Krokidis Marios G, Exarchos Themis P, Vlamos Panagiotis
Bioinformatics and Human Electrophysiology Laboratory, Department of Informatics, Ionian University, Greece.
Math Biosci Eng. 2021 Feb 22;18(2):1813-1832. doi: 10.3934/mbe.2021094.
The complexity of biological systems suggests that current definitions of molecular dysfunctions are essential distinctions of a complex phenotype. This is well seen in neurodegenerative diseases (ND), such as Alzheimer's disease (AD) and Parkinson's disease (PD), multi-factorial pathologies characterized by high heterogeneity. These challenges make it necessary to understand the effectiveness of candidate biomarkers for early diagnosis, as well as to obtain a comprehensive mapping of how selective treatment alters the progression of the disorder. A large number of computational methods have been developed to explain network-based approaches by integrating individual components for modeling a complex system. In this review, high-throughput omics methodologies are presented for the identification of potent biomarkers associated with AD and PD pathogenesis as well as for monitoring the response of dysfunctional molecular pathways incorporating multilevel clinical information. In addition, principles for efficient data analysis pipelines are being discussed that can help address current limitations during the experimental process by increasing the reproducibility of benchmarking studies.
生物系统的复杂性表明,当前对分子功能障碍的定义是复杂表型的本质区别。这在神经退行性疾病(ND)中很明显,如阿尔茨海默病(AD)和帕金森病(PD),这些多因素病理具有高度异质性。这些挑战使得有必要了解候选生物标志物用于早期诊断的有效性,以及全面了解选择性治疗如何改变疾病的进展。已经开发了大量的计算方法,通过整合单个组件来解释基于网络的方法,以对复杂系统进行建模。在这篇综述中,介绍了高通量组学方法,用于识别与AD和PD发病机制相关的有效生物标志物,以及监测纳入多级临床信息的功能失调分子途径的反应。此外,还讨论了高效数据分析流程的原则,这些原则可以通过提高基准研究的可重复性来帮助解决实验过程中的当前局限性。