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A review of statistical methods for protein identification using tandem mass spectrometry
Journal article   Open access

A review of statistical methods for protein identification using tandem mass spectrometry

Oliver Serang and William Noble
Statistics and its interface, Vol.5(1), pp.3-20
01/01/2012
PMID: 22833779

Abstract

Life Sciences & Biomedicine Mathematical & Computational Biology Mathematics Mathematics, Interdisciplinary Applications Physical Sciences Science & Technology
Tandem mass spectrometry has emerged as a powerful tool for the characterization of complex protein samples, an increasingly important problem in biology. The effort to efficiently and accurately perform inference on data from tandem mass spectrometry experiments has resulted in several statistical methods. We use a common framework to describe the predominant methods and discuss them in detail. These methods are classified using the following categories: set cover methods, iterative methods, and Bayesian methods. For each method, we analyze and evaluate the outcome and methodology of published comparisons to other methods; we use this comparison to comment on the qualities and weaknesses, as well as the overall utility, of all methods. We discuss the similarities between these methods and suggest directions for the field that would help unify these similar assumptions in a more rigorous manner and help enable efficient and reliable protein inference.
url
https://doi.org/10.4310/sii.2012.v5.n1.a2View
Published (Version of record) Open

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