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Using Attention-UNet Models to Predict Protein Contact Maps.

V A JisnaAbhaysing Pawar AjayP B Jayaraj
Published in: Journal of computational biology : a journal of computational molecular cell biology (2024)
Proteins are essential to life, and understanding their intrinsic roles requires determining their structure. The field of proteomics has opened up new opportunities by applying deep learning algorithms to large databases of solved protein structures. With the availability of large data sets and advanced machine learning methods, the prediction of protein residue interactions has greatly improved. Protein contact maps provide empirical evidence of the interacting residue pairs within a protein sequence. Template-free protein structure prediction systems rely heavily on this information. This article proposes UNet-CON, an attention-integrated UNet architecture, trained to predict residue-residue contacts in protein sequences. With the predicted contacts being more accurate than state-of-the-art methods on the PDB25 test set, the model paves the way for the development of more powerful deep learning algorithms for predicting protein residue interactions.
Keyphrases
  • machine learning
  • deep learning
  • amino acid
  • protein protein
  • binding protein
  • healthcare
  • high resolution
  • artificial intelligence
  • working memory
  • data analysis
  • solid phase extraction