4.6 Article

Modeling the ACMG/AMP variant classification guidelines as a Bayesian classification framework

期刊

GENETICS IN MEDICINE
卷 20, 期 9, 页码 1054-1060

出版社

NATURE PUBLISHING GROUP
DOI: 10.1038/gim.2017.210

关键词

Bayesian framework; medical genetics; unclassified variants; variant classification; variants of uncertain significance

资金

  1. Cancer Center Support grant [P30 CA042014]
  2. BRCA gene variants [R01 CA121245]
  3. Clinical Genome Resource [U01 HG007437, U41 HG006834, U01 HG007436]
  4. National Human Genome Research Institute [ZIA HG200387 03, ZIA HG200388 03]
  5. [R01 CA164944]

向作者/读者索取更多资源

Purpose: We evaluated the American College of Medical Genetics and Genomics/Association for Molecular Pathology (ACMG/AMP) variant pathogenicity guidelines for internal consistency and compatibility with Bayesian statistical reasoning. Methods: The ACMG/AMP criteria were translated into a naive Bayesian classifier, assuming four levels of evidence and exponentially scaled odds of pathogenicity. We tested this framework with a range of prior probabilities and odds of pathogenicity. Results: We modeled the ACMG/AMP guidelines using biologically plausible assumptions. Most ACMG/AMP combining criteria were compatible. One ACMG/AMP likely pathogenic combination was mathematically equivalent to pathogenic and one ACMG/AMP pathogenic combination was actually likely pathogenic. We modeled combinations that include evidence for and against pathogenicity, showing that our approach scored some combinations as pathogenic or likely pathogenic that ACMG/AMP would designate as variant of uncertain significance (VUS). Conclusion: By transforming the ACMG/AMP guidelines into a Bayesian framework, we provide a mathematical foundation for what was a qualitative heuristic. Only 2 of the 18 existing ACMG/AMP evidence combinations were mathematically inconsistent with the overall framework. Mixed combinations of pathogenic and benign evidence could yield a likely pathogenic, likely benign, or VUS result. This quantitative framework validates the approach adopted by the ACMG/AMP, provides opportunities to further refine evidence categories and combining rules, and supports efforts to automate components of variant pathogenicity assessments.

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