Title :
Faster Mass Spectrometry-Based Protein Inference: Junction Trees Are More Efficient than Sampling and Marginalization by Enumeration
Author :
Serang, Oliver ; Noble, William Stafford
Author_Institution :
Dept. of Pathology, Children´´s Hosp. Boston, Boston, MA, USA
Abstract :
The problem of identifying the proteins in a complex mixture using tandem mass spectrometry can be framed as an inference problem on a graph that connects peptides to proteins. Several existing protein identification methods make use of statistical inference methods for graphical models, including expectation maximization, Markov chain Monte Carlo, and full marginalization coupled with approximation heuristics. We show that, for this problem, the majority of the cost of inference usually comes from a few highly connected subgraphs. Furthermore, we evaluate three different statistical inference methods using a common graphical model, and we demonstrate that junction tree inference substantially improves rates of convergence compared to existing methods. The python code used for this paper is available at http://noble.gs.washington.edu/proj/fido.
Keywords :
Markov processes; Monte Carlo methods; biology computing; expectation-maximisation algorithm; inference mechanisms; mass spectroscopic chemical analysis; molecular biophysics; proteins; trees (mathematics); Markov chain Monte Carlo model; approximation heuristics; connected subgraphs; expectation maximization; graphical models; junction tree inference; marginalization; mass spectrometry-based protein inference; protein identification method; python code; statistical inference method; tandem mass spectrometry; Bioinformatics; Complexity theory; Computational modeling; Databases; Junctions; Peptides; Proteins; Bayesian inference.; Mass spectrometry; graphical models; protein identification; Algorithms; Markov Chains; Mass Spectrometry; Monte Carlo Method; Proteins;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2012.26