Blair Rachael Hageman, Trichler David L, Gaille Daniel P
Department of Biostatistics, State University of New York at Buffalo Buffalo, NY, USA.
Front Physiol. 2012 Jun 28;3:227. doi: 10.3389/fphys.2012.00227. eCollection 2012.
Cancer is a major health problem with high mortality rates. In the post-genome era, investigators have access to massive amounts of rapidly accumulating high-throughput data in publicly available databases, some of which are exclusively devoted to housing Cancer data. However, data interpretation efforts have not kept pace with data collection, and gained knowledge is not necessarily translating into better diagnoses and treatments. A fundamental problem is to integrate and interpret data to further our understanding in Cancer Systems Biology. Viewing cancer as a network provides insights into the complex mechanisms underlying the disease. Mathematical and statistical models provide an avenue for cancer network modeling. In this article, we review two widely used modeling paradigms: deterministic metabolic models and statistical graphical models. The strength of these approaches lies in their flexibility and predictive power. Once a model has been validated, it can be used to make predictions and generate hypotheses. We describe a number of diverse applications to Cancer Biology, including, the system-wide effects of drug-treatments, disease prognosis, tumor classification, forecasting treatment outcomes, and survival predictions.
癌症是一个死亡率很高的重大健康问题。在后基因组时代,研究人员可以在公开可用的数据库中获取大量快速积累的高通量数据,其中一些数据库专门用于存储癌症数据。然而,数据解读工作未能跟上数据收集的步伐,所获得的知识也不一定能转化为更好的诊断和治疗方法。一个根本问题是整合和解读数据,以增进我们对癌症系统生物学的理解。将癌症视为一个网络有助于深入了解该疾病背后的复杂机制。数学和统计模型为癌症网络建模提供了一条途径。在本文中,我们回顾了两种广泛使用的建模范式:确定性代谢模型和统计图形模型。这些方法的优势在于其灵活性和预测能力。一旦模型得到验证,就可以用于进行预测并生成假设。我们描述了在癌症生物学中的一些不同应用,包括药物治疗的全系统效应、疾病预后、肿瘤分类、预测治疗结果和生存预测。