Department of Medicine, Brigham and Women's Hospital, Boston, MA, USA.
Stanley Center for Psychiatric Research, The Broad Institute of MIT and Harvard, Cambridge, MA, USA.
Sci Rep. 2024 Oct 1;14(1):22780. doi: 10.1038/s41598-024-73925-4.
Opioid prescription records in existing electronic health record (EHR) databases are a potentially useful, high-fidelity data source for opioid use-related risk phenotyping in genetic analyses. Prescriptions for codeine derived from EHR records were used as targeting traits by screening 16 million patient-level medication records. Genome-wide association analyses were then conducted to identify genomic loci and candidate genes associated with different count patterns of codeine prescriptions. Both low- and high-prescription counts were captured by developing 8 types of phenotypes with selected ranges of prescription numbers to reflect potentially different levels of opioid risk severity. We identified one significant locus associated with low-count codeine prescriptions (1, 2 or 3 prescriptions), while up to 7 loci were identified for higher counts (≥ 4, ≥ 5, ≥6, or ≥ 7 prescriptions), with a strong overlap across different thresholds. We identified 9 significant genomic loci with all-count phenotype. Further, using the polygenic risk approach, we identified a significant correlation (Tau = 0.67, p = 0.01) between an externally derived polygenic risk score for opioid use disorder and numbers of codeine prescriptions. As a proof-of-concept study, our research provides a novel and generalizable phenotyping pipeline for the genomic study of opioid-related risk traits.
现有电子健康记录 (EHR) 数据库中的阿片类药物处方记录是遗传分析中与阿片类药物使用相关的风险表型研究的一种潜在有用的、高保真数据来源。通过筛选 1600 万份患者级别的药物记录,将从 EHR 记录中获得的可待因处方用作靶向特征。然后进行全基因组关联分析,以鉴定与不同可待因处方计数模式相关的基因组位点和候选基因。通过开发 8 种具有选定处方数量范围的表型来捕获低处方计数和高处方计数,以反映潜在的不同阿片类药物风险严重程度。我们确定了一个与低计数可待因处方(1、2 或 3 个处方)相关的显著位点,而对于更高的计数(≥4、≥5、≥6 或≥7 个处方)则确定了多达 7 个位点,不同阈值之间有很强的重叠。我们确定了具有所有计数表型的 9 个显著基因组位点。此外,使用多基因风险方法,我们发现阿片类药物使用障碍的多基因风险评分与可待因处方数量之间存在显著相关性(Tau=0.67,p=0.01)。作为概念验证研究,我们的研究为阿片类药物相关风险特征的基因组研究提供了一种新颖且可推广的表型分析方法。