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Multi-variant Genetic Panel for Genetic Risk of Opioid Addiction

机译:适用于阿片类药物成瘾的多变体遗传遗传危险基因

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摘要

Over 116 million people worldwide have chronic pain and prescription dependence. In the US, opioids account for the majority of overdose deaths, and in 2014, almost 2 million Americans abused or were dependent on prescription opioids. Genetic factors may play a key role in opioid prescription addiction. Herein, we describe genetic variations between opioid addicted and non-addicted populations and derive a predictive model determining risk of opioid addiction. This case cohort study compares the frequency of 16 single nucleotide polymorphisms involved in the brain reward pathways in patients with and without opioid addiction. Data from 37 patients with prescription opioid or heroin addiction and 30 age and gender matched controls were used to design the predictive score. The predictive score was then tested on an additional 138 samples to determine generalizabilty. Results for Method Derivation of Observed data: ROC statistic=0.92, sensitivity=82% (95% CI: 66-90), specificity=75% (95% CI: 56-87). TreeNet "learn" data: ROC statistic=0.92, sensitivity=92%, specificity=90%, precision=92%, and overall correct=91%. Results of Generalizability data: Sensitivity=97% (95% CI: 90 to 100), specificity=87% (95% CI: 86 to 93), positive likelihood ratio=7.3 (95% CI: 4.0 to 13.5), and negative likelihood ratio=0.03 (95% CI: 0.01 to 0.13). This negative likelihood ratio can be used as an evidence based measure to exclude patients with a high risk of opioid addicition or substance use disorder. By identifying patients with a lower risk for opioid addiction, our model may inform therapeutic decisions.
机译:全球超过11600万人有慢性疼痛和处方依赖。在美国,阿片类药物占大多数过量死亡,2014年,近200万美国人滥用或依赖处方阿片类药物。遗传因素可能在阿片类药物处方成瘾中发挥关键作用。在此,我们描述了阿片类药物上瘾和非上瘾群体之间的遗传变异,并导出了确定阿片类药物成瘾风险的预测模型。本案例队列研究比较了16名单个核苷酸多态性的频率,涉及脑奖励途径,患者患者患者患者和不含阿片类药物成瘾。来自37例处方阿片类药物或海洛因成瘾和30岁和性别匹配对照的数据用于设计预测得分。然后在另外的138个样本上测试预测得分以确定Generalizabilty。方法衍生观察数据的结果:ROC统计= 0.92,灵敏度= 82%(95%CI:66-90),特异性= 75%(95%CI:56-87)。 TreeNet“学习”数据:ROC统计= 0.92,灵敏度= 92%,特异性= 90%,精度= 92%,总体正确= 91%。普遍性数据的结果:灵敏度= 97%(95%CI:90至100),特异性= 87%(95%CI:86至93),阳性似然比= 7.3(95%CI:4.0至13.5),负似然比= 0.03(95%CI:0.01至0.13)。这种负似然比可以用作基于证据的措施,以排除高风险的阿片类药物或物质使用障碍的患者。通过鉴定具有较低风险的阿片类药物成瘾的患者,我们的模型可能会通知治疗决策。

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