Centre for Bioinformatics, School of Life Sciences, Pondicherry University, Pondicherry, India.
Brief Bioinform. 2020 Mar 23;21(2):429-440. doi: 10.1093/bib/bbz005.
Biological complex systems are composed of numerous components that interact within and across different scales. The ever-increasing generation of high-throughput biomedical data has given us an opportunity to develop a quantitative model of nonlinear biological systems having implications in health and diseases. Multidimensional molecular data can be modeled using various statistical methods at different scales of biological organization, such as genome, transcriptome and proteome. I will discuss recent advances in the application of computational medicine in complex diseases such as network-based studies, genome-scale metabolic modeling, kinetic modeling and support vector machines with specific examples in the field of cancer, psychiatric disorders and type 2 diabetes. The recent advances in translating these computational models in diagnosis and identification of drug targets of complex diseases are discussed, as well as the challenges researchers and clinicians are facing in taking computational medicine from the bench to bedside.
生物复杂系统由众多组件构成,这些组件在不同尺度内和跨尺度进行相互作用。高通量生物医学数据的不断涌现,使我们有机会开发出具有健康和疾病意义的非线性生物系统的定量模型。多维分子数据可以使用各种统计方法在不同的生物组织尺度上进行建模,如基因组、转录组和蛋白质组。我将讨论计算医学在复杂疾病中的应用的最新进展,例如基于网络的研究、基因组规模的代谢建模、动力学建模和支持向量机,以及在癌症、精神障碍和 2 型糖尿病领域的具体例子。还讨论了将这些计算模型转化为复杂疾病的诊断和药物靶点识别的最新进展,以及研究人员和临床医生在将计算医学从实验室推向临床时所面临的挑战。