FCC - An automated rule-based processing tool for life science data.

Q2 Decision Sciences
Simon Barkow-Oesterreicher, Can Türker, Christian Panse
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引用次数: 17

Abstract

Background: Data processing in the bioinformatics field often involves the handling of diverse software programs in one workflow. The field is lacking a set of standards for file formats so that files have to be processed in different ways in order to make them compatible to different analysis programs. The problem is that mass spectrometry vendors at most provide only closed-source Windows libraries to programmatically access their proprietary binary formats. This prohibits the creation of an efficient and unified tool that fits all processing needs of the users. Therefore, researchers are spending a significant amount of time using GUI-based conversion and processing programs. Besides the time needed for manual usage, such programs also can show long running times for processing, because most of them make use of only a single CPU. In particular, algorithms to enhance data quality, e.g. peak picking or deconvolution of spectra, add waiting time for the users.

Results: To automate these processing tasks and let them run continuously without user interaction, we developed the FGCZ Converter Control (FCC) at the Functional Genomics Center Zurich (FGCZ) core facility. The FCC is a rule-based system for automated file processing that reduces the operation of diverse programs to a single configuration task. Using filtering rules for raw data files, the parameters for all tasks can be custom-tailored to the needs of every single researcher and processing can run automatically and efficiently on any number of servers in parallel using all available CPU resources.

Conclusions: FCC has been used intensively at FGCZ for processing more than hundred thousand mass spectrometry raw files so far. Since we know that many other research facilities have similar problems, we would like to report on our tool and the accompanying ideas for an efficient set-up for potential reuse.

Abstract Image

Abstract Image

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FCC -一个自动的基于规则的生命科学数据处理工具。
背景:生物信息学领域的数据处理通常涉及在一个工作流程中处理不同的软件程序。该领域缺乏一套文件格式的标准,因此必须以不同的方式处理文件,以便使它们与不同的分析程序兼容。问题是质谱供应商最多只提供闭源的Windows库,以编程方式访问其专有的二进制格式。这就妨碍了创建一个高效和统一的工具来满足用户的所有处理需求。因此,研究人员花费大量时间使用基于gui的转换和处理程序。除了手动使用所需的时间外,这类程序的处理运行时间也很长,因为它们大多数只使用单个CPU。特别是,提高数据质量的算法,如峰拾取或频谱的反卷积,增加了用户的等待时间。结果:为了自动化这些处理任务并使其在没有用户交互的情况下连续运行,我们在苏黎世功能基因组学中心(FGCZ)核心设施开发了FGCZ转换器控制(FCC)。FCC是一个基于规则的自动文件处理系统,可将各种程序的操作减少到单个配置任务。使用原始数据文件的过滤规则,所有任务的参数都可以根据每个研究人员的需要进行定制,并且可以使用所有可用的CPU资源在任意数量的服务器上并行地自动有效地运行。结论:FCC已在FGCZ广泛使用,迄今为止处理了超过十万份质谱原始文件。由于我们知道许多其他的研究设施也有类似的问题,我们想报告一下我们的工具和伴随的想法,以便为潜在的重用提供有效的设置。
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来源期刊
Source Code for Biology and Medicine
Source Code for Biology and Medicine Decision Sciences-Information Systems and Management
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期刊介绍: Source Code for Biology and Medicine is a peer-reviewed open access, online journal that publishes articles on source code employed over a wide range of applications in biology and medicine. The journal"s aim is to publish source code for distribution and use in the public domain in order to advance biological and medical research. Through this dissemination, it may be possible to shorten the time required for solving certain computational problems for which there is limited source code availability or resources.
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