2019
DOI: 10.1101/835264
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Evaluation of ACMG Rules for In silico Evidence Strength Using An Independent Computational Tool Absent of Circularities on ATM and CHEK2 Breast Cancer Cases and Controls

Abstract: The American College of Medical Genetics and Genomics (ACMG) guidelines for sequence variant classification include two criteria, PP3 and BP4, for combining computational data with other evidence types contributing to sequence variant classification. PP3 and BP4 assert that computational modeling can provide "Supporting" evidence for or against pathogenicity within the ACMG framework. Here, leveraging a meta-analysis of ATM and CHEK2 breast cancer casecontrol mutation screening data, we evaluate the strength o… Show more

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