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Probabilistic Mixture Regression Models for Alignment of LC-MS Data

机译:用于LC-MS数据比对的概率混合回归模型

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摘要

A novel framework of a probabilistic mixture regression model (PMRM) is presented for alignment of liquid chromatography-mass spectrometry (LC-MS) data with respect to retention time (RT) points. The expectation maximization algorithm is used to estimate the joint parameters of spline-based mixture regression models and prior transformation density models. The latter accounts for the variability in RT points and peak intensities. The applicability of PMRM for alignment of LC-MS data is demonstrated through three data sets. The performance of PMRM is compared with other alignment approaches including dynamic time warping, correlation optimized warping, and continuous profile model in terms of coefficient variation of replicate LC-MS runs and accuracy in detecting differentially abundant peptides/proteins.
机译:提出了一种新的概率混合回归模型(PMRM)框架,用于液相色谱-质谱(LC-MS)数据相对于保留时间(RT)点的对齐。期望最大化算法用于估计基于样条的混合回归模型和先前转换密度模型的联合参数。后者说明了RT点和峰强度的变化。通过三个数据集证明了PMRM在LC-MS数据比对中的适用性。将PMRM的性能与其他比对方法进行了比较,这些方法包括动态时间规整,相关优化的规整和连续谱模型,这些都取决于复制LC-MS运行的系数变化以及检测差异丰富的肽/蛋白质的准确性。

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