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Performance of computational methods for the evaluation of pericentriolar material 1 missense variants in CAGI‐5
Authors:Alexander Miguel Monzon  Marco Carraro  Luigi Chiricosta  Francesco Reggiani  James Han  Kivilcim Ozturk  Yanran Wang  Maximilian Miller  Yana Bromberg  Emidio Capriotti  Castrense Savojardo  Giulia Babbi  Pier L Martelli  Rita Casadio  Panagiotis Katsonis  Olivier Lichtarge  Hannah Carter  Maria Kousi  Nicholas Katsanis  Gaia Andreoletti  John Moult  Steven E Brenner  Carlo Ferrari  Emanuela Leonardi  Silvio C E Tosatto
Abstract:The CAGI‐5 pericentriolar material 1 (PCM1) challenge aimed to predict the effect of 38 transgenic human missense mutations in the PCM1 protein implicated in schizophrenia. Participants were provided with 16 benign variants (negative controls), 10 hypomorphic, and 12 loss of function variants. Six groups participated and were asked to predict the probability of effect and standard deviation associated to each mutation. Here, we present the challenge assessment. Prediction performance was evaluated using different measures to conclude in a final ranking which highlights the strengths and weaknesses of each group. The results show a great variety of predictions where some methods performed significantly better than others. Benign variants played an important role as negative controls, highlighting predictors biased to identify disease phenotypes. The best predictor, Bromberg lab, used a neural‐network‐based method able to discriminate between neutral and non‐neutral single nucleotide polymorphisms. The CAGI‐5 PCM1 challenge allowed us to evaluate the state of the art techniques for interpreting the effect of novel variants for a difficult target protein.
Keywords:bioinformatics tools  community challenge  critical assessment  effect prediction  missense mutations  variant interpretation
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