| Literature DB >> 29402227 |
Matteo Chiara1, Silvia Gioiosa2,3, Giovanni Chillemi2, Mattia D'Antonio2, Tiziano Flati2,3, Ernesto Picardi3,4, Federico Zambelli1, David Stephen Horner1, Graziano Pesole5,6, Tiziana Castrignanò2.
Abstract
BACKGROUND: The advent and ongoing development of next generation sequencing technologies (NGS) has led to a rapid increase in the rate of human genome re-sequencing data, paving the way for personalized genomics and precision medicine. The body of genome resequencing data is progressively increasing underlining the need for accurate and time-effective bioinformatics systems for genotyping - a crucial prerequisite for identification of candidate causal mutations in diagnostic screens.Entities:
Keywords: Consensus method; Graphical user interface; Variant annotation; Variant calling; Variant prioritization; Web server; Workflow
Mesh:
Year: 2018 PMID: 29402227 PMCID: PMC5800023 DOI: 10.1186/s12864-018-4508-1
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Schematic of the variant calling pipelines implemented in CoVaCS: Single steps of the pipelines are indicated by capital letters: A to G. Tools are indicated in yellow boxes. a Single sample variant calling, b Joint sample variant calling
Fig. 2Comparison of variant calling algorithms on WES data. Sensitivity and specificity, at varying levels of coverage, of variant detection algorithms used in the course of the present study, in the analysis of the golden standard WES benchmark based on the NA12878 platinum genome
Fig. 3Comparison of variant calling algorithms on WGS data. Sensitivity and specificity, at high (200X) and low (50X) levels of coverage, of variant detection algorithms used in the present study, for the analysis of the golden standard WGS benchmark based on the NA12878 platinum genome
Fig. 4Comparison of variant calling CGES and CoVaCS on regions of low coverage. Comparison of accuracy and specificity levels achieved by the CoVaCS and CGES on genomic regions encompassed by less than 30 uniquely mapping reads, for the WES (A) and WGS (B) data