The technical field of the invention is the analysis of images of cells in order to determine a state of said cells. It is in particular a question of determining a living or dead cellular state, including the occurrence of apoptosis.
Cells are cultured in bioreactors in many pharmaceutical or medical fields, in order to produce molecules for therapeutic purposes. Which may, for example, be proteins, vaccines or antibodies. However, cells are fragile. The composition of the biological medium, and hydrodynamic stresses (stirring of the medium) to which the cells are subjected may limit the viability of the cells. When the viability of the cells decreases, i.e. when the number of dead cells increase, the yield of the production decreases. It is therefore important to detect, or even to limit as much as possible, the death of cells cultivated in bioreactors.
There are two types of cellular death, which may occur in vivo but also in vitro: necrosis and apoptosis. Necrosis occurs accidentally, and rapidly, following a malfunction of a cell, in particular, following a perturbation of the culture medium. Apoptosis is a programmed cellular death by self-destruction, the process of which may take several hours. In a bioreactor, apoptosis is also considered to be influenced by the culture physicochemical conditions, for example a lack of oxygen, a lack of nutrients, or the accumulation of toxic metabolites. The hydrodynamic conditions in the bioreactor may also lead to apoptosis, notably when the culture medium is stirred too vigorously. It will be understood that the optimization of culture conditions is essential to improving the yield of production in a bioreactor.
Currently, on the industrial scale, the main optical devices for estimating cellular viability are based on the use of viability markers, based on color (marking with trypan blue) or fluorescence (marking with propidium iodide). An optical method not using marking has been described in U.S. Pat. No. 10,481,076.
One objective of the invention is to provide a device and method for analyzing cellular viability without marking, allowing simultaneous characterization of the state of viability of a high number of cells. One notable advantage of the method is that it allows an occurrence of apoptosis to be detected or even prevented.
An object of the invention is a method for determining a state of a cell, the cell being placed in a sample, in contact with a culture medium, the method comprising:
In one embodiment,
In one embodiment,
The index of interest may be determined from a difference or from a weighted difference between the real part and the imaginary part of the refractive index or of the relative refractive index.
By from the acquired image, what is meant is using the acquired image so as to locate the position of the cell. This may comprise reconstructing a complex image of an exposure light wave, propagating between the sample and the image sensor.
In one embodiment, step e) comprises:
In one embodiment, step e) comprises taking into account a reference range, the reference range comprising index of interest corresponding to living cells. The apoptosis state corresponds to an index of interest outside of the reference range. The predetermined states may comprise at least one dead state. The dead state and the apoptosis state may correspond to an index of interest lying respectively on one side and on another side of the reference range.
In one embodiment,
The method may comprise determining a reference value from the distribution. The state of each cell may be determined depending on a deviation between the reference value and the index of interest of said cell.
In one embodiment,
In one embodiment,
In one embodiment:
In one embodiment:
Steps c-iii) to c-vi) may be implemented iteratively, such that, in each iteration, the profile modelled in c-v) gets gradually closer to the profile obtained in c-ii).
Each iteration may comprise:
In one embodiment:
c-v) may comprise determining a gradient of the validity indicator as a function of at least one parameter, such that the sets of parameters are updated in order to decrease the validity indicator of the following iteration.
c-v) may comprise updating the sets of parameters, so as to minimize the validity indicator.
c-v) may comprise implementing an algorithm of gradient-descent type.
Each set of parameters may comprise:
In another embodiment, step c) may comprise
Basically, the refractive index or the relative refractive index of a cell may be determined by applying a propagation operator either from the acquired image towards at least one reconstruction plan, and/or from a reconstruction plan towards the detection plan. The reconstruction plan is preferably a plan in which the sample lies.
The invention will be better understood on reading the description of examples of embodiments, which examples are presented, in the rest of the description, with reference to the figures listed below.
The sample 10 is a sample that it is desired to characterize. It notably comprises a medium 10m in which cells 10i bathe. The medium 10m may be a liquid medium, and, in particular, a culture medium, comprising nutrients allowing the development and growth of cells.
The sample 10 is, in this example, contained in a fluidic chamber 15. The fluidic chamber 15 is, for example, a fluidic chamber of thickness e=20 μm. The thickness e of the sample 10, along the propagation axis, typically varies between 10 μm and 1 cm, and is preferably comprised between 20 μm and 500 μm. The sample lies in a plane P10, called the sample plane, perpendicular to the propagation axis Z. The sample plane is defined by the axes X and Y shown in
The distance D between the light source 11 and the fluidic chamber 15 is preferably larger than 1 cm. It is preferably comprised between 2 and 30 cm. Advantageously, the light source 11, seen by the sample, may be considered to be point-like. This means that its diameter (or its diagonal) is preferably smaller than one tenth, and better still one hundredth of the distance between the fluidic chamber 15 and the light source. In
Preferably, the emission spectral band Δλ of the incident light wave 12 has a width smaller than 100 nm. By spectral bandwidth, what is meant is a fullwidth at half maximum of said spectral band.
The sample 10 is placed between the light source 11 and the aforementioned image sensor 16. The image sensor 16 defines a detection plane P0, which preferably lies parallel, or substantially parallel, to the plane P10 in which the sample lies. The term substantially parallel means that the two elements may not be rigorously parallel, an angular tolerance of a few degrees, smaller than 20° or 10°, being acceptable.
The image sensor 16 is configured to form an image I0 of the sample 10 in the detection plane P0. In the example shown, it is a question of a CCD or CMOS image sensor 16 comprising a matrix array of pixels. The detection plane P0 preferably lies perpendicular to the propagation axis Z of the incident light wave 12. The distance d between the sample 10 and the matrix array of pixels of the image sensor 16 is preferably comprised between 50 μm and 2 cm, and preferably comprised between 100 μm and 2 mm.
The absence of magnifying or image-forming optics between the image sensor 16 and the sample 10 in this embodiment will be noted. This does not prevent focusing micro-lenses potentially being present level with each pixel of the image sensor 16, said micro-lenses not having the function of magnifying the image acquired by the image sensor, their function rather being to optimize light detection performance. One advantage of such an embodiment is that it allows cells located facing a detection area able to reach 10 mm2 or a few tens of mm2 to be addressed simultaneously. Contrary to a microscopy- or cytometry-type device, this allows a high number of cells to be addressed simultaneously.
The light source 11 may comprise elementary light sources, emitting in the various spectral bands. The image sensor is then configured to acquire, simultaneously or successively, an image I0 in each spectral band.
As mentioned in the patent application U.S. Pat. No. 10,481,076 cited with respect to the prior art, under the effect of the incident light wave 12, the cells 10i present in the sample may generate a diffracted wave 13, liable to produce, in the detection plane P0, interference, in particular, with a portion 12′ of the incident light wave 12 transmitted by the sample. Moreover, the sample may absorb a portion of the incident light wave 12. Thus, the light wave 14, transmitted by the sample, and to which the image sensor 16 is exposed, designated by the term “exposure light wave”, may comprise:
These components form interference in the detection plane. Thus, each image acquired by the image sensor comprises interference patterns (or diffraction patterns), each interference pattern possibly being associated with a cell 10i of the sample.
A processor 20, for example, a microprocessor, is configured to process each image I0 acquired by the image sensor 16. In particular, the processor is a microprocessor connected to a programmable memory 22 in which a sequence of instructions for performing the image-processing and computing operations described in this description is stored. The processor may be coupled to a screen 24 allowing the display of images acquired by the image sensor 16 or computed by the processor 20.
Generally, from each acquired image, the microprocessor is programmed to locate and estimate an amount (number or concentration) of cells 10i present in the field of observation, and to estimate an index of interest, of each located cell. From the index of interest, it is possible to determine a state of the cell 10i among predetermined states. The predetermined states are notably chosen from a living state, a necrotic state (cell death), and an apoptotic state. The apoptotic state corresponds to a transitional state, entered by the cell during apoptosis, prior to cell death.
The method may comprise computing a viability from an amount of living cells relative to an amount of cells that are either dead or in apoptosis, or to all the cells counted in the acquired image.
Step 100: Illuminating the sample 10 using the light source 11.
Step 110: Acquiring an image I0 of the sample 10 with the image sensor 16, this image forming a hologram.
Step 120: Detecting cells 10i in the sample. The acquired image I0 generally contains a high number of interference patterns. Because of the overlap between the various interference patterns, the acquired image is generally not easily usable to locate the cells 10i present in the observed field. The latter are more easily identifiable in a complex image reconstructed by applying a propagation operator h to the acquired image I0.
An image I0 acquired by the image sensor 16, also called a hologram, may be the subject of a reconstruction, called a holographic reconstruction. As described with reference to the prior art, it is possible to apply, to the image acquired by the image sensor, a propagation operator h, so as to compute a complex amplitude A(x, y, z) representative of the exposure light wave 14, and to do so at any point of spatial coordinates (x, y, z), and more particularly between the image sensor and the sample. The coordinates (x, y) designate coordinates, called radial coordinates, parallel to the detection plane P0. The coordinate z is a coordinate along the propagation axis Z, expressing a distance between the sample 10 and the image sensor 16.
The complex amplitude may be obtained via one of the following expressions:
A(x,y,z)=I0(x,y,z)*h, * designating the convolution operator, or, and preferably,
A(x,y,z)=√{square root over (I0(x,y,z))}*h, or indeed:
Ī0 being an average of the acquired image.
The function of the propagation operator h is to describe the propagation of light between the image sensor 16 and a point of coordinates (x, y, z) located at a distance |z| from the image sensor.
It is then possible to determine a property of the exposure light wave 14, for example, the modulus M(x, y, z) and/or the phase φ (x, y, z), at the distance |z| with:
M(x,y,z)=abs[A(x,y,z)];
φ(x,y,z)=arg[A(x,y,z)];
The operators abs and arg designate the modulus and argument, respectively.
The distance |z| is a reconstruction distance.
The propagation operator is, for example, the Fresnel-Helmholtz function, such that:
The complex expression A(x, y, z) of the light wave 14, at any point of spatial coordinates (x, y, z), is such that: A(x, y, z)=M(x, y, z)ejφ(x,y,z).
The complex expression A is a complex quantity the argument and modulus of which are respectively representative of the phase and intensity of the exposure light wave 14 detected by the image sensor 16 in order to form the image I0.
By determining the complex amplitude, for a given radial position (x, y), along the Z-axis, at a plurality of coordinates z, it is possible to form a profile representative of the exposure light wave. It may be a question of a profile of the phase or of the modulus of the exposure light wave. Generally, it is a question of a profile of an optical property of the exposure light wave, the term optical property designating a property obtained using the complex amplitude A(x, y, z), and representative of the latter. It may be a question of the modulus, of the phase, of the real part, of the imaginary part, or of combinations thereof.
According to one embodiment, the image I0 is convoluted with the propagation operator h. This allows a complex image Az representing a spatial distribution of the complex expression A in a reconstruction plane Pz, lying at a distance |z| from the detection plane P0, to be obtained. In this example, the detection plane P0 has the equation z=0. The complex image Az corresponds to a complex image of the sample in the reconstruction plane Pz. It also represents a two-dimensional spatial distribution of the optical properties of the exposure light wave 14. Such a method, designated by the term holographic reconstruction, notably allows an image of the modulus or of the phase of the exposure light wave 14 in the reconstruction plane to be reconstructed.
It is possible to form images Mz and φz respectively representing the modulus or phase of a complex image Az in a plane Pz located at a distance |z| from the detection plane P0, with Mz=mod (Az) and φz=arg (Az). When the reconstruction plane corresponds to the sample plane P10, the images Mz and φz allow the sample to be observed with a correct spatial resolution.
Step 120 comprises reconstructing at least one image, called the observation image I′, of the sample from the image I0. The observation image I′ may be obtained by applying a propagation operator h to the acquired image I0, for a reconstruction distance, so as to obtain a complex image Az representing the complex amplitude of the exposure light wave 14 in a reconstruction plane parallel to the detection plane and located at the reconstruction distance from the latter.
The observation image I′ may be the image of the modulus or of the phase of the complex image Az thus reconstructed, or the image of the real part or of the imaginary part of such a complex image. The reconstruction plane in which the observation image is defined is preferably the sample plane P10. Its position may be set beforehand, or determined using a numerical focusing algorithm, this type of algorithm being known to those skilled in the art.
The observation image I′ may also be formed using an iterative holographic reconstruction algorithm, such as described in WO2016189257 or in WO2017162985. In such algorithms, the phase of the exposure light wave, in the detection plane, is gradually adjusted. In WO2016189257, the phase is adjusted iteratively by averaging, in each iteration, the phase of light waves reconstructed in the sample plane, in various spectral bands. In WO2017162985, the phase is adjusted iteratively so as to minimize, in each iteration, the reconstruction noise of a complex image reconstructed in the sample plane.
In the observation image I′, the cells 10i appear sufficiently contrasted to be easily discernible from the ambient medium 10m.
It is possible to apply a segmentation or morphology-analysing algorithm to the observation image, so as to detect cells in the observation image, and to attribute, to each detected cell, a radial coordinate (xi, yi), corresponding to each cell 10i detected in the observation image I′ or on the acquired image I0. By radial coordinate, what is meant is a coordinate in a plane parallel to the detection plane P0.
Step 120 may be carried out in other ways, such as described below.
Step 130: Determining the refractive index ni or the relative refractive index Δni of each detected cell 10i.
Step 130 may be achieved according to the method described in the French patent application FR1859362 (or U.S. Ser. No. 16/595,661), and more precisely following steps 130 to 150 of the latter. Those steps are summarized hereafter.
The objective of step 130 is to determine a relative refractive index of each cell 10i detected in step 120. The relative refractive index Δni is a comparison, taking the form of a difference or a ratio, between the refractive index ni of a cell 10i and the refractive index nm of the culture medium 10m.
The inventors have demonstrated that the hologram of a cell 10i, corresponding to a diffraction pattern of the image I0 acquired by the image sensor, varies as a function of the relative refractive index Δni of the cell. The same goes for the trace of said cell in the observation image I′.
In a first embodiment, step 130 comprises three substeps.
Substep 131: in this substep, for each detected cell, a profile Fx
According to one option, this step may comprise forming complex images Az for various reconstruction distances. Thus, a stack of complex images Az
The complex images Az
According to one option, described in WO2017178723, a stack of complex images Az
According to another option, each complex image Az of the stack of images Az
It is not necessary to use a stack of complex images to establish a profile Fx
Substep 132: obtaining modelled profiles.
Substep 132 comprises using modelled profiles established on the basis of modelled cells 10(par). To do this, a set of parameters par of a cell is taken into account. Then, via a numerical model, the complex amplitude of an exposure light wave 14mod, propagating between the modelled cell and the image sensor 16, and resulting from an illumination of the modelled cell 10(par) with the light source 11, is modelled.
The model may notably be based on Mie scattering. Mie scattering is a model of elastic scattering allowing a solution to be obtained to Maxwell's equations, describing a light wave diffracted by a spherical cell illuminated by a monochromatic incident light wave of wavelength λ. Apart from its spherical shape, a cell 10i is characterized by a refractive index ni, the latter possibly notably being a complex refractive index ni=Re(ni)+jIm(ni), with j2=−1. Re et Im are operators that return the real part and imaginary part, respectively. Each cell 10i, may also be characterized by a relative refractive index Δni, the latter possibly notably being a complex relative refractive index Δni=Re(Δni)+jIm(Δni).
Thus, the set of parameters par of a cell 10i comprises at least the refractive index ni or the relative refractive index Δni. In the described embodiment, the relative index Δni is considered. When the relative refractive index Δni is expressed in the form of a complex quantity, the parameters comprise the real part Re(Δni) of the refractive index and its imaginary part Im(Δni). As indicated above, the parameters par assigned to a cell 10i may further comprise a dimension (diameter or radius) and/or a distance z of the cell with respect to the detection plane, along the propagation axis Z.
The application of the Mie-scattering model allows a diffraction pattern Imod(Par) to be simulated at various distances from the sample. This notably allows a diffraction pattern I0,mod(par) to be formed in the detection plane P0, as shown in
In order to take into account the imperfections of the image sensor 16, the modelled diffraction patterns have been spatially sampled considering a pixel pitch, the latter being, in this example, equal to 1.67 μm. The patterns were then blurred by applying a Gaussian filter in order to take into account the coherence of the light source 11.
The pattern of
From the modelled diffraction pattern I0,mod(par), it is possible to form a profile, called the modelled profile F(par), representing a variation, parallel to the propagation axis Z, of the complex amplitude A(x, y, z) of the modelled exposure light wave 14mod. The modelled profile F(par) is preferably established, from the modelled diffraction pattern I0,mod, in the same way as the profile Fx
Comparison of
The parameters of the cell form a set par that may comprise:
Each modelled profile also depends on wavelength λ.
Thus, substep 132 comprises:
Alternatively, the modelled profiles may be obtained without necessarily modelling a diffraction pattern I0,mod in the detection plane. The complex amplitude of the exposure light wave 14mod along the propagation axis Z is then modelled. However, the inventors believe that it is preferable to model the diffraction pattern I0,mod(par), then to form the profile F(par) corresponding to the modelled cell in the same way as a profile Fx
Whatever the way in which they are obtained, the profiles F(par) thus modelled may be stored in a database, so as to be exploited in a method the main steps of which are described below. Each profile is associated with a set of parameters (par).
Substep 133: Comparing the profile Fx
According to one option, substep 133 comprises comparing the profile Fx
According to another option, illustrated in
The set of parameters parq+1 considered in the following iteration may be estimated using a gradient-descent algorithm, during which, in each iteration q, a gradient of the deviation ∇εq is determined, the latter corresponding to a variation in the deviation εq as a function of one or more parameters, and preferably each parameter, of the set of parameters parq. The set of parameters parq+1 taken into account in the following iteration is determined depending on ∇εq, so as to minimize the deviation εq+1.
Substeps 133a, 133b and 133c of substep 133, respectively corresponding to the formation of the modelled profile F(parq) and to the computation of the deviation εq and its gradient ∇εq, so as to define the parameters parq+1 to be taken into account in the following iteration, have been shown in
In the first iteration (q=1), the iterative algorithm is initialized with an initial set of parameters parq=1. The initial set of parameters may be preset.
According to another option, the two embodiments described above are combined: a database of profiles is used and the set of parameters pari that minimizes the comparison between the profiles of the database F(par) and the measured profile Fx
Following step 130, the refractive index ni or the relative refractive index Δni is known for all or some of the cells detected in step 120. It will be noted that this is an average value established for each cell in question, i.e. with no distinction between the nucleus and the cytoplasm.
In some embodiments, the refractive index nm of the culture medium may be previously known or measured. For example, beads of known refractive index might be added to the culture medium, so as to determine indirectly the refractive index of the medium. As previously shown, with respect to cells, it is possible to estimate the relative index of those beads from the acquired image I0. The refractive index of the medium may be derived therefrom.
In one possible embodiment, the fluidic chamber in which the sample lies comprise at least one pattern of known refractive index. The pattern may have been previously etched or molded in a wall of the fluidic chamber, and preferably on the bottom or on the cover of the fluidic chamber. It is then possible to estimate the relative index of the pattern from the acquired image I0. The refractive index nm of the medium may be derived therefrom. The pattern may have a predefined shape, for example a spheric, hemispheric or a cubic shape.
In the next steps, the relative refractive index Δni of cells will be considered. When the refractive index nm of the culture medium 10m is known, or considered to be known, the refractive index ni of each cell can be derived. In this case, the following steps might be carried out based on the refractive index ni of each cell.
In this step, an index of interest i is determined for each cell in question. According to one option, the index of interest i may correspond to the real part of the refractive index, or of the relative refractive index. In other words, i=Re(ni) or i=Re(Δni).
Preferably, the index of interest is established from a difference between the real part and the imaginary part of the refractive index or of the relative refractive index. Thus, i=Re(ni)−Im(ni) or i=Re(Δni)−Im(Δni).
A more precise classification may be established by combining the real part and the imaginary part of the relative refractive index (or of the refractive index), and more precisely by determining a weighted difference between the real part and the imaginary part. Thus, the index of interest may be established from the weighted difference between the real part and the imaginary part. It may be a question of a simple difference such that i=Re(ni)−Im(ni) or i=Re(Δni)−Im(Δni). Generally, it may be a question of a weighted difference such that i=k1Re(ni)−k2Im(ni), or i=k1Re(Δni)−k2Im(Δni) where k1 and k2 are strictly positive real numbers.
It has been observed that the real part of the refractive index is at least 5 or 10 times larger than the imaginary part. Thus, the index of interest is mainly governed by the value of the real part.
The classification aims at determining a state of a cell 10i based on the index of interest i.
According to an embodiment, a first threshold is taken into account. The index of interest of each cell 10i is compared with the first threshold. Based on the comparison, the cell 10i is considered either in apoptosis or not in apoptosis. A second threshold may also taken into account. The index of interest of each cell 10i is compared with the second threshold. Based on the comparison, the cell is considered as living or dead. Basically, the index of interest of living cells lie between the first threshold and the second threshold. The first and second thresholds may be predefined, based on experience, of defined on a case by case basis. With reference to
According to an embodiment, a distribution, corresponding to a histogram of the indices of interest determined in step 140, is established for all or some of the cells detected in step 120. Such a distribution is shown in
The distribution may contain other peaks, corresponding to values of the index of interest representative of the debris and apoptosis states, respectively.
The distribution may be fitted by constrained fitting, so as to fit each peak with a predetermined parametric statistical distribution, a Gaussian distribution, for example. The fit may furthermore make provision for a number of peaks equal to 2 (living cells-dead cells), 3 (dead cells-living cells-apoptosis) or 4, (debris-dead cells-living cells-apoptosis) and/or or a specified range of the FWHM (Full Width at Half Maximum) of each peak.
When the index of interest i of a cell is contained in the reference peak, i.e. it is contained in a reference range Δref defined about the reference value ref, the cell is considered to be living. This corresponds to the peak identified “a” in
In the example shown on
The inventors have observed that when the index of interest i is higher than the maximum limit max, the cell in question may be considered to be following an apoptotic process. This corresponds to the peak identified “p” in
Thus, on the basis of the real part of the refractive index of a cell, or of the relative refractive index, and preferably on the basis of the real part and of the imaginary part of these indices, the invention allows cells to be classified into at least three states: dead cell, living cell and apoptosis.
The detection of the occurrence of apoptosis may allow the user of the bioreactor to be warned of a potential degradation in the culture conditions. This allows remedial actions to be taken so as to re-establish more favourable cultural conditions, the objective being to increase cellular viability. It may be a question of modifying physicochemical conditions of the bioreactor, for example, adding nutrients or peptides, or anti-apoptotic products or modifying the stirring.
The classification may be carried out by establishing an index of interest, as described above. Other classification algorithms may be implemented, on the basis of the real part and of the imaginary part of the refractive index or of the relative refractive index. The classification algorithms may be supervised algorithms based on PCA (principal component analysis), an SVM (support vector machine), or a neural network.
The results of the classification may allow a viability of the sample to be established. The viability corresponds to a proportion of living cells relative to a number of cells identified in the acquired image or in the observation image.
Steps 100 to 150 may be reiterated at various measurement times, allowing the state of the cells to be tracked as a function of time. The analyzed sample, at each measurement time, may have been sampled from a bioreactor. Alternatively, the device described with reference to
By implementing the invention at various measurement times, in a given cell culture medium, the inventors have observed that the values of the refractive index or of the relative refractive index may vary over time, without the variation being explained by a change regarding the state of the cells. This is the result of a gradual variation, over time, in the refractive index of the culture medium. This may, for example, be due to the absorption of nutrients, such as sugar, by the cells. As the culture medium becomes poorer in nutrients, its index may decrease relative to that of the cells. As a result, the relative refractive index increases whatever the state of the cells. This results in a gradual shift in the relative refractive index Δni, and notably in the real part of the relative refractive index, as shown in
It is possible to estimate this shift. The simplest way is to estimate the shift affecting the real part of the relative refractive index of the living cells. This shift may be obtained by computing a statistical value, such as the mean or median, of the relative refractive index of the living cells. When an index of interest such as described with reference to
Under other culture conditions, the refractive index of the culture medium may gradually increase, this leading to a gradual decrease in the relative refractive index of the cells. Just as explained in the preceding paragraph, the variation in the index of the culture medium may be estimated by analyzing the variation in the real part of the relative refractive index of one cell category, living cells, for example.
Reiterating steps 100 to 150 regularly allows the gradual variation in the reference range Δref, the latter corresponding to the index of interest of the living cells, to be tracked. In the first iteration, or the first iterations of steps 100 to 150, the reference range is easily delineated, considering that most cells are living.
The inventors have implemented the method such as described with reference to steps 100 to 150 on CHO cells. The light source was a light-emitting diode emitting at 450 nm, the spectral width being 15 nm. The culture medium was a protein and serum-free, chemically-defined medium for CHO cell cultures. The image sensor was a CMOS IDS 1492 LE sensor. The concentration of cells ranged from 0 to 50 million per mL. The volume of each sample was 3 μL. The distance between the sample and the image sensor ranged between 1200 μm and 1300 μm. The distance between the sample and the light source was 5 cm. Measurements were carried out on samples of cellular suspensions originating from bioreactors. Less than one hour was required to characterize the 48 samples. The duration of each measurement is estimated to be about 30 seconds.
During the first days of culture, the distribution of the indices of interest contains only a single peak, which corresponds to living cells. The peak is observed to shift as the days pass. A segmentation of the distribution into a plurality of peaks, notably over the course of days 9 to 13. A substantial amount of apoptosis seems to occur on days 9 to 12 (encircled regions “p”), which is accompanied by an increase in dead cells (encircled regions “d”) starting from day 12. The living cells correspond to the regions “a”.
Thus, the invention allows a decrease in cellular viability to be anticipated by taking into account high indices of interest, i.e. by detecting and counting cells with the index of interest which is located above the reference range Δref, corresponding to living cells. This makes it possible to:
The inventors have compared results, relative to the cellular viability of CHO cells, with reference measurements obtained using flow cytometry and a fluorescent marker. The percentage of cells deemed by the two methods (invention and reference measurements) were compared. The measurements were carried out in a third bioreactor:
These percentages were calculated on days 1, 3, 6, 8 and 10.
The inventors have tracked as a function of time the index of interest of CHO cells using a device such as described above.
In each of these figures, the phases in which the cell is living, dead and where appropriate in apoptosis have been indicated by the letters a, d and p.
In the above description, the relative refractive index was determined in step 130 using the principles described in patent application FR1859362 (or U.S. Ser. No. 16/595,661). There are other variants, allowing the refractive index or the relative refractive index to be estimated.
According to a first variant, the relative refractive index may also be estimated as described in patent application FR1859618 (or in the U.S. patent application Ser. No. 16/655,300), and more particularly in steps 110 to 160 of the latter.
Such an approach is described in
In a substep 231, the sample is described by a distribution of the sets parameters at various radial positions within the sample plane. Each radial position corresponds to a position within the sample plane. Each position of the sample plane is associated with a set of parameters. Each set of parameters comprises a term representative of an optical parameter of the sample. At least one optical parameter is an optical path difference induced by the sample, at the radial position.
The method comprises, following the acquisition of an image of the sample:
With this approach:
Taking into account a thickness e(r) of the cell at a radial position r, the refractive index may be estimated from the difference in optical path length L(r). The thickness of the cell e(r) is, for example, determined by estimating a radius or a diameter of each cell, from the observation image. From the thickness, it is possible to determine the volume V of the cell under the assumption of a shape, typically a circle shape.
Knowing the difference in optical path length L(r), as well as the volume V of a cell, the real and imaginary parts of the relative refractive index may be determined using the following expressions:
According to this variant, the observation image I′ of the sample may be obtained from a spatial reference distribution of one of the parameters in question (the absorbance and/or the difference in optical path length). Thus, according to this variant, step 120 described above is not necessary.
According to a second variant, the absorbance α(r) and difference L(r) in optical path length may be estimated as described in patent application FR1906766, and more particularly with respect to steps 110 to 180 of FR1906766. Patent application FR1906766 may be considered to be an improvement of patent application FR1859618. The real and imaginary parts of the relative refractive index are estimated using expressions (1) and (2).
According to a third variant, the real and imaginary parts of the relative refractive index are obtained by carrying out, on the acquired image I0, the operations described in patent application FR1873260, and more precisely with respect to steps 100 to 150 in FR1873260. With such an approach, step 130 of the present patent application is replaced with step 330: see
The characterization of the diffraction pattern may comprise a comparison with a modelled diffraction pattern. The modelled diffraction pattern may have been modelled using a Mie model, taking into account a complex refractive index or a complex relative refractive index.
This approach amounts to modelling not a profile of a quantity relative to complex amplitude, along the transverse axis, as described with reference to step 130, but a diffraction pattern formed by the cell. It is a question of determining the parameters of the cell, notably the complex refractive index, or the relative complex relative index, allowing a modelled diffraction pattern considered to be similar to the diffraction pattern obtained in substep iv) to be obtained. Substeps ii) to iv) aim to consider in isolation one single cell, so as to obtain, in the propagation plane, a single diffraction pattern corresponding to said cell. The propagation plane is preferably the detection plane.
The invention will possibly be used to characterize the variation in the viability state of cells cultivated in bioreactors, for example, in the field of the pharmaceutical industry. It allows the viability state of cells to be tracked and a decrease in the viability of the cells to be prevented. One advantage is that it allows the decrease in cell viability to be anticipated, this allowing suitable measures to be taken, with respect to the culture conditions, to prevent too great a degradation in cellular viability.
Filing Document | Filing Date | Country | Kind |
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PCT/US2020/027263 | 4/8/2020 | WO |