Genomic autopsy to identify underlying causes of pregnancy loss and perinatal death

Byrne, Alicia B.,Arts, Peer, Ha, Thuong T., Kassahn, Karin S., Pais, Lynn S., O’Donnell-Luria, Anne,Babic, Milena, Frank, Mahalia S. B.,Feng, Jinghua,Wang, Paul, Lawrence, David M.,Eshraghi, Leila, Arriola, Luis,Toubia, John, Nguyen, Hung,McGillivray, George,Pinner, Jason, McKenzie, Fiona,Morrow, Rebecca, Lipsett, Jill,Manton, Nick,Khong, T. Yee,Moore, Lynette, Liebelt, Jan E., Schreiber, Andreas W., King-Smith, Sarah L., Hardy, Tristan S. E., Jackson, Matilda R.,Barnett, Christopher P.,Scott, Hamish S.

Nature Medicine(2023)

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摘要
Pregnancy loss and perinatal death are devastating events for families. We assessed ‘genomic autopsy’ as an adjunct to standard autopsy for 200 families who had experienced fetal or newborn death, providing a definitive or candidate genetic diagnosis in 105 families. Our cohort provides evidence of severe atypical in utero presentations of known genetic disorders and identifies novel phenotypes and disease genes. Inheritance of 42% of definitive diagnoses were either autosomal recessive (30.8%), X-linked recessive (3.8%) or autosomal dominant (excluding de novos, 7.7%), with risk of recurrence in future pregnancies. We report that at least ten families (5%) used their diagnosis for preimplantation (5) or prenatal diagnosis (5) of 12 pregnancies. We emphasize the clinical importance of genomic investigations of pregnancy loss and perinatal death, with short turnaround times for diagnostic reporting and followed by systematic research follow-up investigations. This approach has the potential to enable accurate counseling for future pregnancies. In a new study including 200 families who experienced perinatal death, adding genomic analyses to standard autopsies improved the identification of underlying pathogenic causes and informed genetic counseling.
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关键词
Disease genetics,Genetic testing,Medical genomics,Biomedicine,general,Cancer Research,Metabolic Diseases,Infectious Diseases,Molecular Medicine,Neurosciences
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