Ranking and classifying the VUS for family counseling: Using a model - - PowerPoint PPT Presentation
Ranking and classifying the VUS for family counseling: Using a model - - PowerPoint PPT Presentation
Ranking and classifying the VUS for family counseling: Using a model from cancer researchers Martin Tristani-Firouzi, MD Division of Pediatric Cardiology Nora Eccles Harrison CVRTI University of Utah School of Medicine Disclosure The speaker
The speaker has no commercial or financial relationships to disclose. Disclosure
Variants / genome (million)
150 protein truncating variants 10,000 amino acid changing variants 500,000 variants in regulatory regions
The dreaded result: a variant of unknown significance (VUS)
How do we interpret the significance of VUS?
- Segregation of variant w/ disease in families
- Occurrence in multiple unrelated individuals
- Functional assays
- In silico prediction algorithms
Most VUS are rare and “private”
- Segregation of variant w/ disease in families
- Occurrence in multiple unrelated individuals
- Functional assays
- In silico prediction algorithms
SIFT: Sorting Tolerant from Intolerant tool
Kumar et al, Nature Protocols, 2009
Physico-chemical properties of amino acid substitution: predicted mutation effect
Livingstone & Barton, CABIOS, 9, 745-756, 1993
polar charged hydrophobic
Other in silico tools for pathogenicity prediction
Meta-SVM: combining multiple prediction tools improves accuracy
Dong et al, Hum Mol Genetics, 2015
LQTS and BrS SCN5A variants
Receiver operator curve for when >4 in silico tool are in agreement
True positive rate False positive rate
Kapplinger et al, Circ Cardio Genet, 2015
The addition of topology to pathogenicity prediction
Whicher and MacKinnon, Science, 2016
The addition of topology to pathogenicity prediction
Kapplinger et al, Circ Cardio Genet, 2015
The Cancer Field approach to VUS
Variant classification scheme
Class 5- Pathogenic, > 99% probability of pathogenicity Class 4- Likely Pathogenic, 95-99% probability of pathogenicity Class 3- Uncertain, 5-95% probability of pathogenicity Class 2- Likely Neutral, 0.1-5% probability of pathogenicity Class 1- Neutral, <0.1% probability of pathogenicity
Bayesian multi-factorial model of pathogenicity
Posterior OR = Prior OR x OR for Pathogenicity from Data (Di) predictive value for each Di is the probability of Class 5 pathogenicity, P(Di|C5) divided by probability of Class 1 benign, P(Di|C1) D1= in silico D2= functional assay D3= family history Prior OR x P(D1|C5)/P(D1|C1) x P(D2|C5)/P(D2|C1) x P(D3|C5)/P(D3|C1)
Variant classification scheme and clinical recommendations
Applying the Bayesian multi-factorial model
- f pathogenicity for LQTS
Posterior OR = Prior OR x OR for Pathogenicity from Data (Di) predictive value for each Di is the probability of Class 5 pathogenicity, P(Di|C5) divided by probability of Class 1 benign, P(Di|C1) Prior OR x P(D1|C5)/P(D1|C1) x P(D2|C5)/P(D2|C1) x P(D3|C5)/P(D3|C1) D1= in silico D2= functional assay D3= family history
Case-control comparison for LQTS variants (prior odds)
Ruklisa et al, Genome Med, 2015
Posterior OR = Prior OR x OR for Pathogenicity from Data (Di) predictive value for each Di is the probability of Class 5 pathogenicity, P(Di|C5) divided by probability of Class 1 benign, P(Di|C1) D1= in silico D2= functional assay D3= family history Prior OR x P(D1|C5)/P(D1|C1) x P(D2|C5)/P(D2|C1) x P(D3|C5)/P(D3|C1)
Applying the Bayesian multi-factorial model
- f pathogenicity for LQTS
Functional characterization of candidate variants
zebrafish Human iPSC-CMs
Why zebrafish?: repolarization properties similar to human
High throughput screening platform for phenotype-based repolarization screen
Functional effects of putative LQT2 mutations and polymorphisms as determined by zebrafish cardiac assay
LQT-2 mutants
+/- 95% CI
polymorphisms
Comparison of in vivo zebrafish cardiac assay with in vitro mammalian cell assay
Posterior OR = Prior OR x OR for Pathogenicity from Data (Di) predictive value for each Di is the probability of Class 5 pathogenicity, P(Di|C5) divided by probability of Class 1 benign, P(Di|C1) D1= in silico D2= functional assay D3= family history Prior OR x P(D1|C5)/P(D1|C1) x P(D2|C5)/P(D2|C1) x P(D3|C5)/P(D3|C1)
Applying the Bayesian multi-factorial model
- f pathogenicity for LQTS
Findmyvariant.org
The FindMyVariant team is affiliated with the University of Washington, Department of Laboratory testing.
Steps involved in investigating the family disease
- Talking with Your Immediate
Family About Your Variant
- Talking with Living Relatives
to Find Your Ancestors
- Using Online Social