We present UniSpec, an attention-driven deep neural network designed to predict comprehensive collision-induced fragmentation spectra, thereby improving peptide identification in shotgun proteomics. Utilizing a training data set of 1.8 million unique high-quality tandem mass spectra (MS2) from 0.8 million unique peptide ions, UniSpec learned with a peptide fragmentation dictionary encompassing 7919 fragment peaks. Among these, 5712 are neutral loss peaks, with 2310 corresponding to modification-specific neutral losses. Remarkably, UniSpec can predict 73%–77% of fragment intensities based on our NIST reference library spectra, a significant leap from the 35%–45% coverage of only b and y ions. Comparative studies with Prosit elucidate that wh...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Protein inference, the identification of the protein set that is the origin of a given peptide profi...
Mass spectrometry-based proteomics generates vast amounts of signal data that require computational ...
We present UniSpec, an attention-driven deep neural network designed to predict comprehensive collis...
The size and shape of peptide ions in the gas phase are an under-explored dimension for mass spectro...
Machine learning and in particular deep learning (DL) are increasingly important in mass spectrometr...
Proteomics is being transformed by deep learning methods that predict peptide fragmentation spectra....
Introduction Despite an explosion of publicly available data in mass spectrometry proteomics reposi...
Mass spectrometry-based proteomics provides a holistic snapshot of the entire protein set of living ...
INTRODUCTION Accurate MS2 spectrum predictions enable drastic improvements in peptide identification...
This Zenodo record contains the dataset and model weights for "Deep learning-driven fragment ion ser...
Peptide fragmentation spectra are routinely predicted in the interpretation of mass-spectrometry-bas...
Motivation: Tandem mass spectrometry provides the means to match mass spectrometry signal observatio...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Protein inference, the identification of the protein set that is the origin of a given peptide profi...
Mass spectrometry-based proteomics generates vast amounts of signal data that require computational ...
We present UniSpec, an attention-driven deep neural network designed to predict comprehensive collis...
The size and shape of peptide ions in the gas phase are an under-explored dimension for mass spectro...
Machine learning and in particular deep learning (DL) are increasingly important in mass spectrometr...
Proteomics is being transformed by deep learning methods that predict peptide fragmentation spectra....
Introduction Despite an explosion of publicly available data in mass spectrometry proteomics reposi...
Mass spectrometry-based proteomics provides a holistic snapshot of the entire protein set of living ...
INTRODUCTION Accurate MS2 spectrum predictions enable drastic improvements in peptide identification...
This Zenodo record contains the dataset and model weights for "Deep learning-driven fragment ion ser...
Peptide fragmentation spectra are routinely predicted in the interpretation of mass-spectrometry-bas...
Motivation: Tandem mass spectrometry provides the means to match mass spectrometry signal observatio...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Targeted mass spectrometry has become the method of choice to gain absolute quantification informati...
Protein inference, the identification of the protein set that is the origin of a given peptide profi...
Mass spectrometry-based proteomics generates vast amounts of signal data that require computational ...