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Genome-wide association study of hyperthyroidism based on electronic medical record from Taiwan. | LitMetric

AI Article Synopsis

  • Excess thyroid hormones, particularly in hyperthyroidism, can lead to various cardiovascular issues, and genetic factors may affect individual responses to the condition.
  • A study analyzed data from over 35,000 patients in Taiwan, identifying 44 new genetic risk markers related to hyperthyroidism across specific chromosomes.
  • The research also highlighted a strong link between hyperthyroidism, thyroid storm, and increased stroke risk, suggesting that factors like sex and body mass index (BMI) play a role in this correlation.

Article Abstract

Excess thyroid hormones have complex metabolic effects, particularly hyperthyroidism, and are associated with various cardiovascular risk factors. Previous candidate gene studies have indicated that genetic variants may contribute to this variable response. Electronic medical record (EMR) biobanks containing clinical and genomic data on large numbers of individuals have great potential to inform the disease comorbidity development. In this study, we combined electronic medical record (EMR) -derived phenotypes and genotype information to conduct a genome-wide analysis of hyperthyroidism in a 35,009-patient cohort in Taiwan. Diagnostic codes were used to identify 2,767 patients with hyperthyroidism. Our genome-wide association study (GWAS) identified 44 novel genomic risk markers in 10 loci on chromosomes 2, 6, and 14 ( < 5 × 10-14), including CTLA4, HCP5, HLA-B, POU5F1, CCHCR1, HLA-DRA, HLA-DRB9, TSHR, RPL17P3, and CEP128. We further conducted a comorbidity analysis of our results, and the data revealed a strong correlation between hyperthyroidism patients with thyroid storm and stroke. In this study, we demonstrated application of the PheWAS using large EMR biobanks to inform the comorbidity development in hyperthyroidism patients. Our data suggest significant common genetic risk factors in patients with hyperthyroidism. Additionally, our results show that sex, body mass index (BMI), and thyroid storm are associated with an increased risk of stroke in subjects with hyperthyroidism.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9390483PMC
http://dx.doi.org/10.3389/fmed.2022.830621DOI Listing

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