候选基因的效用从算法设计预测阿片类药物使用障碍的遗传风险。

IF 10.5 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL JAMA Network Open Pub Date : 2025-01-02 DOI:10.1001/jamanetworkopen.2024.53913
Christal N Davis, Zeal Jinwala, Alexander S Hatoum, Sylvanus Toikumo, Arpana Agrawal, Christopher T Rentsch, Howard J Edenberg, James W Baurley, Emily E Hartwell, Richard C Crist, Joshua C Gray, Amy C Justice, Joel Gelernter, Rachel L Kember, Henry R Kranzler
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引用次数: 0

摘要

重要性:最近,美国食品和药物管理局(fda)批准了一种算法的上市前批准,该算法据称能够识别具有阿片类药物使用障碍(OUD)遗传风险的个体。然而,该算法中包含的候选遗传变异的临床效用尚未得到独立证明。目的:评估一种用于预测OUD风险的算法中的15种遗传变异的效用。设计、环境和参与者:本病例对照研究使用1992年12月20日至2022年9月30日的电子健康记录数据,检查了15种候选遗传变异与OUD风险的关联。包括药房记录在内的电子健康记录数据来自美国各地阿片类药物暴露的百万退伍军人计划参与者(n = 452 664)。使用《国际疾病分类第九版》或《国际疾病分类第十版》诊断代码确定OUD病例,对照组为未诊断出OUD的个体。暴露:在15个候选遗传变异中存在的风险等位基因的数量。主要结果和测量:通过逻辑回归和机器学习模型评估15种遗传变异识别OUD风险的表现。结果:452 664名阿片类药物暴露者(包括33名 669名OUD患者)的平均(SD)年龄为61.15(13.37)岁,其中90.46%为男性;样本的祖先是多样的(从基因上推断有欧洲、非洲和混合的美洲祖先的个体)。使用Nagelkerke R2, 15个候选基因总共占OUD风险变异的0.40%。相比之下,年龄和性别单独占3.27%的变化。集成机器学习。使用15个变量作为预测因素的集成机器学习模型在独立测试样本中正确分类了52.83% (95% CI, 52.07%-53.59%)的个体。结论及相关性:本研究结果表明,批准的算法中包含的候选遗传变异在识别OUD风险方面不符合合理的功效标准。鉴于该算法的预测准确性有限,其在临床护理中的使用将导致假阳性和假阴性结果的高发生率。需要更多临床有用的模型来识别有发展OUD风险的个体。
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Utility of Candidate Genes From an Algorithm Designed to Predict Genetic Risk for Opioid Use Disorder.

Importance: Recently, the US Food and Drug Administration gave premarketing approval to an algorithm based on its purported ability to identify individuals at genetic risk for opioid use disorder (OUD). However, the clinical utility of the candidate genetic variants included in the algorithm has not been independently demonstrated.

Objective: To assess the utility of 15 genetic variants from an algorithm intended to predict OUD risk.

Design, setting, and participants: This case-control study examined the association of 15 candidate genetic variants with risk of OUD using electronic health record data from December 20, 1992, to September 30, 2022. Electronic health record data, including pharmacy records, were accrued from participants in the Million Veteran Program across the US with opioid exposure (n = 452 664). Cases with OUD were identified using International Classification of Diseases, Ninth Revision, or International Classification of Diseases, Tenth Revision, diagnostic codes, and controls were individuals with no OUD diagnosis.

Exposures: Number of risk alleles present across 15 candidate genetic variants.

Main outcome and measures: Performance of 15 genetic variants for identifying OUD risk assessed via logistic regression and machine learning models.

Results: A total of 452 664 individuals with opioid exposure (including 33 669 with OUD) had a mean (SD) age of 61.15 (13.37) years, and 90.46% were male; the sample was ancestrally diverse (with individuals of genetically inferred European, African, and admixed American ancestries). Using Nagelkerke R2, collectively, the 15 candidate genes accounted for 0.40% of variation in OUD risk. In comparison, age and sex alone accounted for 3.27% of the variation. The ensemble machine learning. The ensemble machine learning model using the 15 variants as predictive factors correctly classified 52.83% (95% CI, 52.07%-53.59%) of individuals in an independent testing sample.

Conclusions and relevance: Results of this study suggest that the candidate genetic variants included in the approved algorithm do not meet reasonable standards of efficacy in identifying OUD risk. Given the algorithm's limited predictive accuracy, its use in clinical care would lead to high rates of both false-positive and false-negative findings. More clinically useful models are needed to identify individuals at risk of developing OUD.

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来源期刊
JAMA Network Open
JAMA Network Open Medicine-General Medicine
CiteScore
16.00
自引率
2.90%
发文量
2126
审稿时长
16 weeks
期刊介绍: JAMA Network Open, a member of the esteemed JAMA Network, stands as an international, peer-reviewed, open-access general medical journal.The publication is dedicated to disseminating research across various health disciplines and countries, encompassing clinical care, innovation in health care, health policy, and global health. JAMA Network Open caters to clinicians, investigators, and policymakers, providing a platform for valuable insights and advancements in the medical field. As part of the JAMA Network, a consortium of peer-reviewed general medical and specialty publications, JAMA Network Open contributes to the collective knowledge and understanding within the medical community.
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