Bayesian identification of protein differential expression in multi-group isobaric labelled mass spectrometry data.

Pub Date : 2014-10-01 DOI:10.1515/sagmb-2012-0066
Howsun Jow, Richard J Boys, Darren J Wilkinson
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Abstract

In this paper we develop a Bayesian statistical inference approach to the unified analysis of isobaric labelled MS/MS proteomic data across multiple experiments. An explicit probabilistic model of the log-intensity of the isobaric labels' reporter ions across multiple pre-defined groups and experiments is developed. This is then used to develop a full Bayesian statistical methodology for the identification of differentially expressed proteins, with respect to a control group, across multiple groups and experiments. This methodology is implemented and then evaluated on simulated data and on two model experimental datasets (for which the differentially expressed proteins are known) that use a TMT labelling protocol.

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多组等位标记质谱数据中蛋白质差异表达的贝叶斯鉴定。
在本文中,我们开发了一种贝叶斯统计推断方法,用于统一分析跨多个实验的等位标记 MS/MS 蛋白质组学数据。我们建立了一个明确的概率模型,用于分析多个预定义组和实验中的等位标记报告离子的对数强度。然后,利用该模型开发出一种完整的贝叶斯统计方法,用于在多个组和实验中识别相对于对照组的差异表达蛋白质。在使用 TMT 标记方案的模拟数据和两个模型实验数据集(已知差异表达蛋白质)上实施并评估了该方法。
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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