21世纪之交的生命科学研究和药物发现:瑞士生物网的经验。

Matthijs den Besten, Arthur J Thomas, Ralph Schroeder
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引用次数: 0

摘要

背景:人们常说生命科学正在向信息科学转变。随着实验室实验开始产生越来越多的数据,处理这些数据的能力也在追赶,越来越多的科学活动被认为是在实验室之外进行的,筛选数据并“在计算机上”模拟“体外”观察到的过程。生命科学的转变和其他学科的类似发展激发了世界各地的各种倡议,以创建技术基础设施来支持正在出现的新科学实践。英国的e-Science项目和国家科学基金会的网络基础设施办公室就是其中的例子。瑞士没有这样的全国性倡议。然而,这并没有阻止科学家探索类似计算基础设施的发展。2004年,瑞士的一组研究人员建立了一个名为SwissBioGrid的项目,以探索网格计算技术是否可以成功地部署在生命科学中。这篇论文将他们的经验作为一个案例研究,展示了生命科学目前如何作为一门信息科学运作,并展示了关于现有制度和技术安排如何促进或阻碍这种运作的经验教训。结果:SwissBioGrid产生了两个试点项目:一个用于蛋白质组学数据分析,另一个用于高通量分子对接(“虚拟筛选”),以寻找治疗被忽视疾病(特别是登革热)的新药。蛋白质组学项目是数据管理问题的一个例子,它将许多不同的分析算法应用于来自质谱的tb大小的数据集,涉及与许多不同参考数据库的比较;虚拟筛选项目更多的是一个纯粹的计算问题,模拟数百万小分子与登革热病毒外壳上有限数量的蛋白质靶标之间的相互作用。当科学实践通过创造一种新的技术基础设施来解决大规模数据分析和数据管理问题时,它们是如何发生变化的,这两者都提供了有趣的经验。结论:根据SwissBioGrid的经验,数据密集型发现可以从与工业界的密切合作和利用分布式计算能力中获益良多。然而,生命科学研究的多样性意味着通用基础设施的作用有限;支持的短暂性意味着,如果科学家想要维持他们的成功带来的好处,他们就需要将他们的努力与他人结合起来,否则这些好处就会失去。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Life science research and drug discovery at the turn of the 21st century: the experience of SwissBioGrid.

Life science research and drug discovery at the turn of the 21st century: the experience of SwissBioGrid.

Life science research and drug discovery at the turn of the 21st century: the experience of SwissBioGrid.

Background: It is often said that the life sciences are transforming into an information science. As laboratory experiments are starting to yield ever increasing amounts of data and the capacity to deal with those data is catching up, an increasing share of scientific activity is seen to be taking place outside the laboratories, sifting through the data and modelling "in silico" the processes observed "in vitro." The transformation of the life sciences and similar developments in other disciplines have inspired a variety of initiatives around the world to create technical infrastructure to support the new scientific practices that are emerging. The e-Science programme in the United Kingdom and the NSF Office for Cyberinfrastructure are examples of these. In Switzerland there have been no such national initiatives. Yet, this has not prevented scientists from exploring the development of similar types of computing infrastructures. In 2004, a group of researchers in Switzerland established a project, SwissBioGrid, to explore whether Grid computing technologies could be successfully deployed within the life sciences. This paper presents their experiences as a case study of how the life sciences are currently operating as an information science and presents the lessons learned about how existing institutional and technical arrangements facilitate or impede this operation.

Results: SwissBioGrid gave rise to two pilot projects: one for proteomics data analysis and the other for high-throughput molecular docking ("virtual screening") to find new drugs for neglected diseases (specifically, for dengue fever). The proteomics project was an example of a data management problem, applying many different analysis algorithms to Terabyte-sized datasets from mass spectrometry, involving comparisons with many different reference databases; the virtual screening project was more a purely computational problem, modelling the interactions of millions of small molecules with a limited number of protein targets on the coat of the dengue virus. Both present interesting lessons about how scientific practices are changing when they tackle the problems of large-scale data analysis and data management by means of creating a novel technical infrastructure.

Conclusions: In the experience of SwissBioGrid, data intensive discovery has a lot to gain from close collaboration with industry and harnessing distributed computing power. Yet the diversity in life science research implies only a limited role for generic infrastructure; and the transience of support means that researchers need to integrate their efforts with others if they want to sustain the benefits of their success, which are otherwise lost.

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