Genome Medicine (Aug 2021)

X-CNV: genome-wide prediction of the pathogenicity of copy number variations

  • Li Zhang,
  • Jingru Shi,
  • Jian Ouyang,
  • Riquan Zhang,
  • Yiran Tao,
  • Dongsheng Yuan,
  • Chengkai Lv,
  • Ruiyuan Wang,
  • Baitang Ning,
  • Ruth Roberts,
  • Weida Tong,
  • Zhichao Liu,
  • Tieliu Shi

DOI
https://doi.org/10.1186/s13073-021-00945-4
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 15

Abstract

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Abstract Background Gene copy number variations (CNVs) contribute to genetic diversity and disease prevalence across populations. Substantial efforts have been made to decipher the relationship between CNVs and pathogenesis but with limited success. Results We have developed a novel computational framework X-CNV ( www.unimd.org/XCNV ), to predict the pathogenicity of CNVs by integrating more than 30 informative features such as allele frequency (AF), CNV length, CNV type, and some deleterious scores. Notably, over 14 million CNVs across various ethnic groups, covering nearly 93% of the human genome, were unified to calculate the AF. X-CNV, which yielded area under curve (AUC) values of 0.96 and 0.94 in training and validation sets, was demonstrated to outperform other available tools in terms of CNV pathogenicity prediction. A meta-voting prediction (MVP) score was developed to quantitively measure the pathogenic effect, which is based on the probabilistic value generated from the XGBoost algorithm. The proposed MVP score demonstrated a high discriminative power in determining pathogenetic CNVs for inherited traits/diseases in different ethnic groups. Conclusions The ability of the X-CNV framework to quantitatively prioritize functional, deleterious, and disease-causing CNV on a genome-wide basis outperformed current CNV-annotation tools and will have broad utility in population genetics, disease-association studies, and diagnostic screening.

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