利用预训练的深度蛋白质语言模型预测多肽碰撞截面

Ayano Nakai-Kasai, Kosuke Ogata, Yasushi Ishihama, Toshiyuki Tanaka
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引用次数: 0

摘要

肽离子的碰撞截面(CCS)是基于液相色谱/串联质谱(IMS)的蛋白质组学的一个重要分离维度,其准确预测是高级蛋白质组学工作流程的基础。本文介绍了新的实验数据和一种新的预测模型,该模型适用于具有挑战性的 CCS 预测任务,包括往往具有较高电荷状态的长肽。所提出的模型基于预训练的深度蛋白质语言模型。传统的预测模型需要从头开始训练,而所提出的模型由于使用了预训练模型作为特征提取器,因此训练时间更短。新实验数据的实验结果表明,与传统方法相比,所提出的模型成功地大幅缩短了训练时间,同时保持了相同甚至更好的预测性能。我们的方法为以更绿色的方式预测蛋白质组液相色谱/串联质谱实验中的各种肽特性提供了可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Pretrained Deep Protein Language Model to Predict Peptide Collision Cross Section
Collision cross section (CCS) of peptide ions provides an important separation dimension in liquid chromatography/tandem mass spectrometry-based proteomics that incorporates ion mobility spectrometry (IMS), and its accurate prediction is the basis for advanced proteomics workflows. This paper describes novel experimental data and a novel prediction model for challenging CCS prediction tasks including longer peptides that tend to have higher charge states. The proposed model is based on a pretrained deep protein language model. While the conventional prediction model requires training from scratch, the proposed model enables training with less amount of time owing to the use of the pretrained model as a feature extractor. Results of experiments with the novel experimental data show that the proposed model succeeds in drastically reducing the training time while maintaining the same or even better prediction performance compared with the conventional method. Our approach presents the possibility of prediction in a greener manner of various peptide properties in proteomic liquid chromatography/tandem mass spectrometry experiments.
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