Computational Biology and Bioinformatics Group, Pacific Northwest National Laboratory, Richland, WA 99352, USA.
Dis Markers. 2010;28(4):253-66. doi: 10.3233/DMA-2010-0695.
The recent advances in high-throughput data acquisition have driven a revolution in the study of human disease and determination of molecular biomarkers of disease states. It has become increasingly clear that many of the most important human diseases arise as the result of a complex interplay between several factors including environmental factors, such as exposure to toxins or pathogens, diet, lifestyle, and the genetics of the individual patient. Recent research has begun to describe these factors in the context of networks which describe relationships between biological components, such as genes, proteins and metabolites, and have made progress towards the understanding of disease as a dysfunction of the entire system, rather than, for example, mutations in single genes. We provide a summary of some of the recent work in this area, focusing on how the integration of different kinds of complementary data, and analysis of biological networks and pathways can lead to discovery of robust, specific and useful biomarkers of disease and how these methods can help shed light on the mechanisms and etiology of the diseases being studied.
近年来高通量数据采集的进展推动了人类疾病研究和疾病状态分子生物标志物的确定的革命。越来越明显的是,许多最重要的人类疾病是由几种因素(包括环境因素,如接触毒素或病原体、饮食、生活方式和个体患者的遗传学)之间的复杂相互作用引起的。最近的研究已经开始在描述这些因素的网络中进行描述,这些网络描述了生物成分(如基因、蛋白质和代谢物)之间的关系,并朝着将疾病理解为整个系统功能障碍的方向取得了进展,而不是例如单个基因的突变。我们总结了该领域的一些最新工作,重点介绍了如何整合不同类型的互补数据以及生物网络和途径的分析可以发现稳健、具体和有用的疾病生物标志物,以及这些方法如何帮助揭示所研究疾病的机制和病因。