Using birth-death processes to infer tumor subpopulation structure from live-cell imaging drug screening data
Tumor heterogeneity is a complex and widely recognized trait that poses significant challenges in developing effective cancer therapies. In particular, many tumors harbor a variety of subpopulations with distinct therapeutic response characteristics. Characterizing this heterogeneity by determining...
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Zusammenfassung: | Tumor heterogeneity is a complex and widely recognized trait that poses
significant challenges in developing effective cancer therapies. In particular,
many tumors harbor a variety of subpopulations with distinct therapeutic
response characteristics. Characterizing this heterogeneity by determining the
subpopulation structure within a tumor enables more precise and successful
treatment strategies. In our prior work, we developed PhenoPop, a computational
framework for unravelling the drug-response subpopulation structure within a
tumor from bulk high-throughput drug screening data. However, the deterministic
nature of the underlying models driving PhenoPop restricts the model fit and
the information it can extract from the data. As an advancement, we propose a
stochastic model based on the linear birth-death process to address this
limitation. Our model can formulate a dynamic variance along the horizon of the
experiment so that the model uses more information from the data to provide a
more robust estimation. In addition, the newly proposed model can be readily
adapted to situations where the experimental data exhibits a positive time
correlation. We test our model on simulated data (in silico) and experimental
data (in vitro), which supports our argument about its advantages. |
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DOI: | 10.48550/arxiv.2303.08245 |