scholarly journals A comparison of three liquid chromatography (LC) retention time prediction models

Talanta ◽  
2018 ◽  
Vol 182 ◽  
pp. 371-379 ◽  
Author(s):  
Andrew D. McEachran ◽  
Kamel Mansouri ◽  
Seth R. Newton ◽  
Brandiese E.J. Beverly ◽  
Jon R. Sobus ◽  
...  
2006 ◽  
Vol 78 (22) ◽  
pp. 7770-7777 ◽  
Author(s):  
Alexander V. Gorshkov ◽  
Irina A. Tarasova ◽  
Victor V. Evreinov ◽  
Mikhail M. Savitski ◽  
Michael L. Nielsen ◽  
...  

PROTEOMICS ◽  
2010 ◽  
Vol 10 (19) ◽  
pp. 3458-3468 ◽  
Author(s):  
Tatiana Yu Perlova ◽  
Anton A. Goloborodko ◽  
Yelena Margolin ◽  
Marina L. Pridatchenko ◽  
Irina A. Tarasova ◽  
...  

2018 ◽  
Vol 90 (18) ◽  
pp. 10881-10888 ◽  
Author(s):  
Chunwei Ma ◽  
Yan Ren ◽  
Jiarui Yang ◽  
Zhe Ren ◽  
Huanming Yang ◽  
...  

Author(s):  
Robbin Bouwmeester ◽  
Ralf Gabriels ◽  
Niels Hulstaert ◽  
Lennart Martens ◽  
Sven Degroeve

AbstractThe inclusion of peptide retention time prediction promises to remove peptide identification ambiguity in complex LC-MS identification workflows. However, due to the way peptides are encoded in current prediction models, accurate retention times cannot be predicted for modified peptides. This is especially problematic for fledgling open modification searches, which will benefit from accurate retention time prediction for modified peptides to reduce identification ambiguity. We here therefore present DeepLC, a novel deep learning peptide retention time predictor utilizing a new peptide encoding based on atomic composition that allows the retention time of (previously unseen) modified peptides to be predicted accurately. We show that DeepLC performs similarly to current state-of-the-art approaches for unmodified peptides, and, more importantly, accurately predicts retention times for modifications not seen during training. DeepLC is available under the permissive Apache 2.0 open source license and comes with a user-friendly graphical user interface, as well as a Python package on PyPI, Bioconda, and BioContainers for effortless workflow integration.


2021 ◽  
Author(s):  
Lennart Martens ◽  
Robbin Bouwmeester ◽  
Ralf Gabriels ◽  
Niels Hulstaert ◽  
Sven Degroeve

Abstract The inclusion of peptide retention time prediction promises to remove peptide identification ambiguity in complex LC-MS identification workflows. However, due to the way peptides are encoded in current prediction models, accurate retention times cannot be predicted for modified peptides. This is especially problematic for fledgling open modification searches, which will benefit from accurate retention time prediction for modified peptides to reduce identification ambiguity. We here therefore present DeepLC, a novel deep learning peptide retention time predictor utilizing a new peptide encoding based on atomic composition that allows the retention time of (previously unseen) modified peptides to be predicted accurately. We show that DeepLC performs similarly to current state-of-the-art approaches for unmodified peptides, and, more importantly, accurately predicts retention times for modifications not seen during training. Moreover, we show that DeepLC’s ability to predict retention times for any modification enables potentially incorrect identifications to be flagged in an open modification search of CD8-positive T-cell proteome data. DeepLC is available under the permissive Apache 2.0 open source license and comes with a user-friendly graphical user interface, as well as a Python package on PyPI, Bioconda, and BioContainers for effortless workflow integration.


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