| Literature DB >> 35760791 |
David R Blair1, Thomas J Hoffmann2,3, Joseph T Shieh4,5.
Abstract
Clinical heterogeneity is common in Mendelian disease, but small sample sizes make it difficult to identify specific contributing factors. However, if a disease represents the severely affected extreme of a spectrum of phenotypic variation, then modifier effects may be apparent within a larger subset of the population. Analyses that take advantage of this full spectrum could have substantially increased power. To test this, we developed cryptic phenotype analysis, a model-based approach that infers quantitative traits that capture disease-related phenotypic variability using qualitative symptom data. By applying this approach to 50 Mendelian diseases in two cohorts, we identify traits that reliably quantify disease severity. We then conduct genome-wide association analyses for five of the inferred cryptic phenotypes, uncovering common variation that is predictive of Mendelian disease-related diagnoses and outcomes. Overall, this study highlights the utility of computationally-derived phenotypes and biobank-scale cohorts for investigating the complex genetic architecture of Mendelian diseases.Entities:
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Year: 2022 PMID: 35760791 PMCID: PMC9237040 DOI: 10.1038/s41467-022-31030-y
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 17.694