Prediction of Protein‐Protein Interactions

@article{Kotlyar2017PredictionOP,
  title={Prediction of Protein‐Protein Interactions},
  author={M. Kotlyar and Andrea E. M. Rossos and I. Jurisica},
  journal={Current Protocols in Bioinformatics},
  year={2017},
  volume={60},
  pages={8.2.1 - 8.2.14}
}
The authors provide an overview of physical protein‐protein interaction prediction, covering the main strategies for predicting interactions, approaches for assessing predictions, and online resources for accessing predictions. This unit focuses on the main advancements in each of these areas over the last decade. The methods and resources that are presented here are not an exhaustive set, but characterize the current state of the field—highlighting key challenges and achievements. © 2017 by… Expand

Topics from this paper

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TLDR
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TLDR
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In silico Approaches for the Design and Optimization of Interfering Peptides Against Protein–Protein Interactions
TLDR
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TLDR
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