Estimated effectiveness and cost-effectiveness of opioid use disorder treatment under proposed US regulatory relaxations: A model-based analysis

DRUG AND ALCOHOL DEPENDENCE(2024)

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摘要
Aim: To assess the effectiveness and cost-effectiveness of buprenorphine and methadone treatment in the U.S. if exemptions expanding coverage for substance use disorder services via telehealth and allowing opioid treatment programs to supply a greater number of take-home doses of medications for opioid use disorder (OUD) continue (Notice of Proposed Rule Making, NPRM). Design setting and participants: Model-based analysis of buprenorphine and methadone treatment for a cohort of 100,000 individuals with OUD, varying treatment retention and overdose risk among individuals receiving and not receiving methadone treatment compared to the status quo (no NPRM). Intervention: Buprenorphine and methadone treatment under NPRM. Measurements: Fatal and nonfatal overdoses and deaths over five years, discounted lifetime per person QALYs and costs. Findings: For buprenorphine treatment under the status quo, 1.21 QALYs are gained at a cost of $19,200/QALY gained compared to no treatment; with 20% higher treatment retention, 1.28 QALYs are gained at a cost of $17,900/QALY gained compared to no treatment, and the strategy dominates the status quo. For methadone treatment under the status quo, 1.11 QALYs are gained at a cost of $17,900/QALY gained compared to no treatment. In all scenarios, methadone provision cost less than $20,000/QALY gained compared to no treatment, and less than $50,000/QALY gained compared to status quo methadone treatment. Conclusions: Buprenorphine and methadone OUD treatment under NPRM are likely to be effective and costeffective. Increases in overdose risk with take-home methadone would reduce health benefits. Clinical and technological strategies could mitigate this risk.
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关键词
Cost-effectiveness analysis,Opioid use disorder,Buprenorphine treatment,Methadone treatment,Simulation,Dynamic compartmental model
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