Relative quantification of proteins and post-translational modifications in proteomic experiments with shared peptides: a weight-based approach.

Mateusz Staniak, Ting Huang, Amanda M Figueroa-Navedo, Devon Kohler, Meena Choi, Trent Hinkle, Tracy Kleinheinz, Robert Blake, Christopher M Rose, Yingrong Xu, Pierre M Jean Beltran, Liang Xue, Małgorzata Bogdan, Olga Vitek
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Abstract

Motivation: Bottom-up mass spectrometry-based proteomics studies changes in protein abundance and structure across conditions. Since the currency of these experiments are peptides, i.e. subsets of protein sequences that carry the quantitative information, conclusions at a different level must be computationally inferred. The inference is particularly challenging in situations where the peptides are shared by multiple proteins or post-translational modifications. While many approaches infer the underlying abundances from unique peptides, there is a need to distinguish the quantitative patterns when peptides are shared.

Results: We propose a statistical approach for estimating protein abundances, as well as site occupancies of post-translational modifications, based on quantitative information from shared peptides. The approach treats the quantitative patterns of shared peptides as convex combinations of abundances of individual proteins or modification sites, and estimates the abundance of each source in a sample together with the weights of the combination. In simulation-based evaluations, the proposed approach improved the precision of estimated fold changes between conditions. We further demonstrated the practical utility of the approach in experiments with diverse biological objectives, ranging from protein degradation and thermal proteome stability, to changes in protein post-translational modifications.

Availability and implementation: The approach is implemented in an open-source R package MSstatsWeightedSummary. The package is currently available at https://github.com/Vitek-Lab/MSstatsWeightedSummary (doi: 10.5281/zenodo.14662989). Code required to reproduce the results presented in this article can be found in a repository https://github.com/mstaniak/MWS_reproduction (doi: 10.5281/zenodo.14656053).

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共享肽的蛋白质组学实验中蛋白质的相对定量和翻译后修饰:基于重量的方法。
动机:自下而上的基于质谱的蛋白质组学研究不同条件下蛋白质丰度和结构的变化。由于这些实验的流通是多肽,即携带定量信息的蛋白质序列子集,因此必须通过计算推断出不同水平的结论。在多肽被多种蛋白质或翻译后修饰共享的情况下,这种推断尤其具有挑战性。虽然许多方法从独特的多肽推断潜在的丰度,但有必要区分多肽共享时的定量模式。结果:我们提出了一种统计方法来估计蛋白质丰度,以及基于共享肽的定量信息的翻译后修饰的位点占用。该方法将共享肽的定量模式视为单个蛋白质或修饰位点丰度的凸组合,并估计样品中每个来源的丰度以及组合的权重。在基于仿真的评估中,提出的方法提高了估计条件之间折叠变化的精度。我们进一步证明了该方法在多种生物学目的实验中的实际效用,从蛋白质降解和热蛋白质组稳定性到蛋白质翻译后修饰的变化。可用性:该方法在开源R包MSstatsWeightedSummary中实现。该软件包目前可从https://github.com/Vitek-Lab/MSstatsWeightedSummary (doi:10.5281/zenodo.14662989)获得。可以在存储库https://github.com/mstaniak/MWS_reproduction (doi:10.5281/zenodo.14656053)中找到重现本文中给出的结果所需的代码。补充信息:补充数据可在生物信息学在线获取。
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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