US20080314765A1 - Method for detecting defective electrodes in a micro-electrode matrix - Google Patents

Method for detecting defective electrodes in a micro-electrode matrix Download PDF

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US20080314765A1
US20080314765A1 US12/213,063 US21306308A US2008314765A1 US 20080314765 A1 US20080314765 A1 US 20080314765A1 US 21306308 A US21306308 A US 21306308A US 2008314765 A1 US2008314765 A1 US 2008314765A1
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matrix
distance
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reference point
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Alexandre Chibane
Pierre Grangeat
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Commissariat a lEnergie Atomique et aux Energies Alternatives CEA
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01RMEASURING ELECTRIC VARIABLES; MEASURING MAGNETIC VARIABLES
    • G01R31/00Arrangements for testing electric properties; Arrangements for locating electric faults; Arrangements for electrical testing characterised by what is being tested not provided for elsewhere
    • G01R31/12Testing dielectric strength or breakdown voltage ; Testing or monitoring effectiveness or level of insulation, e.g. of a cable or of an apparatus, for example using partial discharge measurements; Electrostatic testing
    • G01R31/1227Testing dielectric strength or breakdown voltage ; Testing or monitoring effectiveness or level of insulation, e.g. of a cable or of an apparatus, for example using partial discharge measurements; Electrostatic testing of components, parts or materials
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N27/00Investigating or analysing materials by the use of electric, electrochemical, or magnetic means
    • G01N27/26Investigating or analysing materials by the use of electric, electrochemical, or magnetic means by investigating electrochemical variables; by using electrolysis or electrophoresis
    • G01N27/416Systems
    • G01N27/4163Systems checking the operation of, or calibrating, the measuring apparatus

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  • the invention relates to a method for detecting defective electrodes in a micro-electrode matrix comprising an impedance measurement of each electrode.
  • the fabrication process of the electrodes of a micro-electrode matrix does not enable perfectly well-controlled electrodes to be obtained, either as far as their geometry or their surface is concerned.
  • the electrodes are impaired, in particular with formation of a surface oxide and passivation.
  • organic residues may form which are difficult to remove by cleaning. This results in an increasingly difficult contact between the electrode and the associated electrolyte.
  • These impairments influence the results obtained with the electrodes. This therefore means that during their lifetime, the electrodes present a behavior which changes for the worse.
  • two methods are currently used.
  • the first method consists in measuring the modula, in Ohms, of the impedance of the electrode at 1 KHz when the latter is placed in the presence of a sodium chloride solution (NaCl) with a concentration of 0.1 mole per liter, which enables the behavior of the electrode at typical stimulation frequencies to be approximately known.
  • the typical frequency is information provided by the manufacturer, and may be very different from that used for neuronal stimulation.
  • the second method used is measurement of the thermal noise. This consists in measuring the peak to peak amplitude measured voltage on the electrode with “no load”.
  • the object of the invention is to remedy these shortcomings, and in particular to provide a method for acquisition of more reliable data and for classifying this data whereby certain electrodes whose behavior is too far removed from the standard behavior can be more finely excluded.
  • FIG. 1 represents an embodiment of the method according to the invention in schematic form
  • FIG. 2 represents an electrical diagram used for acquisition of data from the electrodes
  • FIG. 3 represents in graphic form the truncated Mahalanobis distance, for two selected variables, of the electrodes with respect to the center of the ellipsoid (reference point) with representation of the threshold distance (with the first variable on the x-axis and the second variable on the y-axis).
  • FIG. 4 represents the distance of the electrodes to the mass center of the electrode matrix in graphic form.
  • the invention consists in a sequence of steps able to be broken down in the following manner:
  • FIG. 2 illustrates an electrical diagram able to be used for acquisition of an electrochemical impedance spectrum for each of the electrodes of the matrix.
  • An electrode 1 to be characterized is immersed in an electrolyte 2 , for example a solution containing a known oxidation-reducing couple, preferably hexamine ruthenium chloride (III) Ru(NH 3 ) 6 Cl 3 .
  • a counter-electrode 3 also immersed in electrolyte 2 , is used as reference.
  • Counter-electrode 3 is preferably of Ag/AgCl type.
  • Electrode 1 to be characterized and counter-electrode 3 are connected to measuring equipment 4 , for example a potentiostat, which applies a sine-wave voltage u(t) of low amplitude and of pure frequency around the standard oxidation-reduction potential Eo of the oxidation-reducing couple, used.
  • Measuring equipment 4 acquires the intensity i(t) of the current flowing in electrode 1 to be characterized.
  • An impedance associated with each electrode can then be deduced from the sine-wave voltage u(t) and the intensity i(t) which is also sine-wave. These operations are repeated for each frequency of the impedance spectrum and for each electrode of the matrix.
  • the sampling frequencies used to achieve the impedance spectrum are conventionally in the 100 Hz-10 kHz range. Furthermore, to achieve an impedance spectrum, at least 10 frequencies are preferably used, and advantageously 20 frequencies are chosen.
  • an impedance spectrum of the complete electrochemical cell is thereby obtained for a plurality of frequencies.
  • Parametric identification of an implicit non-integral frequency model for said impedance spectrum is performed.
  • This parametric model is advantageously obtained with the method described in the article by Chibane et al. (“Application detude à dérivée non manner à latimion advisechimique sur biopuce”, proceedings of the GRETSI 2005 colloquium, Jun.-Sep. 9, 2005 Louvain La Neuve, Belgium).
  • This model takes account of the frequency behavior of the associated electrode and is represented for example in the form:
  • n p and ⁇ p represent the order of the monomial and its cut-off frequency.
  • the vector can be set out in the form
  • This vector A is schematically noted, for the electrode
  • each electrochemical cell is then represented by a vector A of n dimensions of the type mentioned above.
  • This set of vectors is then grouped in a matrix B which represents the set of k electrodes.
  • Matrix B is represented in the form:
  • Principal components analysis is used to reduce the number of parameters and thereby extract the maximum amount of information. This analysis comprises standardization and reduction of each parameter x q (e j ) with respect to the set of parameters x q .
  • a covariance matrix M is then obtained from matrix X by the relation:
  • Matrix M is a symmetrical square matrix.
  • the dimension of matrix M is (n ⁇ n) if n ⁇ k and (k ⁇ k) in the opposite case.
  • Matrix M is diagonalized and the eigenvalues obtained are sorted in decreasing order to form a matrix D.
  • the largest eigenvalues obtained correspond to the principal inertia axes in a new representation space.
  • Matrix Y thus constitutes a representation of the variables of matrix X, for each electrode to be characterized, in a new representation space where the new variables are then decorrelated.
  • Matrix Y is represented by a set of variables y q (e j ) corresponding to the q-th parameter of the j-th electrode.
  • the distance d between electrode 1 j and a reference point is preferably used.
  • Representation in graphic form of the set of electrodes at a reference point can be used to make the comparison.
  • the reference point can be the representation of the mean over the set of electrodes.
  • FIG. 3 is a representation in graphic form of the truncated Mahalanobis distance from each electrode to the reference point on the two most explicative variables.
  • the threshold distance d s to reference point c has an ellipsoid shape in the representation chosen and reference point c is characterized by the center of the ellipsoid. Representation in graphic form enables easy and rapid discrimination of the defective electrodes which correspond to the points situated outside the ellipsoid corresponding to threshold distance d s .
  • the value of the threshold can be preset or defined by means of statistical tests.
  • a plurality of eigenvalues corresponding to the largest calculated eigenvalues are selected. This enables a plurality of associated variables to be selected for each electrode, reducing the dimensionality of the final matrix and thereby enabling separate analysis of each component for each electrode. In this case, each electrode then has as many components as selected eigenvalues. By reducing the number of eigenvalues, the amount of data to be processed is also reduced.
  • the choice of the number of eigenvalues to be studied is defined according to the margin of error authorized for the result.
  • the distribution of values of the variables is considered as being gaussian and separable on each component.
  • the reference point used to calculate the distance to the electrode is defined by the gaussian on each component.
  • the distance from the electrode to the reference point is then preferably translated by calculation of the distance of normality at the associated gaussian. The latter distance is calculated as follows:

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Abstract

Method for detecting defective electrodes in a micro-electrode matrix The method for detecting defective electrodes in an electrode matrix comprises measurement of an electrochemical impedance spectrum for each of the electrodes. Modeling of the spectrum impedance relative to each electrode by means of an implicit non-integral frequency model is performed in the form of a parameter matrix. Principal components analysis of the matrix is performed to transform said parameter matrix into a final matrix containing decorrelated variables representing the parameter matrix in a new space. The distance between each electrode and a reference point is calculated. These calculated distances are compared with a preset threshold distance and the electrodes having a distance greater than the threshold distance are classified as being defective.

Description

    BACKGROUND OF THE INVENTION
  • The invention relates to a method for detecting defective electrodes in a micro-electrode matrix comprising an impedance measurement of each electrode.
  • STATE OF THE ART
  • At present, the fabrication process of the electrodes of a micro-electrode matrix does not enable perfectly well-controlled electrodes to be obtained, either as far as their geometry or their surface is concerned. Moreover, with repeated use, the electrodes are impaired, in particular with formation of a surface oxide and passivation. Likewise, organic residues may form which are difficult to remove by cleaning. This results in an increasingly difficult contact between the electrode and the associated electrolyte. These impairments influence the results obtained with the electrodes. This therefore means that during their lifetime, the electrodes present a behavior which changes for the worse. In order to test whether an electrode is viable, in particular for performing neuronal stimulation, two methods are currently used.
  • The first method consists in measuring the modula, in Ohms, of the impedance of the electrode at 1 KHz when the latter is placed in the presence of a sodium chloride solution (NaCl) with a concentration of 0.1 mole per liter, which enables the behavior of the electrode at typical stimulation frequencies to be approximately known. The typical frequency is information provided by the manufacturer, and may be very different from that used for neuronal stimulation. With this method, a single measurement enables an idea of this impedance to be given.
  • The second method used is measurement of the thermal noise. This consists in measuring the peak to peak amplitude measured voltage on the electrode with “no load”.
  • These methods are however fairly simplistic and do not enable a good grasp to be had of the fine behavior of the electrode when it is impaired.
  • OBJECT OF THE INVENTION
  • The object of the invention is to remedy these shortcomings, and in particular to provide a method for acquisition of more reliable data and for classifying this data whereby certain electrodes whose behavior is too far removed from the standard behavior can be more finely excluded.
  • This object is achieved by the fact that the method successively comprises:
      • measuring an electrochemical impedance spectrum for each of the electrodes,
      • modeling of the impedance spectrum relative to each electrode by means of an implicit non-integral frequency model, in the form of a parameter matrix,
      • performing principal components analysis of the matrix, which transforms said parameter matrix into a final matrix containing decorrelated variables representing the parameter matrix in a new space,
      • calculating the distance between each electrode and a reference point,
      • comparing the calculated distances with a preset threshold distance, and classifying the electrodes having a distance that is greater than the threshold distance as being defective.
    BRIEF DESCRIPTION OF THE DRAWINGS
  • Other advantages and features will become more clearly apparent from the following description of particular embodiments of the invention given as non-restrictive examples only and represented in the accompanying drawings, in which:
  • FIG. 1 represents an embodiment of the method according to the invention in schematic form,
  • FIG. 2 represents an electrical diagram used for acquisition of data from the electrodes,
  • FIG. 3 represents in graphic form the truncated Mahalanobis distance, for two selected variables, of the electrodes with respect to the center of the ellipsoid (reference point) with representation of the threshold distance (with the first variable on the x-axis and the second variable on the y-axis).
  • FIG. 4 represents the distance of the electrodes to the mass center of the electrode matrix in graphic form.
  • DESCRIPTION OF A PREFERRED EMBODIMENT OF THE INVENTION
  • As illustrated in FIG. 1, the invention consists in a sequence of steps able to be broken down in the following manner:
      • Acquisition (F1) of data relative to each electrode by acquisition of electrochemical impedance spectra,
      • Representation of this data by means of parametric modeling with a finite set of parameters (F2),
      • Performing principal components analysis of the set of parameters to represent the data obtained in a new set of decorrelated variables (F3),
      • Calculating the distance d between each electrode and a reference point (F4),
      • Comparison (F5) of the calculated distance with a threshold distance and classification of the electrodes to determine the defective electrodes.
  • FIG. 2 illustrates an electrical diagram able to be used for acquisition of an electrochemical impedance spectrum for each of the electrodes of the matrix.
  • An electrode 1 to be characterized is immersed in an electrolyte 2, for example a solution containing a known oxidation-reducing couple, preferably hexamine ruthenium chloride (III) Ru(NH3)6Cl3. A counter-electrode 3, also immersed in electrolyte 2, is used as reference. Counter-electrode 3 is preferably of Ag/AgCl type.
  • Electrode 1 to be characterized and counter-electrode 3 are connected to measuring equipment 4, for example a potentiostat, which applies a sine-wave voltage u(t) of low amplitude and of pure frequency around the standard oxidation-reduction potential Eo of the oxidation-reducing couple, used. The sine-wave voltage applied is of the form u(t)=Eo+Vo cos(ωt), in which Vo is a preset amplitude.
  • Measuring equipment 4 at the same time acquires the intensity i(t) of the current flowing in electrode 1 to be characterized. This intensity i(t) is assimilated to a pure sine-wave of form i(t)=I cos(ωt+φ).
  • An impedance associated with each electrode can then be deduced from the sine-wave voltage u(t) and the intensity i(t) which is also sine-wave. These operations are repeated for each frequency of the impedance spectrum and for each electrode of the matrix. The sampling frequencies used to achieve the impedance spectrum are conventionally in the 100 Hz-10 kHz range. Furthermore, to achieve an impedance spectrum, at least 10 frequencies are preferably used, and advantageously 20 frequencies are chosen.
  • For an electrode 1 j of the electrode matrix, an impedance spectrum of the complete electrochemical cell is thereby obtained for a plurality of frequencies. Parametric identification of an implicit non-integral frequency model for said impedance spectrum is performed. This parametric model is advantageously obtained with the method described in the article by Chibane et al. (“Application de modèles à dérivée non entière à la détection électrochimique sur biopuce”, proceedings of the GRETSI 2005 colloquium, Jun.-Sep. 9, 2005 Louvain La Neuve, Belgium). This model takes account of the frequency behavior of the associated electrode and is represented for example in the form:
  • Z ( ω ) = Z 0 1 ( ω ) n 0 p = 1 N ( 1 + ω ω p ) n p
  • where np and ωp represent the order of the monomial and its cut-off frequency.
  • This parametric model of the impedance spectrum of electrode 1 to be characterized is represented by a vector A of n dimensions, with n=2N+2, which represents the frequency behavior of the electrochemical cell comprising electrode 1 to be characterized. For example, the vector can be set out in the form
  • A = ( Z 0 n 0 ω 1 n 1 ω p n p ) ,
  • This vector A is schematically noted, for the electrode
  • A = ( x 1 ( e j ) x 2 ( e j ) x n ( e j ) ) ,
  • where xq(ej) represents the q-th parameter identified for electrode 1 j, with q=1 to n.
  • Once acquisition of the impedance spectra has been completed for all the electrodes, each electrochemical cell is then represented by a vector A of n dimensions of the type mentioned above. This set of vectors is then grouped in a matrix B which represents the set of k electrodes. Matrix B is represented in the form:
  • B = ( x 1 ( e 1 ) x 2 ( e 1 ) x n ( e 1 ) x 1 ( e 2 ) x 2 ( e 2 ) x n ( e 2 ) x 1 ( e k ) x 2 ( e k ) x n ( e k ) )
  • where each line represents the parameters associated with an electrode 1 j and each column represents the parameters xq(ej) for the set of electrodes, with q=1 to n, corresponding to the same frequency measurement.
  • Principal components analysis is used to reduce the number of parameters and thereby extract the maximum amount of information. This analysis comprises standardization and reduction of each parameter xq(ej) with respect to the set of parameters xq.
  • The new variable x′q(ej) thus obtained is characterized by the relation:
  • x q ( e j ) = ( x q ( e j ) - x ^ q ) σ ( x q )
  • where {circumflex over (x)}q and σ(xq) respectively represent the mean and the standard deviation of the parameters xq on the set of k electrodes composing the electrode matrix. These two operations enable matrix B to be transformed into a matrix X represented in the form
  • X = ( x 1 ( e 1 ) x 2 ( e 1 ) x n ( e 1 ) x 1 ( e 2 ) x 2 ( e 2 ) x n ( e 2 ) x 1 ( e k ) x 2 ( e k ) x n ( e k ) )
  • A covariance matrix M is then obtained from matrix X by the relation:
  • M = 1 n - 1 X T X
  • where XT is the transpose of matrix X. Matrix M is a symmetrical square matrix. The dimension of matrix M is (n×n) if n<k and (k×k) in the opposite case.
  • Matrix M is diagonalized and the eigenvalues obtained are sorted in decreasing order to form a matrix D. The largest eigenvalues obtained correspond to the principal inertia axes in a new representation space. A matrix V is then obtained from matrices M and D by the relation: VTDV=M.
  • A matrix Y is then obtained by the formula: Y=XV. Matrix Y thus constitutes a representation of the variables of matrix X, for each electrode to be characterized, in a new representation space where the new variables are then decorrelated. Matrix Y is represented by a set of variables yq(ej) corresponding to the q-th parameter of the j-th electrode.
  • From this matrix Y, it is possible to calculate the distance d between electrode 1 j and a reference point and to compare it with a previously defined threshold distance. The Mahalanobis distance dM is preferably used. Representation in graphic form of the set of electrodes at a reference point can be used to make the comparison. Advantageously, the reference point can be the representation of the mean over the set of electrodes.
  • In the particular embodiment, FIG. 3 is a representation in graphic form of the truncated Mahalanobis distance from each electrode to the reference point on the two most explicative variables. The threshold distance ds to reference point c has an ellipsoid shape in the representation chosen and reference point c is characterized by the center of the ellipsoid. Representation in graphic form enables easy and rapid discrimination of the defective electrodes which correspond to the points situated outside the ellipsoid corresponding to threshold distance ds. The value of the threshold can be preset or defined by means of statistical tests.
  • In an alternative embodiment, a plurality of eigenvalues corresponding to the largest calculated eigenvalues are selected. This enables a plurality of associated variables to be selected for each electrode, reducing the dimensionality of the final matrix and thereby enabling separate analysis of each component for each electrode. In this case, each electrode then has as many components as selected eigenvalues. By reducing the number of eigenvalues, the amount of data to be processed is also reduced. Advantageously, the choice of the number of eigenvalues to be studied is defined according to the margin of error authorized for the result.
  • In a particular case where the selected eigenvalues and therefore the associated components are for example three in number, the distribution of values of the variables is considered as being gaussian and separable on each component. The reference point used to calculate the distance to the electrode is defined by the gaussian on each component. For each component, the distance from the electrode to the reference point is then preferably translated by calculation of the distance of normality at the associated gaussian. The latter distance is calculated as follows:
  • d = y q ( e j ) - m q σ q
  • where mq and σq represent the mean and the standard deviation of variable yq(ej) calculated on all the electrodes.
  • It is however also possible to obtain a distribution of values considered as being gaussian and separable on each component in the case where more than three variables have been selected.
  • For each electrode 1 to be characterized, adding the distances calculated on each of these components enables the distance d to the reference point to be obtained. In this particular case, as illustrated in FIG. 4, representation in graphic form can simply be expressed by the distance d from each electrode to the reference point according to the electrode number (from 1 to n). If the distance d of an electrode is greater than the distance threshold ds, the electrode is then considered to be defective.

Claims (12)

1. A method for detecting defective electrodes in an electrode matrix comprising impedance measurement of each electrode, method successively comprising:
measuring an electrochemical impedance spectrum for each of the electrodes,
modeling of the impedance spectrum relative to each electrode by means of an implicit non-integral frequency model, in the form of a parameter matrix,
performing principal components analysis of the matrix, which transforms said parameter matrix into a final matrix containing decorrelated variables representing the parameter matrix in a new space,
calculating the distance between each electrode and a reference point,
comparing the calculated distances with a preset threshold distance, and classifying the electrodes having a distance greater than the threshold distance as being defective.
2. The method according to claim 1, wherein the distance between two electrodes is calculated by means of the Mahalanobis distance.
3. The method according to claim 1, wherein impedance measurement is performed in a solution containing the electrode matrix, a counter-electrode and an electrolyte.
4. The method according to claim 3, wherein the electrolyte is an oxidation-reducing couple.
5. The method according to claim 3, wherein the electrolyte is made of hexamine ruthenium chloride (III).
6. The method according to claim 3, wherein the counter-electrode is of Ag/AgCl type.
7. The method according to claim 3, wherein impedance measurement of an electrode to be characterized is performed by applying a sine-wave voltage between said electrode and the counter-electrode at a plurality of frequencies.
8. The method according to claim 1, wherein principal components analysis comprises:
transforming the parameter matrix into an intermediate matrix constituted by a plurality of variables, the intermediate matrix being square and diagonalizable,
determining the eigenvalues associated with the intermediate matrix,
calculating the final matrix representative of the parameter matrix of in a new space defined by the eigenvalues associated with the intermediate matrix.
9. The method according to claim 8, wherein a selection is made on some eigenvalues of the intermediate matrix representing the largest eigenvalues, leading to selection of some variables in the final matrix associated with said eigenvalues.
10. The method according to claim 8, wherein the distribution of variables is considered as being gaussian and separable on each component.
11. The method according to claim 10, wherein the reference point is the mass center of the electrode matrix and the distance from the electrode to the reference point corresponds to the distance of normality at the associated gaussian.
12. The method according to claim 1, wherein the distance between the electrode and the reference point and the threshold distance are represented in graphic form to make the comparison.
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US9310419B2 (en) 2016-04-12
US20130297236A1 (en) 2013-11-07
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FR2917837A1 (en) 2008-12-26

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