DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmodified peptides as well as peptides with previously unseen modifications. The inclusion of peptide retention time prediction promises to remove peptide identification ambiguity in complex liquid chromatography-mass spectrometry 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 searches, which will benefit from accurate retention time prediction for modified peptides to reduce identification ambiguity. We present DeepLC, a deep learning peptide retention time predictor using pe...
Abstract: Crosslinking mass spectrometry (Crosslinking MS) has developed into a robust technique th...
(LC-MS/MS) is a powerful tool in proteomics studies, but when peptide retention information is used ...
Abstract Background High-throughput peptide and protein identification technologies have benefited t...
DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmo...
The accuracy of peptide retention time (RT) prediction model in liquid chromatography (LC) is still ...
Retention time prediction of peptides in liquid chromatography has proven to be a valuable tool for ...
Code used to prepare the data sets, calibrate retention times, generate DeepLC models, make predicti...
Proteins are commonly identified through enzymatic digestion and generation of short sequence tags o...
Abstract Peptide identification in liquid chromatography-tandem mass spectrometry (LC-MS/MS) experim...
The DeepLC model 'full_hc_hela_hf_psms_aligned_1fd8363d9af9dcad3be7553c39396960.hdf5' taken from htt...
Background Liquid chromatography combined with tandem mass spectrometry is an important tool in pro...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecule...
Machine learning and in particular deep learning (DL) are increasingly important in mass spectrometr...
In bottom-up proteomics, peptide-spectrum matching is critical for peptide and protein identificatio...
High performance liquid chromatography (HPLC) has become one of the most efficient methods for the...
Abstract: Crosslinking mass spectrometry (Crosslinking MS) has developed into a robust technique th...
(LC-MS/MS) is a powerful tool in proteomics studies, but when peptide retention information is used ...
Abstract Background High-throughput peptide and protein identification technologies have benefited t...
DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmo...
The accuracy of peptide retention time (RT) prediction model in liquid chromatography (LC) is still ...
Retention time prediction of peptides in liquid chromatography has proven to be a valuable tool for ...
Code used to prepare the data sets, calibrate retention times, generate DeepLC models, make predicti...
Proteins are commonly identified through enzymatic digestion and generation of short sequence tags o...
Abstract Peptide identification in liquid chromatography-tandem mass spectrometry (LC-MS/MS) experim...
The DeepLC model 'full_hc_hela_hf_psms_aligned_1fd8363d9af9dcad3be7553c39396960.hdf5' taken from htt...
Background Liquid chromatography combined with tandem mass spectrometry is an important tool in pro...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecule...
Machine learning and in particular deep learning (DL) are increasingly important in mass spectrometr...
In bottom-up proteomics, peptide-spectrum matching is critical for peptide and protein identificatio...
High performance liquid chromatography (HPLC) has become one of the most efficient methods for the...
Abstract: Crosslinking mass spectrometry (Crosslinking MS) has developed into a robust technique th...
(LC-MS/MS) is a powerful tool in proteomics studies, but when peptide retention information is used ...
Abstract Background High-throughput peptide and protein identification technologies have benefited t...