4.7 Article

Simulation of African and non-African low and high coverage whole genome sequence data to assess variant calling approaches

期刊

BRIEFINGS IN BIOINFORMATICS
卷 22, 期 4, 页码 -

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbaa366

关键词

DNA sequence; next-generation sequence; simulation; variant calling; genomics

资金

  1. DAAD, the German Academic Exchange Programme [91653117, 91628092]
  2. National Institutes of Health Common Fund [U24HG006941]
  3. sub-Saharan African Network for TB/HIV Research Excellence (SANTHE), a DELTAS Africa Initiative [DEL-15-006]
  4. New Partnership for Africa's Development Planning and Coordinating Agency (NEPAD Agency)
  5. UK government
  6. Wellcome Trust [107752/Z/15/Z]

向作者/读者索取更多资源

The study found that current variant calling tools produce high false positive and false negative rates when analyzing African data, emphasizing the need for the development of high sensitivity and precision variant calling approaches tailored for populations with high genetic variations and low linkage disequilibrium. VarDict and BCFtools performed the best when using African population data, showing potential for improved accuracy in variant calling in diverse populations.
Current variant calling (VC) approaches have been designed to leverage populations of long-range haplotypes and were benchmarked using populations of European descent, whereas most genetic diversity is found in non-European such as Africa populations. Working with these genetically diverse populations, VC tools may produce false positive and false negative results, which may produce misleading conclusions in prioritization of mutations, clinical relevancy and actionability of genes. The most prominent question is which tool or pipeline has a high rate of sensitivity and precision when analysing African data with either low or high sequence coverage, given the high genetic diversity and heterogeneity of this data. Here, a total of 100 synthetic Whole Genome Sequencing (WGS) samples, mimicking the genetics profile of African and European subjects for different specific coverage levels (high/low), have been generated to assess the performance of nine different VC tools on these contrasting datasets. The performances of these tools were assessed in false positive and false negative call rates by comparing the simulated golden variants to the variants identified by each VC tool. Combining our results on sensitivity and positive predictive value (PPV), VarDict [PPV = 0.999 and Matthews correlation coefficient (MCC) = 0.832] and BCFtools (PPV = 0.999 and MCC = 0.813) perform best when using African population data on high and low coverage data. Overall, current VC tools produce high false positive and false negative rates when analysing African compared with European data. This highlights the need for development of VC approaches with high sensitivity and precision tailored for populations characterized by high genetic variations and low linkage disequilibrium.

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