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Title: Use of artificial neural networks for the accurate prediction of peptide liquid chromatography elution times in proteome analyses

Abstract

The use of artificial neural networks (ANNs) is described for predicting the reversed-phase liquid chromatography retention times of peptides enzymatically digested from proteome-wide proteins. In order to enable the comparison of the numerous LC-MS data sets a genetic algorithm was developed to normalize the peptide retention data into a range (from 0 to 1), improving the peptide elution time reproducibility to about 1%. The network developed in this study was based on amino acid residue composition and consists of 20 input nodes, 2 hidden nodes and 1 output node. A data set of about 7000 confidently identified peptides from the microorganism Deinococcus radiodurans was used for the training of the ANN. The ANN was then used to predict the elution times for another set of 5200 peptides tentatively identified by MS/MS from a different microorganism (Shewanella oneidensis). The model was found to predict the peptides of elution time with up to 54 amino acid residues (the longest peptide identified after tryptic hydrolysis of S. oneidensis) with an average accuracy of ~3%. This predictive capability was then used to distinguish with high confidence isobar peptides otherwise indistinguishable by accurate mass measurements as well as to uncover peptide misidentifications. Thus, integration ofmore » ANN peptide elution time prediction in the proteomic research will increase both the number of protein identifications and their confidence.« less

Authors:
; ; ; ; ; ; ; ; ; ;
Publication Date:
Research Org.:
Pacific Northwest National Lab. (PNNL), Richland, WA (United States)
Sponsoring Org.:
USDOE
OSTI Identifier:
15010265
Report Number(s):
PNNL-SA-37767
KC0304000
DOE Contract Number:  
AC05-76RL01830
Resource Type:
Journal Article
Journal Name:
Analytical Chemistry, 75(5):1039-1048
Additional Journal Information:
Journal Name: Analytical Chemistry, 75(5):1039-1048
Country of Publication:
United States
Language:
English
Subject:
59 BASIC BIOLOGICAL SCIENCES

Citation Formats

Petritis, Konstantinos, Kangas, Lars J, Ferguson, Patrick L, Anderson, Gordon A, Pasa-Tolic, Liljiana, Lipton, Mary S, Auberry, Kenneth J, Strittmatter, Eric F, Shen, Yufeng, Zhao, Rui, and Smith, Richard D. Use of artificial neural networks for the accurate prediction of peptide liquid chromatography elution times in proteome analyses. United States: N. p., 2003. Web. doi:10.1021/ac0205154.
Petritis, Konstantinos, Kangas, Lars J, Ferguson, Patrick L, Anderson, Gordon A, Pasa-Tolic, Liljiana, Lipton, Mary S, Auberry, Kenneth J, Strittmatter, Eric F, Shen, Yufeng, Zhao, Rui, & Smith, Richard D. Use of artificial neural networks for the accurate prediction of peptide liquid chromatography elution times in proteome analyses. United States. https://doi.org/10.1021/ac0205154
Petritis, Konstantinos, Kangas, Lars J, Ferguson, Patrick L, Anderson, Gordon A, Pasa-Tolic, Liljiana, Lipton, Mary S, Auberry, Kenneth J, Strittmatter, Eric F, Shen, Yufeng, Zhao, Rui, and Smith, Richard D. Sun . "Use of artificial neural networks for the accurate prediction of peptide liquid chromatography elution times in proteome analyses". United States. https://doi.org/10.1021/ac0205154.
@article{osti_15010265,
title = {Use of artificial neural networks for the accurate prediction of peptide liquid chromatography elution times in proteome analyses},
author = {Petritis, Konstantinos and Kangas, Lars J and Ferguson, Patrick L and Anderson, Gordon A and Pasa-Tolic, Liljiana and Lipton, Mary S and Auberry, Kenneth J and Strittmatter, Eric F and Shen, Yufeng and Zhao, Rui and Smith, Richard D},
abstractNote = {The use of artificial neural networks (ANNs) is described for predicting the reversed-phase liquid chromatography retention times of peptides enzymatically digested from proteome-wide proteins. In order to enable the comparison of the numerous LC-MS data sets a genetic algorithm was developed to normalize the peptide retention data into a range (from 0 to 1), improving the peptide elution time reproducibility to about 1%. The network developed in this study was based on amino acid residue composition and consists of 20 input nodes, 2 hidden nodes and 1 output node. A data set of about 7000 confidently identified peptides from the microorganism Deinococcus radiodurans was used for the training of the ANN. The ANN was then used to predict the elution times for another set of 5200 peptides tentatively identified by MS/MS from a different microorganism (Shewanella oneidensis). The model was found to predict the peptides of elution time with up to 54 amino acid residues (the longest peptide identified after tryptic hydrolysis of S. oneidensis) with an average accuracy of ~3%. This predictive capability was then used to distinguish with high confidence isobar peptides otherwise indistinguishable by accurate mass measurements as well as to uncover peptide misidentifications. Thus, integration of ANN peptide elution time prediction in the proteomic research will increase both the number of protein identifications and their confidence.},
doi = {10.1021/ac0205154},
url = {https://www.osti.gov/biblio/15010265}, journal = {Analytical Chemistry, 75(5):1039-1048},
number = ,
volume = ,
place = {United States},
year = {2003},
month = {6}
}