Improving prenatal diagnosis through standards and aggregation

Author:

Duyzend Michael H.123ORCID,Cacheiro Pilar4ORCID,Jacobsen Julius O. B.4ORCID,Giordano Jessica5ORCID,Brand Harrison126ORCID,Wapner Ronald J.5ORCID,Talkowski Michael E.12678ORCID,Robinson Peter N.910ORCID,Smedley Damian4ORCID

Affiliation:

1. Center for Genomic Medicine Massachusetts General Hospital Boston Massachusetts USA

2. Program in Medical and Population Genetics The Broad Institute of MIT and Harvard Cambridge Massachusetts USA

3. Division of Genetics and Genomics Department of Pediatrics Boston Children's Hospital and Harvard Medical School Boston Massachusetts USA

4. William Harvey Research Institute Barts and the London School of Medicine and Dentistry Queen Mary University of London London UK

5. Department of Obstetrics & Gynecology Columbia University Medical Center New York New York USA

6. Department of Neurology Harvard Medical School Boston Massachusetts USA

7. Program in Biological and Biomedical Sciences Division of Medical Sciences Harvard Medical School Boston Massachusetts USA

8. Program in Bioinformatics and Integrative Genomics Division of Medical Sciences Harvard Medical School Boston Massachusetts USA

9. The Jackson Laboratory for Genomic Medicine Farmington Connecticut USA

10. Institute for Systems Genomics University of Connecticut Farmington Connecticut USA

Abstract

AbstractAdvances in sequencing and imaging technologies enable enhanced assessment in the prenatal space, with a goal to diagnose and predict the natural history of disease, to direct targeted therapies, and to implement clinical management, including transfer of care, election of supportive care, and selection of surgical interventions. The current lack of standardization and aggregation stymies variant interpretation and gene discovery, which hinders the provision of prenatal precision medicine, leaving clinicians and patients without an accurate diagnosis. With large amounts of data generated, it is imperative to establish standards for data collection, processing, and aggregation. Aggregated and homogeneously processed genetic and phenotypic data permits dissection of the genomic architecture of prenatal presentations of disease and provides a dataset on which data analysis algorithms can be tuned to the prenatal space. Here we discuss the importance of generating aggregate data sets and how the prenatal space is driving the development of interoperable standards and phenotype‐driven tools.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Genetics (clinical),Obstetrics and Gynecology

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