A Protein Identification Algorithm Optimization for Mass Spectrometry Data using Deep Learning | IEEE Conference Publication | IEEE Xplore

A Protein Identification Algorithm Optimization for Mass Spectrometry Data using Deep Learning


Abstract:

Protein sequence database search is one of the most commonly used methods for protein identification in shotgun proteomics. In tradition, searching a protein sequence dat...Show More

Abstract:

Protein sequence database search is one of the most commonly used methods for protein identification in shotgun proteomics. In tradition, searching a protein sequence database is usually required to construct the theoretical spectrum for each peptide at first, which only considers the information of mass-to-charge ratio at present. However, the information related to isotope peak intensity is neglected. Thanks to the rapid development of artificial intelligence technique in recent years, deep learning-based MS/MS spectrum prediction tools have showed a high accuracy and great potentials to improve the sensitivity and accuracy of protein sequence database searching. In this study, we used a deep learning model (pDeep2) to predict the theoretical mass spectrum of all peptides and applied it to a database searching tool (DeepNovo), thus improving the sensitivity and accuracy of peptide identification.
Date of Conference: 24-26 April 2020
Date Added to IEEE Xplore: 02 July 2020
ISBN Information:
Conference Location: Shenzhen, China

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