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Information engineering infrastructure for life sciences and its implementation in China

机译:生命科学信息工程基础设施及其在中国的实施

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Biological data, represented by the data from omics platforms, are accumulating exponentially. As some other data-intensive scientific disciplines such as high-energy physics, climatology, meteorology, geology, geography and environmental sciences, modern life sciences have entered the information-rich era, the era of the 4th paradigm. The creation of Chinese information engineering infrastructure for pan-omics studies (CIEIPOS) has been long overdue as part of national scientific infrastructure, in accelerating the further development of Chinese life sciences, and translating rich data into knowledge and medical applications. By gathering facts of current status of international and Chinese bioinformatics communities in collecting, managing and utilizing biological data, the essay stresses the significance and urgency to create a ‘data hub’ in CIEIPOS, discusses challenges and possible solutions to integrate, query and visualize these data. Another important component of CIEIPOS, which is not part of traditional biological data centers such as NCBI and EBI, is omics informatics. Mass spectroscopy platform was taken as an example to illustrate the complexity of omics informatics. Its heavy dependency on computational power is highlighted. The demand for such power in omics studies is argued as the fundamental function to meet for CIEIPOS. Implementation outlook of CIEIPOS in hardware and network is discussed.
机译:以来自组学平台的数据为代表的生物数据正在呈指数级增长。与其他一些数据密集型科学学科(例如高能物理学,气候学,气象学,地质学,地理学和环境科学)一样,现代生命科学已经进入了信息丰富的时代,即第四范式时代。作为国家科学基础设施的一部分,为加速中国生命科学的进一步发展以及将丰富的数据转化为知识和医学应用,早就应该建立中国的全组学研究信息工程基础设施(CIEIPOS)。通过收集国际和中国生物信息学界在收集,管理和利用生物数据方面的现状,这篇论文强调了在CIEIPOS中建立“数据中心”的重要性和紧迫性,讨论了整合,查询和可视化这些挑战和可能的解决方案数据。 CIEIPOS的另一个重要组成部分是组学信息学,它不是诸如NCBI和EBI之类的传统生物数据中心的一部分。以质谱平台为例来说明组学信息学的复杂性。突出显示了它对计算能力的高度依赖。在组学研究中对这种能力的需求被认为是满足CIEIPOS的基本功能。讨论了CIEIPOS在硬件和网络中的实现前景。

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