4.8 Article

AlphaPeptDeep: a modular deep learning framework to predict peptide properties for proteomics

Journal

NATURE COMMUNICATIONS
Volume 13, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41467-022-34904-3

Keywords

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Funding

  1. Max-Planck Society for the Advancement of Science
  2. Bavarian State Ministry of Health andCare through the research project DigiMed Bayern
  3. Swiss National Science Foundation [P400PB_191046]
  4. Novo Nordisk Foundation [NNF14CC0001]
  5. European Union's Horizon 2020 research and innovation programme [874839 ISLET]
  6. Swiss National Science Foundation (SNF) [P400PB_191046] Funding Source: Swiss National Science Foundation (SNF)

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Machine learning and deep learning are becoming increasingly important in MS-based proteomics. AlphaPeptDeep is a modular Python framework built on PyTorch that can learn and predict peptide properties. It features a model shop that allows non-specialists to create models easily. AlphaPeptDeep can also predict sequence-based properties and performs well in predicting retention time, collisional cross sections, and fragment intensities.
Machine learning and in particular deep learning (DL) are increasingly important in mass spectrometry (MS)-based proteomics. Recent DL models can predict the retention time, ion mobility and fragment intensities of a peptide just from the amino acid sequence with good accuracy. However, DL is a very rapidly developing field with new neural network architectures frequently appearing, which are challenging to incorporate for proteomics researchers. Here we introduce AlphaPeptDeep, a modular Python framework built on the PyTorch DL library that learns and predicts the properties of peptides (https://github.com/MannLabs/alphapeptdeep). It features a model shop that enables non-specialists to create models in just a few lines of code. AlphaPeptDeep represents post-translational modifications in a generic manner, even if only the chemical composition is known. Extensive use of transfer learning obviates the need for large data sets to refine models for particular experimental conditions. The AlphaPeptDeep models for predicting retention time, collisional cross sections and fragment intensities are at least on par with existing tools. Additional sequence-based properties can also be predicted by AlphaPeptDeep, as demonstrated with a HLA peptide prediction model to improve HLA peptide identification for data-independent acquisition (https://github.com/MannLabs/PeptDeep-HLA).

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