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Parallel processing of large datasets from nanoLC-FTICR-MS measurements

机译:来自nanoLC-FTICR-MS测量的大型数据集的并行处理

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摘要

A new approach for automatic parallel processing of large mass spectral datasets in a distributed computing environment is demonstrated to significantly decrease the total processing time. The implementation of this novel approach is described and evaluated for large nanoLC-FTICR-MS datasets. The speed benefits are determined by the network speed and file transfer protocols only and allow almost real-time analysis of complex data (e.g., a 3-gigabyte raw dataset is fully processed within 5 min). Key advantages of this approach are not limited to the improved analysis speed, but also include the improved flexibility, reproducibility, and the possibility to share and reuse the pre- and postprocessing strategies. The storage of all raw data combined with the massively parallel processing approach described here allows the scientist to reprocess data with a different set of parameters (e.g., apodization, calibration, noise reduction), as is recommended by the proteomics community. This approach of parallel processing was developed in the Virtual Laboratory for e-Science (VL-e), a science portal that aims at allowing access to users outside the computer research community. As such, this strategy can be applied to all types of serially acquired large mass spectral datasets such as LC-MS, LC-MS/MS, and high-resolution imaging MS results. © 2007 American Society for Mass Spectrometry.
机译:演示了一种在分布式计算环境中自动并行处理大型质谱数据集的新方法,该方法可显着减少总处理时间。描述了这种新颖方法的实现,并针对大型nanoLC-FTICR-MS数据集进行了评估。速度优势仅由网络速度和文件传输协议确定,并允许对复杂数据进行几乎实时的分析(例如,在5分钟内完全处理了3 GB的原始数据集)。这种方法的主要优点不仅限于提高分析速度,还包括改进的灵活性,可重复性,以及共享和重用预处理和后处理策略的可能性。根据蛋白质组学的建议,所有原始数据的存储与此处所述的大规模并行处理方法相结合,使科学家可以使用一组不同的参数(例如切趾,校准,降噪)重新处理数据。这种并行处理方法是在电子科学虚拟实验室(VL-e)中开发的,VL-e是一个科学门户,旨在允许访问计算机研究社区外部的用户。这样,该策略可以应用于所有类型的串行采集的大质谱数据集,例如LC-MS,LC-MS / MS和高分辨率成像MS结果。 ©2007美国质谱学会。

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