Transformer-based de novo peptide sequencing for data-independent acquisition mass spectrometry.

Shiva Ebrahimi, Xuan Guo
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Abstract

Tandem mass spectrometry (MS/MS) stands as the predominant high-throughput technique for comprehensively analyzing protein content within biological samples. This methodology is a cornerstone driving the advancement of proteomics. In recent years, substantial strides have been made in Data-Independent Acquisition (DIA) strategies, facilitating impartial and non-targeted fragmentation of precursor ions. The DIA-generated MS/MS spectra present a formidable obstacle due to their inherent high multiplexing nature. Each spectrum encapsulates fragmented product ions originating from multiple precursor peptides. This intricacy poses a particularly acute challenge in de novo peptide/protein sequencing, where current methods are ill-equipped to address the multiplexing conundrum. In this paper, we introduce Casanovo-DIA, a deep-learning model based on transformer architecture. It deciphers peptide sequences from DIA mass spectrometry data. Our results show significant improvements over existing STOA methods, including DeepNovo-DIA and PepNet. Casanovo-DIA enhances precision by 15.14% to 34.8%, recall by 11.62% to 31.94% at the amino acid level, and boosts precision by 59% to 81.36% at the peptide level. Integrating DIA data and our Casanovo-DIA model holds considerable promise to uncover novel peptides and more comprehensive profiling of biological samples. Casanovo-DIA is freely available under the GNU GPL license at https://github.com/Biocomputing-Research-Group/Casanovo-DIA.

基于变压器的从头肽测序,用于数据独立采集质谱。
串联质谱(MS/MS)是全面分析生物样本中蛋白质含量的主要高通量技术。这种方法是推动蛋白质组学发展的基石。近年来,数据独立获取(DIA)策略取得了长足进步,促进了前体离子的公正和非靶向碎裂。由于其固有的高复用性,DIA 生成的 MS/MS 图谱是一个巨大的障碍。每个谱图都包含来自多个前体肽的碎片产物离子。这种复杂性给肽/蛋白质的从头测序带来了特别严峻的挑战,而目前的测序方法还不足以解决多路复用的难题。在本文中,我们介绍了基于变压器架构的深度学习模型 Casanovo-DIA。它能从 DIA 质谱数据中解读肽序列。我们的研究结果表明,与现有的 STOA 方法(包括 DeepNovo-DIA 和 PepNet)相比,Casanovo-DIA 有了明显的改进。在氨基酸水平上,Casano-DIA 的精确度提高了 15.14% 至 34.8%,召回率提高了 11.62% 至 31.94%,在肽水平上,精确度提高了 59% 至 81.36%。将 DIA 数据与我们的 Casanovo-DIA 模型相结合,有望发现新的肽段,并对生物样本进行更全面的分析。Casanovo-DIA 在 GNU GPL 许可证下免费提供,网址为 https://github.com/Biocomputing-Research-Group/Casanovo-DIA。
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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