Vafaee Fatemeh
Charles Perkins Centre, University of Sydney, Sydney, Australia.
School of Mathematics and Statistics, University of Sydney, Sydney, Australia.
Sci Rep. 2016 Feb 24;6:22023. doi: 10.1038/srep22023.
Biomarkers have gained immense scientific interest and clinical value in the practice of medicine. With unprecedented advances in high-throughput technologies, research interest in identifying novel and customized disease biomarkers for early detection, diagnosis, or drug responses is rapidly growing. Biomarkers can be identified in different levels of molecular biomarkers, networks biomarkers and dynamical network biomarkers (DNBs). The latter is a recently developed concept which relies on the idea that a cell is a complex system whose behavior is emerged from interplay of various molecules, and this network of molecules dynamically changes over time. A DNB can serve as an early-warning signal of disease progression, or as a leading network that drives the system into the disease state, and thus unravels mechanisms of disease initiation and progression. It is therefore of great importance to identify DNBs efficiently and reliably. In this work, the problem of DNB identification is defined as a multi-objective optimization problem, and a framework to identify DNBs out of time-course high-throughput data is proposed. Temporal gene expression data of a lung injury with carbonyl chloride inhalation exposure has been used as a case study, and the functional role of the discovered biomarker in the pathogenesis of lung injury has been thoroughly analyzed.
生物标志物在医学实践中已获得了巨大的科学关注和临床价值。随着高通量技术取得前所未有的进展,对于识别用于早期检测、诊断或药物反应的新型及定制化疾病生物标志物的研究兴趣正在迅速增长。生物标志物可在分子生物标志物、网络生物标志物和动态网络生物标志物(DNB)等不同层面进行识别。后者是一个最近发展起来的概念,其基于这样一种理念,即细胞是一个复杂系统,其行为源自各种分子之间的相互作用,并且这种分子网络会随时间动态变化。一个DNB可作为疾病进展的早期预警信号,或作为驱动系统进入疾病状态的主导网络,从而揭示疾病发生和发展的机制。因此,高效且可靠地识别DNB非常重要。在这项工作中,DNB识别问题被定义为一个多目标优化问题,并提出了一个从时间进程高通量数据中识别DNB的框架。以吸入光气导致肺损伤的时间基因表达数据作为案例研究,并对所发现的生物标志物在肺损伤发病机制中的功能作用进行了深入分析。