利用开源 Omics 数据推进胰腺研究

Gayathri Swaminathan, Toshie Saito, S. Husain
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引用次数: 0

摘要

全局组学 "革命改变了生物医学研究的格局,使科学家有能力以前所未有的水平研究复杂的生物现象和疾病过程。基因组学、转录组学、蛋白质组学和代谢组学等不同的全息研究产生了大量的 "大 "数据,这促使计算工具的同步发展,以实现硅学分析并帮助数据解构。考虑到生成和分析大数据所需的密集资源和高昂成本,人们一直在集中精力、通力合作,以 "开源 "的方式免费提供数据和分析工具,让更广泛的研究界从中受益。胰腺学研究为这股 "大数据热潮 "做出了贡献,同时也从利用开源数据中获益匪浅,越来越多的新研究成果和出版物都源于此类数据。在这篇综述中,我们将简要介绍开放源码 omics 数据的演变、数据类型、数据管理和再利用的 "FAIR "指导原则,以及实现免费和公平数据访问、可用性和提供 omics 数据分析工具的集中式平台。我们通过自己在挖掘胰腺炎 omics 数据方面的经验进行案例研究,说明了将开放源数据重新用于回答胰腺研究中与转化相关的问题的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Open Source Omics Data to Advance Pancreas Research
The ‘omics’ revolution has transformed the biomedical research landscape by equipping scientists with the ability to interrogate complex biological phenomenon and disease processes at an unprecedented level. The volume of ‘big’ data generated by the different omics studies such as genomics, transcriptomics, proteomics, and metabolomics has led to the concurrent development of computational tools to enable in silico analysis and aid data deconvolution. Considering the intensive resources and high costs required to generate and analyze big data, there has been centralized, collaborative efforts to make the data and analysis tools freely available as ‘Open Source’, to benefit the wider research community. Pancreatology research studies have contributed to this ‘big data rush’ and have additionally benefitted from utilizing the open source data as evidenced by the increasing number of new research findings and publications that stem from such data. In this review, we briefly introduce the evolution of open source omics data, data types, the ‘FAIR’ guiding principles for data management and reuse, and centralized platforms that enable free and fair data accessibility, availability, and provide tools for omics data analysis. We illustrate, through the case study of our own experience in mining pancreatitis omics data, the power of repurposing open source data to answer translationally relevant questions in pancreas research.
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