GARFIELD-NGS: Genomic vARiants FIltering by dEep Learning moDels in NGS
- PMID: 29668842
- DOI: 10.1093/bioinformatics/bty303
GARFIELD-NGS: Genomic vARiants FIltering by dEep Learning moDels in NGS
Abstract
Summary: Exome sequencing approach is extensively used in research and diagnostic laboratories to discover pathological variants and study genetic architecture of human diseases. However, a significant proportion of identified genetic variants are actually false positive calls, and this pose serious challenge for variants interpretation. Here, we propose a new tool named Genomic vARiants FIltering by dEep Learning moDels in NGS (GARFIELD-NGS), which rely on deep learning models to dissect false and true variants in exome sequencing experiments performed with Illumina or ION platforms. GARFIELD-NGS showed strong performances for both SNP and INDEL variants (AUC 0.71-0.98) and outperformed established hard filters. The method is robust also at low coverage down to 30X and can be applied on data generated with the recent Illumina two-colour chemistry. GARFIELD-NGS processes standard VCF file and produces a regular VCF output. Thus, it can be easily integrated in existing analysis pipeline, allowing application of different thresholds based on desired level of sensitivity and specificity.
Availability and implementation: GARFIELD-NGS available at https://github.com/gedoardo83/GARFIELD-NGS.
Supplementary information: Supplementary data are available at Bioinformatics online.