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Joint Bayesian hierarchical inversion-classification and application in proteomics

机译:联合贝叶斯层次倒置分类法及其在蛋白质组学中的应用

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In this paper, we combine inverse problem and classification for LC-MS data in a joint Bayesian context, given a set of biomarkers and the statistical characteristics of the biological classes. The data acquisition is modelled in a hierarchical way, including random decomposition of proteins into peptides and peptides into ions associated to peaks on the LC-MS measurement. A Bayesian global inversion, based on the hierarchical model for the direct problem, enables to take into account the biological and technological variabilities from those random processes and to estimate the parameters efficiently. We describe the statistical theoretical framework including the hierarchical direct model, the prior and posterior distributions and the estimators for the involved parameters. We resort to the MCMC algorithm and give preliminary results on a simulated data set.
机译:在本文中,我们结合了贝叶斯联合上下文中的LC-MS数据的反问题和分类,给出了一组生物标记和生物学类别的统计特征。数据采集​​以分层方式建模,包括将蛋白质随机分解为肽,将肽随机分解为与LC-MS测量峰相关的离子。贝叶斯全局反演基于直接问题的层次模型,可以考虑到来自那些随机过程的生物学和技术变异,并可以有效地估计参数。我们描述了统计理论框架,包括层次直接模型,先验和后验分布以及所涉及参数的估计量。我们诉诸于MCMC算法,并在模拟数据集上给出了初步结果。

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