AI Article Synopsis

  • Many Mendelian disease patients still lack identified pathogenic variants despite extensive data-sharing efforts, signaling a need for better variant interpretation.
  • *In a study of 4577 families, various challenges in identifying and interpreting novel variants were identified, including issues related to phenotype, pedigree structure, positional mapping, gene assertions, and complex inheritance patterns.
  • *By tackling these non-sequencing challenges, researchers estimated a potential 71% increase in diagnostic success, achieving a 54.5% identification rate of causal variants in previously undiagnosed cases.*

Article Abstract

Despite large sequencing and data sharing efforts, previously characterized pathogenic variants only account for a fraction of Mendelian disease patients, which highlights the need for accurate identification and interpretation of novel variants. In a large Mendelian cohort of 4577 molecularly characterized families, numerous scenarios in which variant identification and interpretation can be challenging are encountered. We describe categories of challenges that cover the phenotype (e.g. novel allelic disorders), pedigree structure (e.g. imprinting disorders masquerading as autosomal recessive phenotypes), positional mapping (e.g. double recombination events abrogating candidate autozygous intervals), gene (e.g. novel gene-disease assertion) and variant (e.g. complex compound inheritance). Overall, we estimate a probability of 34.3% for encountering at least one of these challenges. Importantly, our data show that by only addressing non-sequencing-based challenges, around 71% increase in the diagnostic yield can be expected. Indeed, by applying these lessons to a cohort of 314 cases with negative clinical exome or genome reports, we could identify the likely causal variant in 54.5%. Our work highlights the need to have a thorough approach to undiagnosed diseases by considering a wide range of challenges rather than a narrow focus on sequencing technologies. It is hoped that by sharing this experience, the yield of undiagnosed disease programs globally can be improved.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10465531PMC
http://dx.doi.org/10.1038/s41467-023-40909-3DOI Listing

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