Using whole genome scores to compare three clinical phenotyping methods in complex diseases.
Wenyu SongHailiang HuangCheng-Zhong ZhangDavid W BatesAdam WrightPublished in: Scientific reports (2018)
Genome-wide association studies depend on accurate ascertainment of patient phenotype. However, phenotyping is difficult, and it is often treated as an afterthought in these studies because of the expense involved. Electronic health records (EHRs) may provide higher fidelity phenotypes for genomic research than other sources such as administrative data. We used whole genome association models to evaluate different EHR and administrative data-based phenotyping methods in a cohort of 16,858 Caucasian subjects for type 1 diabetes mellitus, type 2 diabetes mellitus, coronary artery disease and breast cancer. For each disease, we trained and evaluated polygenic models using three different phenotype definitions: phenotypes derived from billing data, the clinical problem list, or a curated phenotyping algorithm. We observed that for these diseases, the curated phenotype outperformed the problem list, and the problem list outperformed administrative billing data. This suggests that using advanced EHR-derived phenotypes can further increase the power of genome-wide association studies.
Keyphrases
- electronic health record
- genome wide association
- clinical decision support
- high throughput
- coronary artery disease
- adverse drug
- big data
- type diabetes
- heart failure
- machine learning
- case control
- insulin resistance
- percutaneous coronary intervention
- metabolic syndrome
- cardiovascular events
- skeletal muscle
- body composition
- young adults
- coronary artery bypass grafting
- resistance training
- atrial fibrillation
- acute coronary syndrome