Deep Learning Methods for De Novo Peptide Sequencing.

IF 6.9 2区 化学 Q1 SPECTROSCOPY Mass Spectrometry Reviews Pub Date : 2024-11-29 DOI:10.1002/mas.21919
Wout Bittremieux, Varun Ananth, William E Fondrie, Carlo Melendez, Marina Pominova, Justin Sanders, Bo Wen, Melih Yilmaz, William S Noble
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引用次数: 0

Abstract

Protein tandem mass spectrometry data are most often interpreted by matching observed mass spectra to a protein database derived from the reference genome of the sample being analyzed. In many application domains, however, a relevant protein database is unavailable or incomplete, and in such settings de novo sequencing is required. Since the introduction of the DeepNovo algorithm in 2017, the field of de novo sequencing has been dominated by deep learning methods, which use large amounts of labeled mass spectrometry data to train multi-layer neural networks to translate from observed mass spectra to corresponding peptide sequences. Here, we describe these deep learning methods, outline procedures for evaluating their performance, and discuss the challenges in the field, both in terms of methods development and evaluation protocols.

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全新肽段测序的深度学习方法。
蛋白质串联质谱分析数据通常通过将观察到的质谱与来自被分析样品参考基因组的蛋白质数据库相匹配来解释。然而,在许多应用领域,相关的蛋白质数据库是不可用的或不完整的,在这种情况下,需要从头测序。自2017年DeepNovo算法引入以来,de novo测序领域一直以深度学习方法为主导,该方法使用大量标记的质谱数据来训练多层神经网络,将观察到的质谱转换为相应的肽序列。在这里,我们描述了这些深度学习方法,概述了评估其性能的程序,并讨论了该领域在方法开发和评估协议方面的挑战。
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来源期刊
Mass Spectrometry Reviews
Mass Spectrometry Reviews 物理-光谱学
CiteScore
16.30
自引率
3.00%
发文量
56
期刊介绍: The aim of the journal Mass Spectrometry Reviews is to publish well-written reviews in selected topics in the various sub-fields of mass spectrometry as a means to summarize the research that has been performed in that area, to focus attention of other researchers, to critically review the published material, and to stimulate further research in that area. The scope of the published reviews include, but are not limited to topics, such as theoretical treatments, instrumental design, ionization methods, analyzers, detectors, application to the qualitative and quantitative analysis of various compounds or elements, basic ion chemistry and structure studies, ion energetic studies, and studies on biomolecules, polymers, etc.
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