Department of Industrial and Systems Engineering, University of Minnesota, Minneapolis, Minnesota, United States of America.
School of Mathematics, University of Minnesota, Minneapolis, Minnesota, United States of America.
PLoS Comput Biol. 2024 Mar 6;20(3):e1011888. doi: 10.1371/journal.pcbi.1011888. eCollection 2024 Mar.
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.
肿瘤异质性是一种复杂且广泛认可的特征,它给开发有效的癌症治疗方法带来了重大挑战。特别是,许多肿瘤存在具有不同治疗反应特征的多种亚群。通过确定肿瘤内的亚群结构来描述这种异质性,可以实现更精确和成功的治疗策略。在我们之前的工作中,我们开发了 PhenoPop,这是一种从批量高通量药物筛选数据中揭示肿瘤药物反应亚群结构的计算框架。然而,驱动 PhenoPop 的基础模型的确定性限制了模型拟合和它可以从数据中提取的信息。作为一项进展,我们提出了一种基于线性生死过程的随机模型来解决这个限制。我们的模型可以在实验的时间范围内形成动态方差,从而使模型使用更多的数据信息来提供更稳健的估计。此外,新提出的模型可以很容易地适应实验数据呈现正时间相关性的情况。我们在模拟数据(in silico)和实验数据(in vitro)上测试了我们的模型,这支持了我们关于其优势的论点。