An approach to assessing peptide mass spectral quality without prior information Online publication date: Mon, 08-Sep-2008
by Fang-Xiang Wu, Jiarui Ding, Guy G. Poirier
International Journal of Functional Informatics and Personalised Medicine (IJFIPM), Vol. 1, No. 2, 2008
Abstract: This paper proposes an approach to assessing the quality of tandem mass spectra without any prior information. The proposed approach includes: filtering noises from the experimental mass spectra and extracting the peaks; mapping each spectrum into a feature vector which describes the quality of spectra; classifying spectra into clusters by using the mean-shift clustering; learning a classifier using the two clusters with the extreme means; assessing all spectra by using the trained classifier. Computational experiments illustrate that the proposed approach can eliminate majority of poor quality spectra while losing very minority of high quality spectra.
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