A DISTRIBUTED ALGORITHM FOR PROTEIN IDENTIFICATION FROM TANDEM MASS SPECTROMETRY DATA

Q3 Economics, Econometrics and Finance
Katarzyna Orzechowska, T. Rubel, R. Kurjata, Krzysztof Zaremba
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Abstract

Tandem mass spectrometry is an analytical technique widely used in proteomics for the high-throughput characterization of proteins in biological samples. Modern in-depth proteomic studies require the collection of even millions of mass spectra representing short protein fragments (peptides). In order to identify the peptides, the measured spectra are most often scored against a database of amino acid sequences of known proteins. Due to the volume of input data and the sizes of proteomic databases, this is a resource-intensive task, which requires an efficient and scalable computational strategy. Here, we present SparkMS, an algorithm for peptide and protein identification from mass spectrometry data explicitly designed to work in a distributed computational environment. To achieve the required performance and scalability, we use Apache Spark, a modern framework that is becoming increasingly popular not only in the field of “big data” analysis but also in bioinformatics. This paper describes the algorithm in detail and demonstrates its performance on a large proteomic dataset. Experimental results indicate that SparkMS scales with the number of worker nodes and the increasing complexity of the search task. Furthermore, it exhibits a protein identification efficiency comparable to X!Tandem, a widely-used proteomic search engine.
从串联质谱数据中进行蛋白质鉴定的分布式算法
串联质谱法是一种广泛应用于蛋白质组学的分析技术,用于生物样品中蛋白质的高通量表征。现代深入的蛋白质组学研究需要收集甚至数百万个代表短蛋白质片段(肽)的质谱。为了鉴定肽,测量的光谱通常是根据已知蛋白质的氨基酸序列数据库进行评分。由于输入数据量和蛋白质组学数据库的大小,这是一项资源密集型任务,需要高效和可扩展的计算策略。在这里,我们提出了SparkMS,一种从质谱数据中识别肽和蛋白质的算法,明确设计用于分布式计算环境。为了实现所需的性能和可扩展性,我们使用了Apache Spark,这是一个现代框架,不仅在“大数据”分析领域,而且在生物信息学领域也越来越流行。本文详细介绍了该算法,并在大型蛋白质组学数据集上展示了其性能。实验结果表明,SparkMS随着工作节点数量和搜索任务复杂度的增加而扩展。此外,其蛋白质鉴定效率可与X!Tandem,一个广泛使用的蛋白质组学搜索引擎。
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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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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