Common genetic variation associated with Mendelian disease severity revealed through cryptic phenotype analysis.
David R BlairThomas J HoffmannJoseph T C ShiehPublished in: Nature communications (2022)
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.
Keyphrases
- genome wide
- magnetic resonance imaging
- single cell
- genome wide association
- type diabetes
- systematic review
- computed tomography
- climate change
- gene expression
- adipose tissue
- magnetic resonance
- dna methylation
- insulin resistance
- metabolic syndrome
- artificial intelligence
- patient reported
- diffusion weighted imaging
- contrast enhanced