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Integrating Quantitative Assays with Biologically Based Mathematical Modeling for Predictive Oncology

机译:用生物学基于数学建模整合定量测定以获得预测肿瘤学

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摘要

We provide an overview on the use of biological assays to calibrate and initialize mechanism-based models of cancer phenomena. Although artificial intelligence methods currently dominate the landscape in computational oncology, mathematical models that seek to explicitly incorporate biological mechanisms into their formalism are of increasing interest. These models can guide experimental design and provide insights into the underlying mechanisms of cancer progression. Historically, these models have included a myriad of parameters that have been difficult to quantify in biologically relevant systems, limiting their practical insights. Recently, however, there has been much interest calibrating biologically based models with the quantitative measurements available from (for example) RNA sequencing, time-resolved microscopy, and in vivo imaging. In this contribution, we summarize how a variety of experimental methods quantify tumor characteristics from the molecular to tissue scales and describe how such data can be directly integrated with mechanism-based models to improve predictions of tumor growth and treatment response.
机译:我们概述了使用生物测定来校准和初始化基于机制的癌症现象模型。虽然人工智能方法目前在计算肿瘤学中占据主导地位,但寻求明确地将生物机制纳入其形式主义的数学模型是越来越令人利益。这些型号可以指导实验设计,并向癌症进展的潜在机制提供见解。从历史上看,这些模型包括在生物相关系统中难以量化的无数参数,限制了他们的实际见解。然而,最近,利益校准了生物基础的模型,其具有从(例如)RNA测序,时间分辨显微镜和体内成像的定量测量。在这一贡献中,我们总结了各种实验方法如何量化来自分子到组织尺度的肿瘤特征,并描述如何与基于机制的模型直接集成,以改善肿瘤生长和治疗反应的预测。

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