| Literature DB >> 28370845 |
Qifang Xu1, Qingling Tang2, Panagiotis Katsonis3, Olivier Lichtarge3, David Jones4, Samuele Bovo5, Giulia Babbi5, Pier L Martelli5, Rita Casadio5, Gyu Rie Lee6, Chaok Seok6, Aron W Fenton2, Roland L Dunbrack1.
Abstract
The Critical Assessment of Genome Interpretation (CAGI) is a global community experiment to objectively assess computational methods for predicting phenotypic impacts of genomic variation. One of the 2015-2016 competitions focused on predicting the influence of mutations on the allosteric regulation of human liver pyruvate kinase. More than 30 different researchers accessed the challenge data. However, only four groups accepted the challenge. Features used for predictions ranged from evolutionary constraints, mutant site locations relative to active and effector binding sites, and computational docking outputs. Despite the range of expertise and strategies used by predictors, the best predictions were marginally greater than random for modified allostery resulting from mutations. In contrast, several groups successfully predicted which mutations severely reduced enzymatic activity. Nonetheless, poor predictions of allostery stands in stark contrast to the impression left by more than 700 PubMed entries identified using the identifiers "computational + allosteric." This contrast highlights a specialized need for new computational tools and utilization of benchmarks that focus on allosteric regulation.Entities:
Keywords: CAGI experiment; allosteric effect; liver pyruvate kinase; missense mutation
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Year: 2017 PMID: 28370845 PMCID: PMC5561472 DOI: 10.1002/humu.23222
Source DB: PubMed Journal: Hum Mutat ISSN: 1059-7794 Impact factor: 4.878