2023
DOI: 10.1186/s13073-023-01264-6
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Evaluating the use of paralogous protein domains to increase data availability for missense variant classification

Adam Colin Gunning,
Caroline Fiona Wright

Abstract: Background Classification of rare missense variants remains an ongoing challenge in genomic medicine. Evidence of pathogenicity is often sparse, and decisions about how to weigh different evidence classes may be subjective. We used a Bayesian variant classification framework to investigate the performance of variant co-localisation, missense constraint, and aggregating data across paralogous protein domains (“meta-domains”). Methods We constructed … Show more

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“…The functional grading in step A of the ABC system can also easily be aided by bioinformatic tools (like REVEL, missenseAI, spliceAI or paralog comparisons) [ 13 ], and there is no need to default the likelihood of variant pathogenicity (to 10%) or the relationship between criteria strengths (as the square root of the value above: 350–18,7–4,3–2,08), as in the Bayesian-based ACMG tool [ 2 ]. Similarly, the clinical grading in step B can be aided by tools using HPO terms to prioritize variants, see e.g., the rare disease diagnostic tools (Exomiser) of the Genomics England 100 K study [ 14 ].…”
Section: Discussionmentioning
confidence: 99%
“…The functional grading in step A of the ABC system can also easily be aided by bioinformatic tools (like REVEL, missenseAI, spliceAI or paralog comparisons) [ 13 ], and there is no need to default the likelihood of variant pathogenicity (to 10%) or the relationship between criteria strengths (as the square root of the value above: 350–18,7–4,3–2,08), as in the Bayesian-based ACMG tool [ 2 ]. Similarly, the clinical grading in step B can be aided by tools using HPO terms to prioritize variants, see e.g., the rare disease diagnostic tools (Exomiser) of the Genomics England 100 K study [ 14 ].…”
Section: Discussionmentioning
confidence: 99%
“…Given its high positive predictive value, we propose that HMC could be used as a constraint metric applied through PP2 following ACMG guidelines in clinical variant interpretation (PP2: “Missense variant in a gene that has a low rate of benign missense variation and where missense variants are a common mechanism of disease” [ 41 ]). Within the existing mutational constraint scores, missense constraint at the gene or regional level (gnomAD MOEUF and CCR) has been shown to provide supporting evidence of pathogenicity through the PP2 criterion within the ACMG clinical interpretation framework [ 42 ]. Since HMC has higher precision over these gene-level or regional-level constraints, we recommend evaluating PP2 by using HMC first where possible (activating PP2 if HMC < 0.8) before applying gene/region-level constraint as illustrated in Additional File 1 : Fig.…”
Section: Discussionmentioning
confidence: 99%