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Use of power-law analysis to predict abuse or diversion of prescribed medications: proof-of-concept mathematical exploration

机译:使用幂律分析预测处方药的滥用或转移:概念验证的数学探索

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Abstract ObjectiveTo conduct a proof-of-concept study comparing Lorenz-curve analysis (LCA) with power-law (exponential function) analysis (PLA), by applying segmented regression modeling to 1-year prescription claims data for three medications—alprazolam, opioids, and gabapentin—to predict abuse and/or diversion using power-law zone (PLZ) classification.ResultsIn 1-year baseline observation, patients classified into the top PLZ groups (PLGs) were demographically and diagnostically similar to those in Lorenz-1 (top 1% of utilizers) and Lorenz-25 (top 25%). For prediction of follow-up (6-month post-baseline) Lorenz-1 use of alprazolam and opioids (i.e., potential abuse/diversion), PLA had somewhat lower sensitivity compared with LCA (83.5–95.4% vs. 99.5–99.9%, respectively) but better specificity (98.2–98.8% vs. 75.5%) and much better positive predictive value (PPV; 34.5–45.3% vs. 4.0–4.6%). Of top-PLG alprazolam- and opioid-treated patients, respectively, 20.7 and 9.9% developed incident (new) Lorenz-1 in followup, compared with??3% of Lorenz-25 patients. For gabapentin, neither PLA nor LCA predicted incident Lorenz-1 (PPV?=?0.0–1.4%). For all three medications, PLA sensitivity for follow-up hospitalization was??5%, but specificity was better for PLA (97.3–99.2%) than for LCA (74.3–75.4%). PLA better identified patients at risk of future controlled substance abuse/diversion than did LCA, but the technique needs refinement before widespread use.
机译:摘要目的通过将分段回归模型应用于三种药物(阿普唑仑,阿片类药物)的一年期处方索赔数据,进行概念验证研究,将洛伦兹曲线分析(LCA)与幂律(指数函数)分析(PLA)进行比较结果,在1年的基线观察中,归类为PLZ前几类(PLG)的患者在人口统计学和诊断上与Lorenz-1(使用率最高的1%)和Lorenz-25(排名前25%)。为了预测随访(基线后6个月),使用Lopraz-1和阿普唑仑和阿片类药物(即潜在的滥用/转移),与LCA相比,PLA的敏感性较低(83.5–95.4%比99.5–99.9% ),但特异性更高(98.2–98.8%vs. 75.5%)和更好的阳性预测值(PPV; 34.5–45.3%vs. 4.0–4.6%)。在接受PLG最高的阿普唑仑和阿片类药物治疗的患者中,随访时分别有20.7%和9.9%的事件发生了(新的)Lorenz-1事件,而Lorenz-25患者的发生率<?3%。对于加巴喷丁,PLA和LCA均未预测Lorenz-1事件的发生(PPV?=?0.0–1.4%)。对于所有这三种药物,PLA对后续住院的敏感性为?<?5%,但对PLA的特异性(97.3-99.2%)要比对LCA的特异性更好(74.3-75.4%)。与LCA相比,PLA可以更好地识别出将来有可能控制药物滥用/转移的风险的患者,但是该技术需要在广泛使用之前进行完善。

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