| Literature DB >> 27822389 |
T Pesaran1, R Karam1, R Huether1, S Li1, S Farber-Katz1, A Chamberlin1, H Chong1, H LaDuca1, A Elliott1.
Abstract
Genetic testing for hereditary breast cancer is an integral part of individualized care in the new era of precision medicine. The accuracy of an assay is reliant on not only the technology and bioinformatics analysis utilized but also the experience and infrastructure required to correctly classify genetic variants as disease-causing. Interpreting the clinical significance of germline variants identified by hereditary cancer testing is complex and has a significant impact on the management of patients who are at increased cancer risk. In this review we give an overview of our clinical laboratory's integrated approach to variant assessment. We discuss some of the nuances that should be considered in the assessment of genomic variants. In addition, we highlight lines of evidence such as functional assays and structural analysis that can be useful in the assessment of rare and complex variants.Entities:
Year: 2016 PMID: 27822389 PMCID: PMC5086358 DOI: 10.1155/2016/2469523
Source DB: PubMed Journal: Int J Breast Cancer ISSN: 2090-3189
Classification scheme for high penetrance autosomal dominant breast cancer genes.
| Class | Classification | Category | Criteria |
|---|---|---|---|
| 5 | Pathogenic | A | (i) Alterations resulting in premature truncation (e.g., reading frame shift, nonsense) |
| (ii) Other ACMG-defined mutations (i.e., initiation codon or gross deletion) | |||
| (iii) Strong segregation with disease (LOD >3 = >10 meioses) | |||
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| |||
| 5 | Pathogenic | B | (i) Confirmed |
| (iii) Being detected in individuals satisfying established diagnostic criteria for classic disease without a clear mutation | |||
| (iv) Last nucleotide of exon | |||
| (v) Good segregation with disease (LOD 1.5–3 = 5–9 meioses) | |||
| (vi) Deficient protein function in appropriate functional assay(s) | |||
| (vii) Functionally validated splicing mutation | |||
| (viii) Well-characterized mutation at the same position | |||
| (ix) Other strong data supporting pathogenic classification (e.g., structural) | |||
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| 4 | Likely pathogenic | 1 needed | (i) Alterations at the canonical donor/acceptor sites (± 1, 2) without another strong (B-level) evidence supporting pathogenicity |
|
| |||
| 4 | Likely pathogenic | C | (i) Rarity in general population databases (dbSNP, ESP, 1000 Genomes, ExAC) |
| (ii) | |||
| (iii) Moderate segregation with disease (at least 3 informative meioses) for rare diseases | |||
| (iv) Other data supporting pathogenic classification (e.g., structural) | |||
| 3 of B | |||
| 2 of B and at least 1 of C | |||
| 1 of B and at least 3 of C | |||
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| |||
| 3 | VUS | Insufficient or conflicting evidence | |
| Gross duplications without strong evidence for pathogenic or benign | |||
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| |||
| 3 | Likely benign | D | (i) Intronic alteration with no splicing impact by RT-PCR analysis or another splicing assay |
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| 3 | Likely benign | E | (i) Cooccurrences with mutations in the same gene (phase unknown) |
| (ii) Cooccurrences with mutations in other high penetrant genes that clearly explain a proband's phenotype | |||
| (iii) Subpopulation frequency in support of benign classification | |||
| (iv) Intact protein function observed in appropriate functional assay(s) | |||
| (v) | |||
| (vi) Not segregating with disease in family study (genes with incomplete penetrance) | |||
| (vii) No disease association in small case-control study | |||
| (viii) Other data supporting benign classification | |||
|
| |||
| 1 | Benign | F | (i) General population or subpopulation frequency is too high to be a pathogenic mutation based on disease/syndrome prevalence and penetrance |
| (ii) Not segregating with disease in family study (genes with complete penetrance) | |||
| (iii) Internal frequency is too high to be a pathogenic mutation based on disease/syndrome prevalence and penetrance | |||
| (iv) Being seen | |||
| (v) No disease association in appropriately sized case-control study(ies) | |||
| 1 of D and at least 2 of E | |||
| 2 or more of D | |||
| >3 of E w/o conflicting data | |||
| >4 of E w/conflicting data | |||
The variant classification scheme is not intended for the interpretation of alterations complicated by epigenetic factors including genetic modifiers, multifactorial disease, or low-risk disease association alleles and may be limited in the interpretation of alterations confounded by incomplete penetrance, variable expressivity, phenocopies, and triallelic or oligogenic inheritance.
Figure 1An integrated approach for variant classification. Lines of evidence such as structural function, RNA studies, and functional studies assess the functional impact on the mRNA and protein. Cooccurrence, segregation, case-control studies, and the observed phenotype in variant carriers reflect the pathogenicity of a variant. Population frequency, in silico models, and evolutionary conservation assess fitness of the amino acid or nucleotide position.
Experimental structures of genes linked to breast cancer.
| Gene | Length | PDBs | Coverage (%) |
|---|---|---|---|
| ATM | 3056 | 0 | 0.0 |
| BARD1 | 777 | 5 | 42.1 |
| BRCA1 | 1863 | 27 | 17.6 |
| BRCA2 | 3418 | 2 | 1.6 |
| BRIP1 | 1249 | 3 | 1.9 |
| CDH1 | 882 | 12 | 26.2 |
| CHEK2 | 543 | 38 | 86.4 |
| MRE11A | 708 | 1 | 58.1 |
| MUTYH | 549 | 2 | 77.3 |
| NBN | 754 | 0 | 0.0 |
| NF1 | 2839 | 6 | 22.1 |
| PALB2 | 1186 | 2 | 29.7 |
| PTEN | 403 | 6 | 92.8 |
| RAD50 | 1312 | 0 | 0.0 |
| RAD51C | 376 | 0 | 0.0 |
| RAD51D | 328 | 1 | 25.3 |
| TP53 | 393 | 142 | 100.0 |
Gene lengths and coverage are tabulated from the Universal Protein Resource (Uniprot) [4] and the Research Collaboratory for Structural Bioinformatics (RCSB) [5] databases. The list of genes is taken from the BreastNext panel.
Figure 2Workflow of a functional lab for the evaluation of VUS.
Figure 3Identification of tandem duplication insertion breakpoints spanning BRCA1 exon 11, using paired-end sequencing. (a) Mapped read pairs in the wrong orientation indicate a tandem duplication. (b) Ambry's breakpoint detection tools can identify clusters of read pairs with soft clipping which indicate rearrangement breakpoints.
Figure 4The structure of BRCA1 p.Trp1837 (shown in magenta with sticks) in the BRCA-BRCT domain (PDB: 1T15 [6]). Nearby hydrophobic amino acids sidechains from residue 1837 are shown as sticks. Bound BACH1 peptide is shown as teal stick.