An Out-of-Core GPU based dimensionality reduction algorithm for Big Mass Spectrometry Data and its application in bottom-up Proteomics.

Muaaz Gul Awan, Fahad Saeed
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引用次数: 8

Abstract

Modern high resolution Mass Spectrometry instruments can generate millions of spectra in a single systems biology experiment. Each spectrum consists of thousands of peaks but only a small number of peaks actively contribute to deduction of peptides. Therefore, pre-processing of MS data to detect noisy and non-useful peaks are an active area of research. Most of the sequential noise reducing algorithms are impractical to use as a pre-processing step due to high time-complexity. In this paper, we present a GPU based dimensionality-reduction algorithm, called G-MSR, for MS2 spectra. Our proposed algorithm uses novel data structures which optimize the memory and computational operations inside GPU. These novel data structures include Binary Spectra and Quantized Indexed Spectra (QIS). The former helps in communicating essential information between CPU and GPU using minimum amount of data while latter enables us to store and process complex 3-D data structure into a 1-D array structure while maintaining the integrity of MS data. Our proposed algorithm also takes into account the limited memory of GPUs and switches between in-core and out-of-core modes based upon the size of input data. G-MSR achieves a peak speed-up of 386x over its sequential counterpart and is shown to process over a million spectra in just 32 seconds. The code for this algorithm is available as a GPL open-source at GitHub at the following link: https://github.com/pcdslab/G-MSR.

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基于out - core GPU的大质谱数据降维算法及其在自下而上蛋白质组学中的应用。
现代高分辨率质谱仪可以在单一系统生物学实验中产生数百万个光谱。每个光谱由数千个峰组成,但只有少数峰对肽的扣除有积极作用。因此,对质谱数据进行预处理以检测噪声和无用峰是一个活跃的研究领域。由于时间复杂度高,大多数序列降噪算法作为预处理步骤是不切实际的。本文提出了一种基于GPU的MS2光谱降维算法G-MSR。我们提出的算法使用了新颖的数据结构,优化了GPU内部的内存和计算操作。这些新的数据结构包括二元光谱和量化索引光谱(QIS)。前者可以用最少的数据量在CPU和GPU之间传递重要的信息,而后者可以将复杂的三维数据结构存储和处理成一维数组结构,同时保持MS数据的完整性。我们提出的算法还考虑了gpu有限的内存以及基于输入数据大小在核内和核外模式之间的切换。G-MSR实现了386x的峰值加速,并显示在32秒内处理超过一百万个光谱。该算法的代码可以在GitHub上以GPL开源的形式在以下链接中获得:https://github.com/pcdslab/G-MSR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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