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系统与综合生物学的最新进展。

Current advances in systems and integrative biology.

机构信息

Institute of Cardiovascular and Medical Sciences, University of Glasgow, BHF Glasgow Cardiovascular Research Centre, 126 University Place, Glasgow G12 8TA, UK.

出版信息

Comput Struct Biotechnol J. 2014 Aug 27;11(18):35-46. doi: 10.1016/j.csbj.2014.08.007. eCollection 2014 Aug.

Abstract

Systems biology has gained a tremendous amount of interest in the last few years. This is partly due to the realization that traditional approaches focusing only on a few molecules at a time cannot describe the impact of aberrant or modulated molecular environments across a whole system. Furthermore, a hypothesis-driven study aims to prove or disprove its postulations, whereas a hypothesis-free systems approach can yield an unbiased and novel testable hypothesis as an end-result. This latter approach foregoes assumptions which predict how a biological system should react to an altered microenvironment within a cellular context, across a tissue or impacting on distant organs. Additionally, re-use of existing data by systematic data mining and re-stratification, one of the cornerstones of integrative systems biology, is also gaining attention. While tremendous efforts using a systems methodology have already yielded excellent results, it is apparent that a lack of suitable analytic tools and purpose-built databases poses a major bottleneck in applying a systematic workflow. This review addresses the current approaches used in systems analysis and obstacles often encountered in large-scale data analysis and integration which tend to go unnoticed, but have a direct impact on the final outcome of a systems approach. Its wide applicability, ranging from basic research, disease descriptors, pharmacological studies, to personalized medicine, makes this emerging approach well suited to address biological and medical questions where conventional methods are not ideal.

摘要

系统生物学在过去几年中引起了极大的兴趣。这部分是由于人们意识到,传统的方法一次只关注少数几个分子,无法描述整个系统中异常或调节的分子环境的影响。此外,假设驱动的研究旨在证明或反驳其假设,而无假设的系统方法可以产生一个无偏见的、新颖的可测试假设作为最终结果。这种方法避免了预测生物系统在细胞环境、组织或对远处器官的影响下应如何对微环境改变做出反应的假设。此外,通过系统数据挖掘和重新分层(整合系统生物学的基石之一)对现有数据的重复使用也受到了关注。虽然使用系统方法已经取得了巨大的成果,但显然缺乏合适的分析工具和专门构建的数据库是应用系统工作流程的主要瓶颈。这篇综述讨论了系统分析中当前使用的方法,以及在大规模数据分析和整合中经常遇到的障碍,这些障碍往往被忽视,但对系统方法的最终结果有直接影响。它的广泛适用性,从基础研究、疾病描述、药理学研究到个性化医学,使这种新兴方法非常适合解决传统方法不理想的生物学和医学问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0051/4212281/6b800a67ebda/gr1.jpg

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