METHOD OF GENERATING A METRIC TO QUANTITATIVELY REPRESENT AN EFFECT OF A TREATMENT
20230177691 · 2023-06-08
Assignee
Inventors
Cpc classification
G16H50/30
PHYSICS
International classification
Abstract
Methods of generating a metric to quantitatively represent an effect of a treatment are disclosed. In one arrangement, first and second sample data units are received, each representing a segmented image of a biological sample taken from a subject. The segmentation divides the image into plural segmentation sets of regions. Each of the first and second sample data units is analysed to determine information about a spatial distribution of biomarkers relative to the segmentation sets. A metric is generated using a combination of the determined information about the spatial distribution of biomarkers relative to the segmentation sets for the first and second sample data units.
Claims
1. A computer-implemented method of generating a metric to quantitatively represent an effect of a treatment, the method comprising: receiving a first sample data unit derived from a subject before a treatment has been applied and receiving a second sample data unit derived from the subject after the treatment has been applied, or receiving a first sample data unit derived from a subject after a first treatment has been applied to the subject and receiving a second sample data unit derived from the subject after a second treatment has been applied to the subject, the second treatment being different from the first treatment; and wherein each of the sample data units represents a segmented image of a biological sample taken from the subject, the segmentation dividing the image into plural segmentation sets of regions, each segmentation set representing regions in the image that correspond to a different respective tissue type; and wherein the method further comprises: analysing each of the first sample data unit and the second sample data unit to determine information about a spatial distribution of biomarkers relative to the segmentation sets; and generating a metric using a combination of the determined information about the spatial distribution of biomarkers relative to the segmentation sets for the first sample data unit and the second sample data unit.
2. The method of claim 1, wherein the information about the spatial distribution of biomarkers relative to the segmentation sets comprises: first information, comprising information about the spatial distribution of biomarkers in a first one of the segmentation sets; and second information, comprising information about the spatial distribution of biomarkers in a second one of the segmentation sets.
3. The method of claim 2, where the metric is generated using the first and second information for the first sample data unit and the first and second information for the second sample data unit.
4. The method of claim 3, wherein the generation of the metric comprises obtaining a vector having end points defined by the first and second information for the first sample data unit and the first and second information for the second sample data unit.
5. The method of claim 4, wherein the generation of the metric comprises calculating an argument or slope of the vector.
6. The method of claim 4, wherein the generation of the metric comprises calculating a magnitude of the vector.
7. The method of claim 4, wherein: the generation of the metric comprises calculating an argument or slope of the vector and/or calculating a magnitude of the vector; and the method further comprises using the calculated arguments or slopes and/or magnitudes for plural different subjects, together with information about clinical efficacy and/or safety of an applied treatment, as input to a machine learning algorithm to build a predictive model.
8. The method of claim 4, further comprising generating a visual representation of the metric by displaying at least the end points of the vector on a graph.
9. The method of claim 8, wherein: one axis of the graph represents a range of possible values of the first information; and the other axis of the graph represents a range of possible values of the second information.
10. The method of claim 1, wherein the information about the spatial distribution of biomarkers relative to the segmentation sets comprises information about a spatial density of the biomarkers in each of one or more of the segmentation sets.
11. The method of claim 10, wherein for at least one of the segmentation sets the segmentation set comprises plural regions of the image and the information about the spatial density of the biomarkers comprises region-specific information about the spatial density of the biomarkers in each of two or more of the regions.
12. The method of claim 11, wherein the generation of the metric comprises generating a metric representing a distribution of the spatial density of the biomarkers over the two or more of the regions, optionally in the form of a histogram.
13. The method of claim 1, wherein the plurality of segmentation sets comprises at least one segmentation set corresponding to tumor nest tissue.
14. The method of claim 1, wherein the plurality of segmentation sets comprises at least one segmentation set corresponding to a stroma tissue type.
15. The method of claim 1, wherein the biomarker comprises a stained cell.
16. The method of claim 1, wherein the biomarker comprises an immune cell, preferably a cytotoxic T cell.
17. The method of claim 1, wherein the segmented image in each sample data unit is obtained by applying a segmentation algorithm to an image of the respective biological sample taken from the subject.
18. The method of claim 1, wherein the treatment comprises application of an immunotherapy drug.
19. A computer program comprising instructions which, when the program is executed by a computer, cause the computer to carry out the method of claim 1.
20. A computer-readable medium, or data carrier signal, carrying the computer program of claim 19.
Description
[0013]
[0014]
[0015]
[0016]
[0017]
[0018] Embodiments of the disclosure relate to computer-implemented methods of generating a metric representing the effect of a treatment. Methods of the present disclosure are thus computer-implemented. Each step of the disclosed methods may be performed by a computer in the most general sense of the term, meaning any device capable of performing the data processing steps of the method, including dedicated digital circuits. The computer may comprise various combinations of computer hardware, including for example CPUs, RAM, SSDs, motherboards, network connections, firmware, software, and/or other elements known in the art that allow the computer hardware to perform the required computing operations. The required computing operations may be defined by one or more computer programs. The one or more computer programs may be provided in the form of media or data carriers, optionally non-transitory media, storing computer readable instructions. When the computer readable instructions are read by the computer, the computer performs the required method steps. The computer may consist of a self-contained unit, such as a general-purpose desktop computer, laptop, tablet, mobile telephone, or other smart device. Alternatively, the computer may consist of a distributed computing system having plural different computers connected to each other via a network such as the internet or an intranet.
[0019]
[0020] Step S1 of the method comprises receiving a first sample data unit and a second sample data unit. In one class of embodiment, the first sample data unit is derived from a subject (e.g. a human patient) before a treatment has been applied to the subject and the second sample data unit is derived from the subject after the treatment has been applied. In another class of embodiment, the first sample data unit is derived from a subject after a first treatment has been applied to the subject and the second sample data unit is derived from the subject after a second treatment has been applied to the subject. The second treatment is different from the first treatment. For example, the first and second treatments may involve treatments based on different drugs and/or different dosage regimes. In some embodiments, either or both of the treatments comprises application of an immunotherapy drug, but the general approach is applicable to other therapies.
[0021] Each of the sample data units represents a segmented image of a biological sample taken from the subject. The segmentation may involve dividing the image into plural segmentation sets of regions. Each segmentation set represents regions in the image that correspond to a different respective tissue type. Any of various known approaches to image segmentation according to tissue type may be used. The segmentation may be performed automatically (using an automated segmentation algorithm), manually (e.g. expert-provided), or by a combination of the two.
[0022]
[0023] The set of regions 4 surrounded by the loops 2 is thus an example of a segmentation set of regions. Each region 4 in the segmentation set corresponds to tumor nest tissue. The set of regions 6 outside of the loops 2 is a further example of a segmentation set of regions, in this case corresponding to stroma tissue.
[0024] Step S2 of the method comprises analysing each of the first sample data unit and the second sample data unit to determine information about a spatial distribution of biomarkers relative to the segmentation sets. The nature of the biomarker is not particularly limited. In some embodiments, the biomarker comprises a stained cell. The biomarker may comprise an immune cell, preferably a cytotoxic T cell as in the example discussed with reference to
[0025] Step S3 of the method comprises generating a metric using a combination of the determined information about the spatial distribution of biomarkers relative to the segmentation sets for the first sample data unit and the second sample data unit (i.e. the determined information for the first sample data unit is used in combination with the determined information for the second sample data unit).
[0026] In some embodiments, as exemplified in
[0027] In some embodiments, the generation of the metric comprises obtaining a vector having end points defined by the first and second information for the first sample data unit and the first and second information for the second sample data unit. A visual representation of the metric may be generated, as exemplified in
[0028]
[0029] In the example shown in
[0030] In some embodiments, further information may be indicated on the plot. For example, classifications of the patients may be indicated.
[0031] In some embodiments, metrics generated in step S3 (e.g. a calculated argument or slope and/or magnitude of a generated vector) for plural different subjects may be used together with information about clinical efficacy and/or safety of an applied treatment as input to a machine learning algorithm to build a predictive model. The predictive model may then be used to generate a new metric quantitatively representing an effect of a treatment for a new first and second sample data unit received from a patient. This approach may be used to screen patients to determine whether a particular treatment would be effective and/or safe for that patient.