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Probabilistic Mixture Regression Models for Alignment of LC-MS Data

Published: 01 September 2011 Publication History

Abstract

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.

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cover image IEEE/ACM Transactions on Computational Biology and Bioinformatics
IEEE/ACM Transactions on Computational Biology and Bioinformatics  Volume 8, Issue 5
September 2011
285 pages

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IEEE Computer Society Press

Washington, DC, United States

Publication History

Published: 01 September 2011
Published in TCBB Volume 8, Issue 5

Author Tags

  1. Liquid chromatography
  2. expectation-maximization.
  3. mass spectrometry
  4. mixed-regression model

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