PrePPI: A Structure Informed Proteome-wide Database of Protein–Protein Interactions
[Display omitted] •PrePPI is a structure-informed database of predicted protein–protein interactions.•PrePPI uses machine learning to combine structural and non-structural clues.•PrePPI has been extensively validated.•PrePPI’s database contains ∼875 K predicted interactions for the human proteome.•P...
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Veröffentlicht in: | Journal of molecular biology 2023-07, Vol.435 (14), p.168052-168052, Article 168052 |
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Sprache: | eng |
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•PrePPI is a structure-informed database of predicted protein–protein interactions.•PrePPI uses machine learning to combine structural and non-structural clues.•PrePPI has been extensively validated.•PrePPI’s database contains ∼875 K predicted interactions for the human proteome.•PrePPI is unique in its use of structure to make proteome-wide predictions.
We present an updated version of the Predicting Protein-Protein Interactions (PrePPI) webserver which predicts PPIs on a proteome-wide scale. PrePPI combines structural and non-structural evidence within a Bayesian framework to compute a likelihood ratio (LR) for essentially every possible pair of proteins in a proteome; the current database is for the human interactome. The structural modeling (SM) component is derived from template-based modeling and its application on a proteome-wide scale is enabled by a unique scoring function used to evaluate a putative complex. The updated version of PrePPI leverages AlphaFold structures that are parsed into individual domains. As has been demonstrated in earlier applications, PrePPI performs extremely well as measured by receiver operating characteristic curves derived from testing on E. coli and human protein–protein interaction (PPI) databases. A PrePPI database of ∼1.3 million human PPIs can be queried with a webserver application that comprises multiple functionalities for examining query proteins, template complexes, 3D models for predicted complexes, and related features (https://honiglab.c2b2.columbia.edu/PrePPI). PrePPI is a state-of-the-art resource that offers an unprecedented structure-informed view of the human interactome. |
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ISSN: | 0022-2836 1089-8638 1089-8638 |
DOI: | 10.1016/j.jmb.2023.168052 |