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PredictSNP: Robust and Accurate Consensus Classifier for Prediction of Disease-Related Mutations

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Listed:
  • Jaroslav Bendl
  • Jan Stourac
  • Ondrej Salanda
  • Antonin Pavelka
  • Eric D Wieben
  • Jaroslav Zendulka
  • Jan Brezovsky
  • Jiri Damborsky

Abstract

Single nucleotide variants represent a prevalent form of genetic variation. Mutations in the coding regions are frequently associated with the development of various genetic diseases. Computational tools for the prediction of the effects of mutations on protein function are very important for analysis of single nucleotide variants and their prioritization for experimental characterization. Many computational tools are already widely employed for this purpose. Unfortunately, their comparison and further improvement is hindered by large overlaps between the training datasets and benchmark datasets, which lead to biased and overly optimistic reported performances. In this study, we have constructed three independent datasets by removing all duplicities, inconsistencies and mutations previously used in the training of evaluated tools. The benchmark dataset containing over 43,000 mutations was employed for the unbiased evaluation of eight established prediction tools: MAPP, nsSNPAnalyzer, PANTHER, PhD-SNP, PolyPhen-1, PolyPhen-2, SIFT and SNAP. The six best performing tools were combined into a consensus classifier PredictSNP, resulting into significantly improved prediction performance, and at the same time returned results for all mutations, confirming that consensus prediction represents an accurate and robust alternative to the predictions delivered by individual tools. A user-friendly web interface enables easy access to all eight prediction tools, the consensus classifier PredictSNP and annotations from the Protein Mutant Database and the UniProt database. The web server and the datasets are freely available to the academic community at http://loschmidt.chemi.muni.cz/predictsnp.

Suggested Citation

  • Jaroslav Bendl & Jan Stourac & Ondrej Salanda & Antonin Pavelka & Eric D Wieben & Jaroslav Zendulka & Jan Brezovsky & Jiri Damborsky, 2014. "PredictSNP: Robust and Accurate Consensus Classifier for Prediction of Disease-Related Mutations," PLOS Computational Biology, Public Library of Science, vol. 10(1), pages 1-11, January.
  • Handle: RePEc:plo:pcbi00:1003440
    DOI: 10.1371/journal.pcbi.1003440
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    References listed on IDEAS

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    1. S. le Cessie & J. C. van Houwelingen, 1992. "Ridge Estimators in Logistic Regression," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 41(1), pages 191-201, March.
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    1. Petr Popov & Ilya Bizin & Michael Gromiha & Kulandaisamy A & Dmitrij Frishman, 2019. "Prediction of disease-associated mutations in the transmembrane regions of proteins with known 3D structure," PLOS ONE, Public Library of Science, vol. 14(7), pages 1-13, July.
    2. Abhishek Niroula & Mauno Vihinen, 2019. "How good are pathogenicity predictors in detecting benign variants?," PLOS Computational Biology, Public Library of Science, vol. 15(2), pages 1-17, February.

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