| Literature DB >> 31037860 |
Young Eun Kim1, Chang Seok Ki2, Mi Ae Jang3.
Abstract
In 2015, the American College of Medical Genetics and Genomics (ACMG), together with the Association for Molecular Pathology (AMP), published the latest guidelines for the interpretation of sequence variants, which have been widely adopted into clinical practice. Despite these standardized efforts, the degrees of subjectivity and uncertainty allowed by the guidelines can lead to inconsistent variant classification across clinical laboratories, making it difficult to assess the pathogenicity of identified variants. We describe the critical elements of variant interpretation processes and potential pitfalls through practical examples and provide updated information based on a review of recent literature. The variant classification we describe is meant to be applicable to sequence variants for Mendelian disorders, whether identified by single-gene tests, multi-gene panels, exome sequencing, or genome sequencing. Continuing efforts to improve the reproducibility and objectivity of sequence variant interpretation across individuals and laboratories are needed. © The Korean Society for Laboratory Medicine.Entities:
Keywords: American College of Medical Genetics (ACMG); Mendelian disorder; Variant interpretation
Mesh:
Year: 2019 PMID: 31037860 PMCID: PMC6502951 DOI: 10.3343/alm.2019.39.5.421
Source DB: PubMed Journal: Ann Lab Med ISSN: 2234-3806 Impact factor: 3.464
Useful databases for variant classification
| Database | Characteristics | URL |
|---|---|---|
| Population frequency of variants in whole-exome data | ||
| Exome Aggregation Consortium | - 60,706 unrelated individuals | |
| Exome Variant Server | - 6,500 exomes of European and African American ancestry | |
| - Includes healthy individuals as well as those with different diseases | ||
| Population frequency of variants in whole-genome data | ||
| 1000 Genomes Project | - Final dataset contains data for 2,504 individuals from 26 populations | |
| Genome Aggregation Database | - 123,136 exome sequences and 15,496 whole-genome sequences from unrelated individuals | |
| Korean Reference Genome Database | - Whole genome sequencing project for 1,722 Korean individuals | |
| Computational and predictive data | ||
| dbNSFP | - Developed for functional prediction and annotation of all potential nonsynonymous single-nucleotide variants | |
| - Compiles prediction scores from 20 prediction algorithms (SIFT, Polyphen2-HDIV, Polyphen2-HVAR, LRT, MutationTaster2, MutationAssessor, FATHMM, MetaSVM, MetaLR, CADD, VEST3, PROVEAN, FATHMM-MKL coding, fitCons, DANN, Geno, Canyon, Eigen coding, Eigen-PC, M-CAP, REVEL, MutPred), six conservation scores (PhyloP × 2, phastCons × 2, GERP++, and SiPhy), and other related information | ||
| dbscSNV | - Splice site prediction that scores the likelihood that the variant affects splicing | |
| - Includes all potential human single-nucleotide variants within splicing consensus regions (-3 to +8 at the 5′ splice site and -12 to +2 at the 3′ splice site) | ||
| Variant Effect Predictor | - Prediction toolset using a population database and prediction algorithms | |
| Variant type and gene-specific information data | ||
| ClinVar | - Freely accessible, public archive of reports of relationships among human variations and phenotypes, with supporting evidence | |
| Human Gene Mutation Database | - Provides comprehensive annotation for all published inherited disease mutations | |
| ClinGen | - Gene-disease validity, gene dosage sensitivity | |
Abbreviations: CADD, combined annotation-dependent depletion; DANN, deleterious annotation of genetic variants using neural networks; dbNSFP, database developed for functional prediction and annotation of all potential non-synonymous single-nucleotide variants; dbscSNV, database of SNVs in splicing consensus regions; FATHMM, functional analysis through hidden Markov models; FATHMN-MKL, FATHMN-multiple kernel learning; GERP, genomic evolutionary rate profiling; LRT, likelihood ratio test; M-CAP, Mendelian clinically applicable pathogenicity; MetaLR, meta-analytic logistic regression; MetaSVM, meta-analytic support vector machine; Polyphen2, polymorphism phenotyping v2; PROVEAN, protein variation effect analyzer; REVEL, rare exome variant ensemble learner; SIFT, sorting intolerant from tolerant; SiPhy, site-specific phylogenetic analysis; VEST3, variant effect scoring tool 3.0.
Fig. 1A sample pedigree used to quantify segregation. The arrow indicates the proband. A black symbol indicates a clinically affected family member. Positive (+) and negative (−) symbols indicate carrier status at the sequence variant under assessment.