a Institute for Computational Engineering and Sciences , The University of Texas at Austin , Austin , USA.
b Livestrong Cancer Institutes , The University of Texas at Austin , Austin , USA.
Expert Rev Anticancer Ther. 2018 Dec;18(12):1271-1286. doi: 10.1080/14737140.2018.1527689. Epub 2018 Oct 22.
A defining hallmark of cancer is aberrant cell proliferation. Efforts to understand the generative properties of cancer cells span all biological scales: from genetic deviations and alterations of metabolic pathways to physical stresses due to overcrowding, as well as the effects of therapeutics and the immune system. While these factors have long been studied in the laboratory, mathematical and computational techniques are being increasingly applied to help understand and forecast tumor growth and treatment response. Advantages of mathematical modeling of proliferation include the ability to simulate and predict the spatiotemporal development of tumors across multiple experimental scales. Central to proliferation modeling is the incorporation of available biological data and validation with experimental data. Areas covered: We present an overview of past and current mathematical strategies directed at understanding tumor cell proliferation. We identify areas for mathematical development as motivated by available experimental and clinical evidence, with a particular emphasis on emerging, non-invasive imaging technologies. Expert commentary: The data required to legitimize mathematical models are often difficult or (currently) impossible to obtain. We suggest areas for further investigation to establish mathematical models that more effectively utilize available data to make informed predictions on tumor cell proliferation.
癌症的一个显著特征是细胞异常增殖。为了理解癌细胞的生成特性,人们研究了各种生物学尺度的问题:从基因偏差和代谢途径的改变,到由于过度拥挤导致的物理压力,以及治疗和免疫系统的影响。虽然这些因素在实验室中已经研究了很长时间,但数学和计算技术正越来越多地被应用于帮助理解和预测肿瘤生长和治疗反应。增殖的数学建模的优点包括能够模拟和预测跨越多个实验尺度的肿瘤的时空发展。增殖建模的核心是将可用的生物学数据和实验数据进行整合和验证。涵盖领域:我们介绍了过去和当前针对理解肿瘤细胞增殖的数学策略概述。我们确定了一些数学发展领域,这些领域是由现有的实验和临床证据推动的,特别强调新兴的、非侵入性的成像技术。专家评论:使数学模型合法化所需的数据通常很难或(目前)无法获得。我们建议进一步调查一些领域,以建立数学模型,这些模型可以更有效地利用现有数据,对肿瘤细胞增殖做出明智的预测。