mvPPT mvPPT (Pathogenicity Prediction Tool for missense variants), a highly sensitive and accurate missense variant classifier based on gradient boosting.

Introduction

Next generation sequencing technologies both boost the discovery of variants in the human genome and exacerbate the challenges of pathogenic variant identification. In this study, we developed mvPPT (Pathogenicity Prediction Tool for missense variants), a highly sensitive and accurate missense variant classifier based on gradient boosting. MvPPT adopts high-confidence training sets with a wide spectrum of variant profiles, and extracts three categories of features, including scores from existing prediction tools, allele, amino acid and genotype frequencies, and genomic context. Compared with established predictors, mvPPT achieved superior performance in all test sets, regardless of data source. In addition, our study also provides guidance for training set and feature selection strategies, as well as reveals highly relevant features, which may further provide clues for clinical diagnosis and insights for variant pathogenicity prediction.

Publications

  1. MvPPT: a highly efficient and sensitive pathogenicity prediction tool for missense variants
    Shiyuan Tong, Ke Fan, Zai-Wei Zhou, Lin-Yun Liu, Shu-Qing Zhang, Yinghui Fu, Guang-Zhong Wang, Ying Zhu, Yong-Chun Yu, 2022/1/7 -

Credits

  1. Shi-Yuan Tong tongshiyuan@foxmail.com
    Developer

    Institute of Brain Science, Fudan University, China

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Summary
AccessionBT007292
Tool TypeApplication
CategoryVariant effect prediction
PlatformsLinux/Unix
TechnologiesPython3
User InterfaceWebpage
Latest Release1.0 (January 9, 2022)
Download Count709
Submitted ByShi-Yuan Tong
Fundings

This work is supported by the Shanghai Natural Science Foundation [20ZR1403800 to to Y.F.]; the National Natural Science Foundation of China [31900476 and 82071259 to Y.Z., 31930044 and 31725012 to Y.-C.Y.]; the Shanghai Municipal Science and Technology Major Project [2018SHZDZX01] and ZJLab; the Foundation of Shanghai Municipal Education Commission [2019-01-07-00-07-E00062 to Y.-C.Y.]; and the Collaborative Innovation Program of Shanghai Municipal Health Commission [2020CXJQ01 to Y.-C.Y.].