(RESOURCE PROJECT) Here, we describe a set of integrated resources developed by Stanford and Baylor in concert with ClinGen leadership to address pressing needs in the clinical and medical genomics community. These include (1) the need to share case-level genotype and phenotype data for variant interpretation and research, (2) the need to improve the accuracy of clinical genetic testing in underrepresented minority population, where VUS rates are higher than in the general U.S. white population, (3) the need for standards in annotation and organization of teams of experts to facilitate interpretation of clinically relevant genes and variants at scale, (4) the need for clinical-grade standards on how computational tools for pathogenicity prediction are trained, evaluated, reported, and incorporated into clinical genomic workflows. These resources we develop here address these needs as follows: (1) The Case Level Evidence Aggregation and Reporting NETwork (CLEARNET) is a secure and easy-to-use cloud-based portal which will standardize the use of case-level evidence in ClinGen variant interpretation. (2) A new Working Group chaired by Dr. Bustamante (PI) and Dr. Nussbaum (Medical Director, InVitae) on the use of Genetic Ancestry in Clinical Genomics. We will also create new bioinformatics resources in support of this goal, including improved population reference sets, and estimates of pathogenic allelic frequency for ten?s of thousands of variants across diverse population datasets to improve accuracy of variant classification. (3) Multiple activities in support of the biocuration activities across ClinGen and support of clinical domain working groups (CDWG), particularly for non-Mendelian disorders. These include: (a) developing standards for biocuration at scale and community curators, (b) standardization of the requirements for the extent of pre-test genetic counseling across the spectrum of genetic tests available today, (c) leadership in the inborn errors of metabolism, cardiovascular and coordination of Somatic cancer (SC-WG), and Hereditary cancer (HC-CDWG), (d) creation of new working groups for Complex Disease and Regulatory Variation, and (e) collaborative network of activities across Pharmacogenomics which leverages investments in PharmGKB and PGN. (4) A comprehensive new effort through a new Computational Predictors WG with expert representation from all stakeholders (computational developers, curation scientists, clinicians) to improve concordance, transparency and usability of in-silico pathogenicity prediction tools in clinical workflows. This will include (a) metadata vocabularies and clear reporting standards for predictors, (a) an expert guideline around honest evaluation of predictor performance and hidden-bias controls, and (c) maintaining a portfolio of clinical-grade predictors with gene-, disease- or domain- specific requirements for the community.

Agency
National Institute of Health (NIH)
Institute
National Human Genome Research Institute (NHGRI)
Type
Biotechnology Resource Cooperative Agreements (U41)
Project #
5U41HG009649-03
Application #
9769100
Study Section
Special Emphasis Panel (ZHG1)
Project Start
Project End
Budget Start
2019-08-01
Budget End
2020-07-31
Support Year
3
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Stanford University
Department
Type
DUNS #
009214214
City
Stanford
State
CA
Country
United States
Zip Code
94305
Mester, Jessica L; Ghosh, Rajarshi; Pesaran, Tina et al. (2018) Gene-specific criteria for PTEN variant curation: Recommendations from the ClinGen PTEN Expert Panel. Hum Mutat 39:1581-1592
Dolman, Lena; Page, Angela; Babb, Lawrence et al. (2018) ClinGen advancing genomic data-sharing standards as a GA4GH driver project. Hum Mutat 39:1686-1689
Milko, Laura V; Funke, Birgit H; Hershberger, Ray E et al. (2018) Development of Clinical Domain Working Groups for the Clinical Genome Resource (ClinGen): lessons learned and plans for the future. Genet Med :
Madhavan, Subha; Ritter, Deborah; Micheel, Christine et al. (2018) ClinGen Cancer Somatic Working Group - standardizing and democratizing access to cancer molecular diagnostic data to drive translational research. Pac Symp Biocomput 23:247-258
Lee, Kristy; Krempely, Kate; Roberts, Maegan E et al. (2018) Specifications of the ACMG/AMP variant curation guidelines for the analysis of germline CDH1 sequence variants. Hum Mutat 39:1553-1568
Ghosh, Rajarshi; Harrison, Steven M; Rehm, Heidi L et al. (2018) Updated recommendation for the benign stand-alone ACMG/AMP criterion. Hum Mutat 39:1525-1530
Ormond, Kelly E; Hallquist, Miranda L G; Buchanan, Adam H et al. (2018) Developing a conceptual, reproducible, rubric-based approach to consent and result disclosure for genetic testing by clinicians with minimal genetics background. Genet Med :
Popejoy, Alice B; Ritter, Deborah I; Crooks, Kristy et al. (2018) The clinical imperative for inclusivity: Race, ethnicity, and ancestry (REA) in genomics. Hum Mutat 39:1713-1720
Tavtigian, Sean V; Greenblatt, Marc S; Harrison, Steven M et al. (2018) Modeling the ACMG/AMP variant classification guidelines as a Bayesian classification framework. Genet Med 20:1054-1060
Walsh, Michael F; Ritter, Deborah I; Kesserwan, Chimene et al. (2018) Integrating somatic variant data and biomarkers for germline variant classification in cancer predisposition genes. Hum Mutat 39:1542-1552

Showing the most recent 10 out of 15 publications