both of the phase lag or the predetermined harmonic components.
  • the core state is one of a single-core state or a multi-core state.
  • FIG. 1 is a conceptual and schematic block diagram illustrating an example system including a computing device and a search coil for characterizing a sample volume containing a plurality of magnetic nanoparticles.
  • FIG. 2 is a conceptual and schematic block diagram illustrating an example of a computing device for controlling the system of FIG. 1.
  • FIG. 3 is a flow diagram illustrating an example technique for determining an average saturation magnetization of a plurality of magnetic nanoparticles based on a harmonic ratio extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • FIG. 4 is a flow diagram illustrating an example technique for determining an average hydrodynamic volume of a plurality of magnetic nanoparticles based on a phase lag extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • FIG. 5 is a flow diagram illustrating an example technique for determining a core state of a plurality of magnetic nanoparticles based on one or both of a phase lag or a harmonic ratio extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • FIG. 6A is a chart presenting examples of harmonic ratio as a function of frequency for simulated nanoparticles having different magnetizations.
  • FIG. 6B is a chart presenting an example of averaged harmonic ratio as a function of saturation magnetization for simulated nanoparticles.
  • FIG. 6C is a chart presenting examples of harmonic ratio as a function of frequency for simulated nanoparticles having different core diameters.
  • FIG. 6D is a chart presenting an example of averaged harmonic ratio as a function of core diameter for simulated nanoparticles.
  • FIG. 7 A is a conceptual and schematic diagram illustrating an example of predominance of Neel relaxation exhibited by multi-core nanoparticles.
  • FIG. 7B is a conceptual and schematic diagram illustrating an example of predominance of Brownian relaxation exhibited by single-core nanoparticles.
  • FIG. 8A is a chart presenting an example of the relative contribution of Neel relaxation and Brownian relaxation to effective relaxation time as a function of core diameter for sample single-core nanoparticles.
  • FIG. 8B is a chart presenting an example of the relative contribution of Neel relaxation and Brownian relaxation to effective relaxation time as a function of core diameter for sample multi-core nanoparticles.
  • FIG. 9A is photograph illustrating an example search coil assembly including a sample vial, a detection coil, a low frequency coil, and a high frequency coil.
  • FIG. 9B is photograph illustrating the sample vial, the detection coil, the low frequency coil, and the high frequency coil of the example search coil assembly of FIG. 9A.
  • FIG. lOA is schematic and conceptual drawing illustrating the structure and dimensions of the sample vial, the detection coil, the low frequency coil, and the high frequency coil of FIG. 9B.
  • FIG. 10B is schematic and conceptual drawing illustrating the structure and dimensions of the sample vial of FIG. 9B.
  • FIG. 11 A is a chart presenting examples of harmonic ratio as a function of frequency for sample nanoparticles having different core states.
  • FIG. 1 IB is a chart presenting examples of phase lag as a function of frequency for sample nanoparticles having different core states.
  • FIG. 12A is a chart presenting an example of the difference in amplitudes of the third harmonic for multi-core nanoparticles in liquid and frozen states.
  • FIG. 12B is a chart presenting an example of the difference in amplitudes of the third harmonic for single-core nanoparticles in liquid and frozen states.
  • FIG. 13 A is a chart presenting examples harmonic ratio as a function of frequency for sample single-core nanoparticles in liquid and frozen states.
  • FIG. 13B is a chart presenting examples of phase lag as a function of frequency for sample single-core nanoparticles in liquid and frozen states.
  • FIG. 13C is a chart presenting examples of harmonic ratio as a function of frequency for sample multi-core nanoparticles in liquid and frozen states.
  • FIG. 13D is a chart presenting examples of phase lag as a function of frequency for sample multi-core nanoparticles in liquid and frozen states.
  • FIGS. 14A-14D are photographs illustrating example bright-field transmission electron microscopy micrographs of sample single-core and multi-core nanoparticles collected using dynamic light scattering.
  • FIGS. 15A-15D are charts presenting example statistical hydrodynamic size distributions for the sample single-core and multi-core nanoparticles shown in FIGS. 14A-14D.
  • FIGS. 16A-16D are charts presenting example core diameter distributions for sample single-core and multi-core nanoparticles shown in FIGS. 14A-14D.
  • FIG. 17A is a chart presenting x-ray diffraction spectra for sample nanoparticles.
  • FIG. 17B is a chart presenting magnetization curves for the sample nanoparticles of FIG. 16 A.
  • SPIONs superparamagnetic iron oxide nanoparticles
  • MNPs magnetic nanoparticles
  • Descriptions of systems and techniques for characterizing MNPs are applicable for characterizing SPIONs.
  • the MNPs may include any nanoparticles exhibiting magnetism or a magnetic response to an excitation field. Characterizing MNPs, for example, SPIONs, in sample
  • compositions for example, determining properties such as average diameters, nanostructure, and magnetization, may utilize relatively expensive, complicated, and slow techniques such as transmission electron microscopy (TEM), vibrating sample magnetometry (VSM), and dynamic light scattering (DLS). Such characterization may also utilize additional processing of the sample compositions, for example, drying, to remove fluid and produce dried particles, prior to characterization.
  • TEM transmission electron microscopy
  • VSM vibrating sample magnetometry
  • DLS dynamic light scattering
  • the use of multiple apparatuses and additional processing steps may be reduced or avoided by using alternative techniques for characterizing SPIONs, for example, detecting and using the magnetic response of SPIONs to predetermined magnetic fields to determine properties of SPIONs.
  • the nonlinear magnetic response of SPIONs to alternating current (AC) magnetic fields may induce harmonic signals that may be related to the properties of SPIONS.
  • Example techniques and systems according to the disclosure may implement frequency mixing to characterize MNPs, for example, by determining magnetic or physical properties of MNPs.
  • Techniques that implement frequency mixing may include magnetically exciting a sample using two excitation fields have two respective frequencies, a high frequency (f H ) and a low frequency (f L ).
  • the sample may generate a magnetic response that includes various frequency components.
  • the magnetic response may be detected by a detection coil, which may generate a response signal based on the magnetic response.
  • Detecting linear combinations for example, frequencies representing linear combinations of the high and low frequencies, mf H + n f L (where m and n may respectively be the same or different positive or negative integers) may reduce or substantially eliminate noise generated at the fundamental frequencies f H and f L themselves.
  • the low frequency excitation field may drive the MNPs into their nonlinear saturation region periodically, for example, by allowing the MNPs sufficient relaxation time to enter a state of magnetic saturation.
  • the high frequency excitation field is swept in a predetermined frequency range to generate mixing frequency signals, for example, the linear combinations mf H + n f L .
  • the detection coil may have a higher output voltage amplitude at the higher mixed frequency.
  • using frequency mixing may reduce noise, for example, white noise, or 1/f noise (also known as pink noise).
  • the magnetic response of MNPs to the excitation fields with respective frequencies f H and f L includes frequency mixing components, for example, linear combinations mf H ⁇ n f L , that are induced at odd harmonics according to the dynamic magnetization models described elsewhere in the disclosure.
  • Frequency mixing may be implemented using example systems according to the disclosure that include an excitation coil for stimulating magnetic nanoparticles, and a detection coil for detecting a magnetic response of the nanoparticles to the excitation.
  • a "search coil” may refer to a system, subsystem, or assembly that includes one or more of one or more excitation coils, detection coils, or sample vials or containers for containing a plurality of magnetic nanoparticles.
  • SPIONs may also exhibit different sizes, magnetic strengths, clustering (single- core particles or clusters of multi-core particles), and differ in the origin of their superparamagnetism— from intrinsic Neel motion (rotating spin inside a stationary particle) or from extrinsic Brownian motion (rotating the entire particle along with its spin).
  • response of SPIONS to the excitation fields may be related to the magnetic and physical properties of SPIONs, one or both of the amplitude and the phase of one or more odd harmonic components may be used to determine magnetic and physical properties of SPIONs.
  • harmonic ratios of the third harmonic (f H + 2/ L ) over the fifth harmonic (f H + 4/ L ) are inversely proportional to saturation magnetization, M s , and core diameter, D, of MNPs, according to the induced signal model and harmonic ratio model described elsewhere in the disclosure.
  • the phase lag of magnetic moment to the driving fields may be monitored using harmonic phase angles, and is related to the hydrodynamic volumes of SPIONs, according to the relaxation time model and phase lag model discussed elsewhere in the disclosure.
  • properties such as saturation magnetization, the average hydrodynamic size, the dominating relaxation processes of SPIONs, and the distinction between single- and multi-core particles may be determined.
  • the magnetization dynamics of MNPs may be characterized by effective relaxation time ⁇ eff , which is dependent on Brownian relaxation time ⁇ ⁇ and Neel relaxation time ⁇ N . Both relaxation processes are dependent on the frequency and amplitude of applied magnetic fields.
  • the x eff of a nanoparticle governs its ability to follow the applied magnetic fields. For example, some types of magnetic nanoparticles may relatively rapidly respond to applied magnetic fields, for example, by generating a field in response, while other types of nanoparticles may exhibit a relatively large lag in response to applied magnetic fields.
  • the effective relaxation time x eff is related to the effective relaxation time x eff .
  • nanoparticle governs its ability to follow, or generate a response field, to the applied alternating or excitation field.
  • SPIONs are characterized by core diameter D, saturation magnetization M s and concentration c.
  • D saturation magnetization
  • M s saturation magnetization
  • concentration c concentration of the magnetic core
  • V c volume of the magnetic core
  • the ratio of magnetic energy over thermal energy
  • k B Boltzmann constant
  • T the absolute temperature in Kelvin.
  • Each type of SPION may have its own signature of phase and amplitude and will respond differently to applied magnetic fields.
  • SPIONs at specific frequencies are represented by a phasor: A ⁇ ⁇ (or expressed as ⁇ /, ⁇ ), where ⁇ is the frequency of driving field, ⁇ is the phase lag, and j
  • t is time.
  • the background noise is collected with external fields applied.
  • the background noise can be expressed as ⁇ ⁇ ⁇ ⁇ .
  • the overall signal is expressed as ⁇ ⁇ ⁇ ⁇ .
  • This signal is the sum of two phasors: the background noise and the signal generated by SPIONs (namely,
  • the harmonic amplitude A p and phase lag ⁇ ⁇ of each type of SPIONs at different frequencies can be determined.
  • H(t) A H cos(2nf H t) + A L cos(2nf L t), where A H , A L , f H , f L are the amplitude and frequency of high and low frequency fields, respectively.
  • Another model that may be used is a log-normal size distribution model.
  • the probability density function p(D; D Q , 5) is given by p where D Q is the
  • CDF cumulative distribution function
  • M D (t) is the magnetic response governed by the Langevin function.
  • Detection coil sensitivity 5 0 equals to the external magnetic field strength divided by current.
  • EQUATION 2 sets forth the Taylor expansion of M D (t), including the major frequency mixing components,
  • the harmonic ratio is inversely proportional to the sixth power of D and the second power of M s .
  • Another advantage of using this harmonic ratio to characterize magnetic properties of SPIONs is that this parameter is independent of concentration of SPIONs in the sample. While EQUATION 7 provides an inverse relation between the selected harmonic with particular powers of D and M s , the selected harmonic ratio may also have an inverse relation with other powers of D and s, as discussed elsewhere in the disclosure.
  • example techniques according to the disclosure may include extracting one or both of the phase lag or the harmonic ratio from a signal representing a magnetic response of a sample volume of a plurality nanoparticles, and determining one or more properties such as saturation magnetization, hydrodynamic volume, and core state (single-core or multi-core) of the plurality of magnetic nanoparticles, based on one or both of the phase lag or the harmonic ratio.
  • Example systems described below may be used to subject the sample volume of nanoparticles to excitation fields to stimulate the magnetic response for extracting one or both of the phase lag or the harmonic ratio.
  • FIG. 1 is a conceptual and schematic block diagram illustrating an example system 10 including a computing device 20 and a search coil 14 for characterizing a sample volume containing a plurality of magnetic nanoparticles contained in a sample container 12.
  • sample container 12 is adjacent to or within search coil 14, and computing device 20 is coupled to search coil 14.
  • computing device 12 may be electrically coupled to search coil 14 by one or more wired or wireless connection capable of carrying one or more signals.
  • Computing device 20 may control search coil 14 to one or both of magnetically stimulate the sample volume and sense a magnetic response of the volume in sample container 12.
  • Sample container 12 may include a container, for example, a vial, capable of containing a predetermined volume of a plurality of magnetic nanoparticles.
  • sample container 12 may contain a liquid including the plurality of magnetic nanoparticles, for example, as suspension.
  • sample container 12 may contain a solid, for example, a frozen liquid including the plurality of magnetic nanoparticles, or a dried or particulate form of the plurality of magnetic nanoparticles.
  • sample container 12 may be disposed within a region of search coil 14, for example, as shown in FIG. 1, in other examples, sample container 12 may be outside search coil 14.
  • search coil 14 may be sufficiently proximate to sample container 12 to one or both of magnetically stimulate sample container 12 or sense the magnetic response of the sample volume in sample container 12 while sample container 12 is outside search coil 14.
  • Search coil 14 includes an excitation coil 16 configured to subject the sample volume to an excitation field, and a detection coil 18 configured to detect or sense the magnetic response of the sample volume to the excitation field.
  • Excitation coil 16 may include one or more coils. For example, as shown in FIG. 1, excitation coil 16 may include a first coil 16a and a second coil 16b. In some examples, excitation coil 16 may simultaneously subject the sample volume to a first excitation field having a frequency f H and a second excitation field having a frequency f L . The frequency f H is greater (or higher) than the frequency f L .
  • first coil 16a may be a high frequency coil generating frequency f H
  • second coil 16b may be a low frequency coil generating frequency f L
  • first and second coils 16a and 16b may be wound with an appropriate number of windings of a metal or alloy filament or wire, to generate the respective predetermined frequencies.
  • f H may be variable within a predetermined frequency range.
  • f H may be variable between a predetermined lower frequency and a predetermined higher frequency defining the frequency range.
  • first coil 16a may include a plurality of subsets of windings to change the effective generated frequency.
  • a first subset of windings may generate a first frequency and a second subset of windings may generate a second frequency.
  • excitation coil 16, for example, first coil 16a may include a slider or another adjustment mechanism to select a selected subset of windings associated with a particular predetermined frequency from a range of frequencies.
  • first coil 16a may be otherwise capable of generating or delivering a variable frequency within the predetermined frequency range.
  • excitation coil 16 may deliver a first excitation field having a frequency f H varying between a lower frequency of about 10 kHz and a higher frequency of about 20 kHz, for example, a frequency that linearly sweeps the frequency range.
  • a non-linear sweep may be performed, for example, a power-law, logarithmic, or a sweep based on any non-linear curve passing through end points defined by the lower frequency and the higher frequency.
  • the amplitude of the first excitation field generated by first coil 16a may be set to any suitable amplitude for generating a detectable magnetic response in the sample volume.
  • the amplitude of the first excitation field may be about 10 Oe.
  • the frequency f L of the second excitation field may be a predetermined fixed frequency.
  • second coil 16b include a plurality of windings including a number of windings selected to generate the predetermined fixed frequency.
  • second coil 16b may include a variable winding, for example, similar to some examples of first coil 16a, but which may be set to a predetermined fixed frequency selected from the frequency range.
  • the frequency f L may be at least 10 to 100 times lower than the frequency f H .
  • the second excitation field may have a frequency f L of about 50 Hz.
  • the amplitude of the second excitation field generated by second coil 16b may be set to any suitable amplitude for generating a detectable magnetic response in the sample volume.
  • the amplitude of the second excitation field is about 10 times the amplitude of the first excitation field.
  • the amplitude of the second excitation field may be about 100 Oe.
  • Detection coil 18 may be configured to detect a magnetic response of the sample volume subjected to excitation fields from excitation coil 16.
  • detection coil 18 may include a plurality of windings susceptible to a magnetic response from the sample volume. The plurality of windings may generate a signal, for example, an electrical signal, in response to the magnetic response.
  • Detection coil 18 may be disposed about or adjacent the sample volume.
  • detection coil 18 may include a pair of differentially wound pick-up coils 18a and 18b.
  • pick-up coil 18a may be wound clockwise, while pick-up coil 18b may be wound counterclockwise, with a similar number of windings.
  • sample container 12 may be disposed within or adjacent one of the differentially wound pick-up coils, for example, within pick-up coil 18a, as shown in FIG. 1.
  • signals generated by pick-ups coils 18a and 18b may be combined, for example, superimposed or added, to generated a combined signal 19 sent to computing device 20.
  • a signal generated by pick-up coil 18a may be selected as a signal indicative of a magnetic response of the sample volume to the excitation field, and sent to computing device 20, while a signal generated by pick-up coil 18b may be monitored to detect noise or other phenomena which may be sent to computing device 20 for subsequent processing and analysis.
  • the raw signal or signals generated by detection coil 18 may be passed through a bandstop filter 13 to generate signal 19 sent to computing device 20 from detection coil 10.
  • search coil 14 may include first coil 16a, second coil 16b, detection coil 18, and sample container 12 in relatively close proximity.
  • second coil 16b may surround first coil 16a, while first coil 16a surrounds detection coil 18, and detection coil 18 surrounds sample container 12. This may allow for a relatively compact assembly of search coil 14.
  • one or more components of search coil 14 may be rearranged.
  • first coil 16a may surround second coil 16b, while detection coil 18 may surround one or both of first coil 16a and second coil 16b.
  • Computing device 20 may generate an excitation signal 21 and send excitation signal 21 to one or both of first coil 16a and second coil 16b to control the respective first and second excitation fields, for example, by controlling the respective frequencies and the amplitudes.
  • Excitation signal 21 may include respective subsignals respectively sent to first coil 16a and second coil 16b.
  • system 100 may optionally include at least one instrument amplifier 15 to amplify excitation signal 21 before it is sent to excitation coil 16.
  • excitation signal 21 may optionally be passed through a bandpass filter 17 before it is sent to excitation coil 16. Using bandpass filter 17 may suppress higher harmonics that may be introduced into excitation signal 21 by at least one instrument amplifier 15.
  • the plurality of magnetic nanoparticles in the sample volume in sample container 12 may get magnetically stimulated by the excitation fields emitted by excitation coil 16 in response to excitation signal 21.
  • the magnetically stimulated magnetic nanoparticles may generate a magnetic response, for example, a response field, in response to the excitation fields.
  • Detection coil 18 may detect the magnetic response, for example, generating and outputting response signal 19, which is sent to computing device 20.
  • Computing device 20 may use response signal 19 to determine properties of magnetic nanoparticles in the sample volume in sample container 12.
  • computing device 20 may extract one or more of harmonic components, harmonic ratios, or phase lags, for example, phase lag of a predetermined harmonic component, and determine properties of the magnetic nanoparticles based on the one or more extracted parameters.
  • FIG. 2 is a conceptual block diagram illustrating an example of computing device 20 illustrated in FIG. 1.
  • computing device 20 may include, for example, a desktop computer, a laptop computer, a workstation, a server, a mainframe, a cloud computing system, or the like.
  • computing device 20 controls the operation of system 10, including, for example, excitation coil 16 and detection coil 18.
  • computing device 20 includes one or more processors 22, one or more input devices 24, one or more communication units 26, one or more output devices 28, and one or more storage devices 32.
  • one or more storage devices 32 stores excitation signal generation module 34 and response signal analysis module 36.
  • computing device 20 may include additional components or fewer components than those illustrated in FIG. 2.
  • processors 22 are configured to implement functionality and/or process instructions for execution within computing device 20.
  • processors 22 may be capable of processing instructions stored by storage device 32.
  • Examples of one or more processors 22 may include, any one or more of a microprocessor, a controller, a digital signal processor (DSP), an application specific integrated circuit (ASIC), a field-programmable gate array (FPGA), or equivalent discrete or integrated logic circuitry.
  • DSP digital signal processor
  • ASIC application specific integrated circuit
  • FPGA field-programmable gate array
  • One or more storage devices 32 may be configured to store information within computing device 20 during operation.
  • Storage devices 32 include a computer-readable storage medium or computer-readable storage device.
  • storage devices 32 include a temporary memory, meaning that a primary purpose of storage device 32 is not long-term storage.
  • storage devices 32 include a volatile memory, meaning that storage device 32 does not maintain stored contents when power is not provided to storage device 32. Examples of volatile memories include random access memories (RAM), dynamic random access memories (DRAM), static random access memories (SRAM), and other forms of volatile memories known in the art.
  • RAM random access memories
  • DRAM dynamic random access memories
  • SRAM static random access memories
  • storage devices 32 are used to store program instructions for execution by processors 22.
  • Storage devices 32 are used by software or applications running on computing device 20 to temporarily store information during program execution.
  • storage devices 32 may further include one or more storage device 32 configured for longer-term storage of information.
  • storage devices 32 include non-volatile storage elements. Examples of such non-volatile storage elements include magnetic hard discs, optical discs, floppy discs, flash memories, or forms of electrically programmable memories (EPROM) or electrically erasable and programmable (EEPROM) memories.
  • EPROM electrically programmable memories
  • EEPROM electrically erasable and programmable
  • Computing device 20 may further include one or more communication units 26.
  • Computing device 20 may utilize communication units 26 to communicate with excitation coil 16 and detection coil 18 via one or more networks, such as one or more wired or wireless networks.
  • Communication unit 26 may include a network interface card, such as an Ethernet card, an optical transceiver, a radio frequency transceiver, or any other type of device that can send and receive information.
  • Other examples of such network interfaces may include WiFi radios or Universal Serial Bus (USB).
  • computing device 20 utilizes communication units 26 to wirelessly communicate with an external device such as a server.
  • Computing device 20 also includes one or more input devices 24.
  • Input devices 24, in some examples, are configured to receive input from a user through tactile, audio, or video sources.
  • Examples of input devices 24 include a mouse, a keyboard, a voice responsive system, video camera, microphone, touchscreen, or any other type of device for detecting a command from a user.
  • Computing device 20 may further include one or more output devices 28.
  • Output devices 28 are configured to provide output to a user using audio or video media.
  • output devices 28 may include a display, a sound card, a video graphics adapter card, or any other type of device for converting a signal into an appropriate form understandable to humans or machines.
  • computing device 20 outputs a representation of one or more of excitation signal 21, response signal 19, or one or more properties of the plurality of magnetic nanoparticles in the sample volume, for example, a saturation magnetization, a hydrodynamic volume, a core diameter, or a core state, via output devices 28.
  • computing device 20 may output a representation of excitation signal 21 or response signal 19, via output devices 28.
  • computing device 20 may determine excitation signal 21 based on response signal 19 and send excitation signal 21 to at least one component to control system 10 by adjusting the attributes or parameters of excitation coil 16 or detection coil 18, for example, to adjust a frequency or amplitude at which fields are generated or signals are sensed.
  • Computing device 20 also may include excitation signal generation module 32 and response signal analysis module 36 for stimulating a magnetic response from the sample volume and analyzing the magnetic response of the sample volume to the excitation field to determine one or more properties of a plurality of magnetic nanoparticles in the sample volume. Functions performed by excitation signal generation module 32 and response signal analysis module 36 are explained below with reference to the example techniques represented by respective flow diagrams illustrated in FIGS. 3-5.
  • Excitation signal generation module 32 and response signal analysis module 36 may be implemented in various ways.
  • excitation signal generation module 32 and response signal analysis module 36 may be implemented as software, such as an executable application or an operating system, or firmware executed by one or more processors 22.
  • excitation signal generation module 32 and response signal analysis module 36 may be implemented as part of a hardware unit of computing device 20.
  • Computing device 20 may include additional components that, for clarity, are not shown in FIG. 2.
  • computing device 20 may include a power supply to provide power to the components of computing device 20.
  • the components of computing device 20 shown in FIG. 2 may not be necessary in every example of computing device 20.
  • Examples of system 10 and computing device 20 are described with reference to FIGS. 1 and 2 above, including examples of excitation coil 16 for generating excitation fields to stimulate a magnetic response from the sample volume, and detection coil 18 for detecting response signal 19 indicative of the magnetic response generated by the sample volume.
  • Example techniques for generating the excitation fields and analyzing response signal 19 to determine one or more properties a plurality of magnetic nanoparticles are described with reference to FIGS. 3-5.
  • FIG. 3 is a flow diagram illustrating an example technique for determining an average saturation magnetization of a plurality of magnetic nanoparticles based on a harmonic ratio extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • the example technique of FIG. 3 includes sending, by computing device 20, excitation signal 21 to excitation coil 16 to simultaneously subject the sample volume to the first and the second excitation fields (40).
  • excitation signal generation module 34 may determine or generate excitation signal 21 based on the predetermined respective frequencies and amplitudes with which the first and the second excitation fields are to be generated. The first and the second excitation fields may cause the sample volume to generate a magnetic response including a plurality of harmonics.
  • Detection coil 18 may detect the magnetic response and output response signal 19 based on the magnetic response.
  • response signal 19 substantially preserves predetermined information in the detected magnetic response.
  • the response signal may be indicative of a plurality of harmonics of the magnetic response.
  • Computing device 20 may receive response signal 19 from detection coil 18, and analyze response signal 19 (42).
  • response signal analysis module 36 of computing device 20 may analyze response signal 19.
  • response signal analysis module 36 may extract predetermined odd harmonics of the plurality of harmonics from response signal 19 (44).
  • the odd harmonic components may include at least a third harmonic having a frequency substantially equal to f H + 2f L and a fifth harmonic having a frequency substantially equal to f H + 4f L .
  • computing device 20 may use an inverse relationship between the harmonic ratio and the average saturation magnetization to determine the average saturation magnetization based on a determined harmonic ratio.
  • the example technique includes, by computing device 20, determining an average saturation magnetization of a plurality of magnetic nanoparticles in the sample volume based on the predetermined harmonic components (46).
  • computing device 20 may determine a respective amplitude of a predetermined harmonic, for example, one or both of the third harmonic and the fifth harmonic, and use the respective amplitude to determine the average saturation magnetization.
  • computing device 20 may determine a harmonic ratio, or a ratio of the third harmonic to the fifth harmonic, and use the harmonic ratio to determine the average saturation magnetization.
  • computing device may use a lookup table, a database, an equation, a numerical approximation, or a simulation, to relate the respective amplitude or the harmonic ratio to an average saturation magnetization.
  • the lookup table or database may be determined by solving one or more of EQUATIONS 1-8, or by performing a numerical approximation or a numerical simulation.
  • the lookup table or database may include entries determined by determining properties of magnetic nanoparticles using alternative techniques, for example, VSM, TEM, or DSL.
  • computing device 20 may also account for an average core diameter in determining the average saturation magnetization.
  • computing device 20 may use a lookup table, a database, an equation, a numerical approximation, or a simulation, to relate both the harmonic ratio and the average core diameter to the average saturation magnetization.
  • computing device 20 may use one or more of EQUATIONS 1-8 or variants thereof to determine the average saturation magnetization, for example, by assigning values to mathematically known variables in one or more of EQUATIONS 1-8, and using a linear or non-linear numerical method to solve for one or more mathematically unknown variables in EQUATIONS 1-8, including the average saturation
  • the example technique of FIG. 3 may be used to determine the average saturation magnetization for a plurality of magnetic nanoparticles in the sample volume.
  • FIG. 4 is a flow diagram illustrating an example technique for determining an average hydrodynamic volume of a plurality of magnetic nanoparticles based on a phase lag. extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • the example technique of FIG. 4 includes sending, by computing device 20, excitation signal 21 to excitation coil 16 to simultaneously subject the sample volume to the first and the second excitation fields (50).
  • excitation signal generation module 34 may determine or generate excitation signal 21 based on the predetermined respective frequencies and amplitudes of the first and the second excitation fields.
  • the first and the second excitation fields may cause the sample volume to generate a magnetic response including a plurality of harmonics.
  • the magnetic response may be detected by detection coil 18, which may output response signal 19 based on the magnetic response.
  • response signal 19 substantially preserves predetermined information in the detected magnetic response.
  • the response signal may be indicative of a phase lag of the magnetic response of the sample volume to the excitation fields.
  • Computing device 20 may receive response signal 19 from detection coil 18, and analyze response signal 19 (52).
  • response signal analysis module 36 of computing device 20 may analyze response signal 19.
  • response signal analysis module 36 may extract a phase lag of the response signal 19 (54).
  • the phase lag may be a phase lag for a third harmonic having a frequency substantially equal to f H + 2f L , or for a fifth harmonic having a frequency substantially equal to f H + 4f L .
  • computing device 20 may use an inverse relationship between the phase lag and the average hydrodynamic volume to determine the average hydrodynamic volume based on a determined phase lag.
  • the example technique includes, by computing device 20, determining an average hydrodynamic volume of a plurality of magnetic nanoparticles in the sample volume based on the predetermined harmonic components (56).
  • computing device 20 may use a lookup table, a database, an equation, a numerical approximation, or a simulation, to relate the phase lag to an average hydrodynamic volume.
  • the lookup table or database may be determined by solving one or more of EQUATIONS 1-8, or by performing a numerical approximation or a numerical simulation.
  • the lookup table or database may include entries determined by determining properties of magnetic nanoparticles using alternative techniques, for example, VSM, TEM, or DSL.
  • computing device 20 may use one or more of EQUATIONS 1-8 or variants thereof to determine the average hydrodynamic volume, for example, by assigning values to mathematically known variables in one or more of EQUATIONS 1-8, and using a linear or non-linear numerical method to solve for one or more mathematical unknowns in EQUATIONS 1-8, including the average hydrodynamic volume.
  • the example technique of FIG. 3 may be used to determine the average hydrodynamic volume for a plurality of magnetic nanoparticles in the sample volume.
  • FIG. 5 is a flow diagram illustrating an example technique for determining a core state of a plurality of magnetic nanoparticles based on one or both of a phase lag or a harmonic ratio extracted from a magnetic response of the plurality of magnetic nanoparticles to applied excitation fields.
  • the example technique of FIG. 5 includes maintaining the sample volume in one of a liquid state or a frozen state (60), and determining one or both of the predetermined harmonic components or the phase lag (68) in the liquid state and the frozen state, respectively.
  • computing device 20 may determine one or both of the predetermined harmonic components or the phase lag in the liquid state, and again in the solid state.
  • the sample volume may be maintained in the liquid state by maintaining a temperature within sample container 12 above a melting point of a composition in sample container 12. In some examples, the sample volume may be maintained in the solid state by maintaining a temperature within sample container 12 below a melting point of the composition in sample container 12.
  • computing device may implement one or more of steps 62 to 66.
  • the example technique of FIG. 5 may include, by computing device 20, sending excitation signal 21 to excitation coil 16 to simultaneously subject the sample volume to the first and the second excitation fields (62).
  • excitation signal generation module 34 may determine excitation signal 21 based on the predetermined respective frequencies and amplitudes of the first and the second excitation fields.
  • the first and the second excitation fields may cause the sample volume to generate a magnetic response including a plurality of harmonics.
  • the magnetic response may be detected by detection coil 18, which may generate response signal 19 based on the magnetic response.
  • response signal 19 substantially preserves predetermined information in the detected magnetic response.
  • the response signal may be indicative of one or both of a plurality of harmonics or a phase lag of the magnetic response.
  • Computing device 20 may receive response signal 19 from detection coil 18, and analyze response signal 19 (64).
  • response signal analysis module 36 of computing device 20 may analyze response signal 19.
  • response signal analysis module 36 may extract one or both of the phase lag and the harmonic components of the response signal 19 (54).
  • the phase lag may be a phase lag for a third harmonic having a frequency substantially equal to f H + 2f L , or for a fifth harmonic having a frequency substantially equal to f H + 4/ L .
  • response signal analysis module 36 may extract predetermined odd harmonics of the plurality of harmonics from response signal 19 (66).
  • the odd harmonic components may include at least a third harmonic having a frequency substantially equal to f H + 2f L and a fifth harmonic having a frequency substantially equal to f H + 4f L .
  • the example technique may include, by computing device 20, determining a core state of a plurality of magnetic nanoparticles in the sample volume based on the predetermined harmonic components (68).
  • computing device 20 may determine a respective amplitude of a predetermined harmonic, for example, one or both of the third harmonic and the fifth harmonic, and use the respective amplitude to determine the core state.
  • computing device 20 may determine a harmonic ratio, or a ratio of the third harmonic to the fifth harmonic, and use the harmonic ratio to determine the core state.
  • the example technique includes, by computing device 20, determining core state of a plurality of magnetic nanoparticles in the sample volume based on the predetermined harmonic components (68).
  • computing device 20 may use a lookup table, a database, an equation, a numerical approximation, or a simulation, to relate one or both of the phase lag and the harmonic component or ratio to an average hydrodynamic volume.
  • the lookup table or database may be determined by solving one or more of EQUATIONS 1-8, or by performing a numerical approximation or a numerical simulation.
  • the lookup table or database may include entries determined by determining properties of magnetic nanoparticles using alternative techniques, for example, VSM, TEM, or DSL.
  • computing device 20 may use one or more of EQUATIONS 1-8 or variants thereof to determine the core state, for example, by assigning values to mathematically known variables in one or more of EQUATIONS 1-8, and using a linear or non-linear numerical method to solve for one or more mathematically unknown variables in EQUATIONS 1-8.
  • Computing device 20 may compare the mathematically unknown variables derived in a liquid state of the sample volume with the mathematically known variables derived in a frozen state of the sample volume, and on the basis of the comparison, determine whether the core state includes single-core nanoparticles or multi-core nanoparticles.
  • a reduction in an amplitude of a predetermined harmonic component that is greater than a predetermined threshold may be indicative of a core state associated with single-core nanoparticles.
  • a reduction in the amplitude of the third harmonic by over 90%, or over about 98%, between the frozen and liquid states may be indicative of single-core nanoparticles.
  • a change in the amplitude of the predetermined harmonic component of less than a predetermined threshold may be indicative of multi-core nanoparticles.
  • a maximum change in the amplitude of the third harmonic of less than about 10%, for example, less than about 5%, or about 4%, between the liquid and the frozen states may be indicative of a multi-core state.
  • a reduction in an harmonic ratio that is greater than a predetermined threshold may be indicative of a core state associated with single-core nanoparticles.
  • a reduction in the harmonic ratio of the third harmonic to the fifth harmonic by over 1, or over 2, or over 3 may be indicative of a single-core state.
  • a change in the amplitude of the predetermined harmonic component of less than a predetermined threshold may be indicative of a multi-core state.
  • a change in the amplitude of the third harmonic of less than about 1 unit, or about 0.25 units between the liquid and the frozen states may be indicative of a multi- core state.
  • a comparison of the phase lag between the liquid and the frozen state may be used in addition to or in place of the comparison of the harmonic ratio.
  • a substantially similar phase lag in the frozen and liquid states may be indicative of a multi-core state, while a difference in the phase lag, for example, at least about 5°, or at least about 10°, or at least about 20°, between the frozen and liquid states may be indicative of a single-core state.
  • the example technique of FIG. 3 may be used to determine the core state for a plurality of magnetic nanoparticles in the sample volume.
  • example systems and techniques according to the disclosure may be used to conduct search coil based frequency mixing to characterize properties such as saturation magnetizations, hydrodynamic volumes, and core states, of MNPs, for example, SPIONs.
  • Single- and multi-core SPIONs may be distinguished by comparing their harmonic ratio and phase information in liquid and frozen states. Analyzing the harmonic signals may also be used to determine the relaxation process that dominates under particular conditions.
  • processors including one or more microprocessors, digital signal processors (DSPs), application specific integrated circuits (ASICs), field programmable gate arrays (FPGAs), or any other equivalent integrated or discrete logic circuitry, as well as any combinations of such components.
  • DSPs digital signal processors
  • ASICs application specific integrated circuits
  • FPGAs field programmable gate arrays
  • processors may generally refer to any of the foregoing logic circuitry, alone or in combination with other logic circuitry, or any other equivalent circuitry.
  • a control unit including hardware may also perform one or more of the techniques of this disclosure.
  • Such hardware, software, and firmware may be implemented within the same device or within separate devices to support the various techniques described in this disclosure.
  • any of the described units, modules or components may be implemented together or separately as discrete but interoperable logic devices.
  • modules or units Depiction of different features as modules or units is intended to highlight different functional aspects and does not necessarily imply that such modules or units must be realized by separate hardware, firmware, or software components. Rather, functionality associated with one or more modules or units may be performed by separate hardware, firmware, or software components, or integrated within common or separate hardware, firmware, or software components.
  • the techniques described in this disclosure may also be embodied or encoded in a computer system-readable medium, such as a computer system-readable storage medium, containing instructions. Instructions embedded or encoded in a computer system-readable medium, including a computer system-readable storage medium, may cause one or more programmable processors, or other processors, to implement one or more of the techniques described herein, such as when instructions included or encoded in the computer system-readable medium are executed by the one or more processors.
  • Computer system readable storage media may include random access memory (RAM), read only memory (ROM), programmable read only memory (PROM), erasable programmable read only memory (EPROM), electronically erasable programmable read only memory (EEPROM), flash memory, a hard disk, a compact disc ROM (CD-ROM), a floppy disk, a cassette, magnetic media, optical media, or other computer system readable media.
  • RAM random access memory
  • ROM read only memory
  • PROM programmable read only memory
  • EPROM erasable programmable read only memory
  • EEPROM electronically erasable programmable read only memory
  • flash memory a hard disk, a compact disc ROM (CD-ROM), a floppy disk, a cassette, magnetic media, optical media, or other computer system readable media.
  • an article of manufacture may comprise one or more computer system-readable storage media.
  • FIG. 6A is a chart presenting harmonic ratio as a function of frequency for simulated nanoparticles having different magnetizations. The harmonic ratios are plotted in FIG. 6A as function of frequency for 30 nm SPIONs with different M s .
  • FIG. 6B is a chart presenting averaged harmonic ratio as a function of saturation magnetization for simulated nanoparticles. Curve fitting to the averaged harmonic ratios vs. M s in FIG. 6B shows that the harmonic ratios are inversely proportional to the 0.55 th power of M s . From the simulation results, it was concluded that for MNPs with identical core diameters, a smaller harmonic ratio corresponds to a higher M s .
  • FIG. 6C is a chart presenting harmonic ratio as a function of frequency for simulated nanoparticles having different core diameters. The harmonic ratios from different core sizes are summarized in FIG. 6C as function of frequency.
  • FIG. 6D is a chart presenting averaged harmonic ratio as a function of core diameter for simulated nanoparticles. Curve fitting in FIG. 6D shows that harmonic ratio is inversely proportional to the 1.58 th power of D . Therefore, for MNPs with identical M s , a smaller core size yields a larger harmonic ratio.
  • FIG. 7A is a conceptual and schematic diagram illustrating predominance of Neel relaxation exhibited by multi- core nanoparticles.
  • FIG. 7B is a conceptual and schematic diagram illustrating predominance of Brownian relaxation exhibited by single-core nanoparticles.
  • FIG. 8A is a chart presenting the relative contribution of Neel relaxation and Brownian relaxation to effective relaxation time as a function of core diameter for sample single-core nanoparticles.
  • FIG. 8A shows that small SPIONs relax via Neel process whereas larger SPIONs relax via Brownian process.
  • the cut off size of single-core SPIONs is about 12 nm.
  • FIG. 8B is a chart presenting the relative contribution of Neel relaxation and Brownian relaxation to effective relaxation time as a function of core diameter for sample multi-core nanoparticles. If instead the SPIONs are placed in a matrix with diameter of 50 nm the cut off size in this case shown in FIG. 8B is about 15 nm.
  • single-core SPIONs with core diameters larger than 20 nm are used, thus Brownian process will dominate and phase lag is dependent on hydrodynamic volumes.
  • multi-core SPIONs imbedded in a matrix such as MACS microbeads
  • SPIONs will probably go through Neel process although beads have an overall diameter of 50 nm.
  • SHP25 SPIONs with average core size of 25 nm coated with approximately 4 nm of oleic acid and amphiphilic polymer shells, dispersed in 0.02% sodium azide, 290 pmole/ml
  • SMG30-II SPIONs with average core size of 30 nm coated with approximately 6 nm of amphiphilic polymer and PEG shells, dispersed in 0.02% sodium azide, 34 pmole/ml
  • SMG30-I are aged SMG30-II
  • MACS small SPIONs embedded in matrix, the average overall size is 50 nm, coated with streptavidin, dispersed in 0.05% sodium azide, 3.14 pmole/ml).
  • the concentrations of these SPION samples are below 290 pmole/ml and the volume concentration is calculated to be less than 0.13 vol %, which is low enough to safely rule out the dipolar interactions and can be treated as a non-interacting system.
  • Amplitudes and phases of the 3 rd and the 5 th harmonics were measured from four SPION samples.
  • the magnetic and physical properties of SPIONs were determined and compared with standard characterization methods: Dynamic Light Scattering (DLS), Transmission Electron Microscopy (TEM), Vibrating Sample Magnetometer (VSM), X-ray Diffractometer (XRD), and high-angle annular dark field- scanning transmission electron microscope-energy dispersive X-ray spectroscopy (HAADF-STEM-EDS).
  • a system was set up for subjecting samples to excitation fields and detecting the magnetic response.
  • a PC with a data acquisition card (NI USB-6289, National Instruments, Austin, TX) generated two sinusoidal waves, amplified by two instrument amplifiers (HP 6824A, Hewlett-Packard, Palo Alto, CA).
  • Band-pass-filters (BPFs) are used to suppress higher harmonics introduced by IAs.
  • FIG. 9A is photograph illustrating an example search coil assembly including a sample vial, a detection coil, a low frequency coil, and a high frequency coil.
  • FIG. 9B is photograph illustrating the sample vial, the detection coil, the low frequency coil, and the high frequency coil of the search coil assembly of FIG. 9A.
  • FIG. 10B is schematic and conceptual drawing illustrating the structure and dimensions of the sample vial of FIG. 9B.
  • FIG. 11 A is a chart presenting harmonic ratio as a function of frequency for sample nanoparticles having different core states.
  • FIG. 11 A shows the measured harmonic ratios of the four SPION samples using our search coil system. From the measured harmonic ratios, it was anticipated that SMG30-II would have the highest M s while SMG30-I would have the lowest. SMG30-I, -II, and SHP25 are single-core SPIONs that go through Brownian relaxation; therefore, their phase lag is directly related to their relative hydrodynamic volumes.
  • FIG. 1 IB is a chart presenting phase lag as a function of frequency for sample nanoparticles having different core states. The legend shown in FIG. llAnoting the types of data points is also applicable to the chart of FIG.
  • FIG. 1 OA is a chart presenting the difference in amplitudes of the third harmonic for multi-core nanoparticles in liquid and frozen states.
  • FIG. 12B is a chart presenting the difference in amplitudes of the third harmonic for single-core nanoparticles in liquid and frozen states.
  • FIG. 12B shows the amplitude difference of the 3 rd harmonic signal between liquid and frozen states for SMG30-II sample.
  • the harmonic signal strength decreased by -98% in frozen state compared to liquid state. That is because the SPIONs in SMG30-II sample are single-core particles and Brownian relaxation plays the major role when dispersed in liquid solution.
  • FIG. 13 A is a chart presenting harmonic ratio as a function of frequency for sample single-core nanoparticles in liquid and frozen states.
  • FIG. 13 A presents a comparison of the harmonic ratios and phase lag of MACS in liquid and frozen states.
  • FIG. 13B is a chart presenting phase lag as a function of frequency for sample multi-core
  • FIGS. 13A and 13B The legend shown in FIG. 13 A noting the types of data points is also applicable to the chart of FIG. 13B.
  • the harmonic ratio and phase lag of the 3 rd harmonic signal between frozen and liquid states are compared in FIGS. 13A and 13B.
  • IG. 13C is a chart presenting harmonic ratio as a function of frequency for sample multi-core nanoparticles in liquid and frozen states.
  • FIG. 13C presents a comparison of the harmonic ratios and phase lag of SMG30-II in liquid and frozen states.
  • FIG. 13D is a chart presenting phase lag as a function of frequency for sample multi-core nanoparticles in liquid and frozen states.
  • the legend shown in FIG. 13C noting the types of data points is also applicable to the chart of FIG. 13D.
  • the harmonic ratio and phase lag of the 3 rd harmonic signal between frozen and liquid states are compared in FIGS. 13C and 13D.
  • MACS is expected to have lower M s than SMG30-n and SHP25.
  • M s of these single-core SPION samples from highest to lowest are: SMG30-II > SHP25 > SMG30-I > MACS.
  • the average hydrodynamic sizes followed in descending orders are: SMG30-II ⁇ SMG30-I > SHP25.
  • FIGS. 14A-14D are photographs illustrating bright-field transmission electron microscopy micrographs of sample nanoparticle compositions collected using dynamic light scattering.
  • the bright-field TEM micrographs confirmed the spherical morphology in our samples (FIGS. 14A-14D), and further confirmed that SHP25, SMG30-I, and SMG30-II are single-core particles.
  • FIG. 14D shows that each MACS bead is composed of smaller magnetic nanoparticles embedded in a large matrix. The hydrodynamic sizes of these SPION samples in liquid states are tested by DLS.
  • FIGS. 15A-15D are charts presenting statistical hydrodynamic size distributions for the sample nanoparticle compositions shown in FIGS. 14A-14D.
  • Statistic results from FIGS. 15A-15D yielded the mean hydrodynamic sizes of SHP25, SMG30-I, SMG30-H, and MACS: 36.90 nm, 40.20 nm, 40.06 nm, and 61.92 nm, respectively.
  • the results from DLS are in good agreement with the search coil based results and analysis. It is worth mentioning that the DLS result of MACS in FIG. 15D differs from TEM image in FIG. 14D, due to the flattening of matrix during TEM specimen preparation.
  • FIGS. 16A-16D are charts presenting core diameter distributions for sample single-core and multi-core nanoparticles shown in FIGS. 14A- 14D.
  • FIG. 17A is a chart presenting x-ray diffraction spectra for sample nanoparticles. All diffraction peaks in FIG. 17A are consistent with the standard XRD pattern of magnetite for SHP25, SMG30-I, and SMG30-II.
  • the XRD pattern of MACS shows that the particles from these beads are mainly composed of a-Fe 2 0 3 and Fe 3 0 4 , which well explained that MACS has the lowest M s .
  • FIG. 17A is a chart presenting x-ray diffraction spectra for sample nanoparticles. All diffraction peaks in FIG. 17A are consistent with the standard XRD pattern of magnetite for SHP25, SMG30-I, and SMG30-II.
  • the XRD pattern of MACS shows that the particles from these beads are mainly composed of a-Fe 2 0 3 and Fe 3 0 4 , which well explained that MACS has the lowest M s .
  • 17B is a chart presenting magnetization curves for the sample nanoparticles of FIG. 14 A. As seen in FIG. 17B, all of these SPION samples show superparamagnetism and the saturation magnetization from highest to lowest are: SMG30-II, SHP25, SMG30-I, MACS. This agrees well with the search coil based experiments and analysis.

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Abstract

Selon la présente invention, un système donné à titre d'exemple concerne une bobine d'excitation configurée pour soumettre un volume d'échantillon comprenant une pluralité de nanoparticules magnétiques à un premier champ d'excitation ayant une fréquence ƒ H et à un second champ d'excitation ayant une fréquence ƒ L , afin de générer une réponse magnétique comprenant une pluralité d'harmoniques provenant du volume d'échantillon. Une bobine de détection est configurée pour émettre un signal de réponse indiquant la pluralité d'harmoniques et/ou un retard de phase. Le système donné à titre d'exemple comprend un dispositif informatique configuré pour recevoir le signal de réponse, extraire le retard de phase et/ou des composantes harmoniques prédéterminées de la pluralité d'harmoniques, et déterminer une magnétisation de saturation moyenne, un volume hydrodynamique moyen, ou un état de noyau de la pluralité de nanoparticules magnétiques sur la base du retard de phase et/ou des composantes harmoniques prédéterminées.
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WO2022120985A1 (fr) * 2020-12-10 2022-06-16 中国科学院深圳先进技术研究院 Système d'imagerie à nanoparticules magnétiques à faible coût, et procédé
CN114113296A (zh) * 2021-10-12 2022-03-01 辽宁嘉音医疗科技有限公司 一种磁信号采集装置、磁敏免疫检测装置和检测方法

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