Afshar Majid, Resnik Felice, Joyce Cara, Oguss Madeline, Dligach Dmitriy, Burnside Elizabeth S, Sullivan Anne Gravel, Churpek Matthew M, Patterson Brian W, Salisbury-Afshar Elizabeth, Liao Frank J, Goswami Cherodeep, Brown Randy, Mundt Marlon P
Department of Medicine, University of Wisconsin-Madison, Madison, WI, USA.
Institute for Clinical and Translational Research, University of Wisconsin-Madison, Madison, WI, USA.
Nat Med. 2025 Apr 3. doi: 10.1038/s41591-025-03603-z.
Adults with opioid use disorder (OUD) are at increased risk for opioid-related complications and repeated hospital admissions. Routine screening for patients at risk for an OUD to prevent complications is not standard practice in many hospitals, leading to missed opportunities for intervention. The adoption of electronic health records (EHRs) and advancements in artificial intelligence (AI) offer a scalable approach to systematically identify at-risk patients for evidence-based care. This pre-post quasi-experimental study evaluated whether an AI-driven OUD screener embedded in the EHR was non-inferior to usual care in identifying patients for addiction medicine consultations, aiming to provide a similarly effective but more scalable alternative to human-led ad hoc consultations. The AI screener used a convolutional neural network to analyze EHR notes in real time, identifying patients at risk and recommending consultations. The primary outcome was the proportion of patients who completed a consultation with an addiction medicine specialist, which included interventions such as outpatient treatment referral, management of complicated withdrawal, medication management for OUD and harm reduction services. The study period consisted of a 16-month pre-intervention phase followed by an 8-month post-intervention phase, during which the AI screener was implemented to support hospital providers in identifying patients for consultation. Consultations did not change between periods (1.35% versus 1.51%, P < 0.001 for non-inferiority). In secondary outcome analysis, the AI screener was associated with a reduction in 30-day readmissions (odds ratio: 0.53, 95% confidence interval: 0.30-0.91, P = 0.02) with an incremental cost of US$6,801 per readmission avoided, demonstrating its potential as a scalable, cost-effective solution for OUD care. ClinicalTrials.gov registration: NCT05745480 .
患有阿片类药物使用障碍(OUD)的成年人出现阿片类药物相关并发症和反复住院的风险增加。对有OUD风险的患者进行常规筛查以预防并发症,在许多医院并非标准做法,导致错过干预机会。电子健康记录(EHR)的采用和人工智能(AI)的进步提供了一种可扩展的方法,用于系统地识别有风险的患者以提供循证护理。这项前后对照的准实验研究评估了嵌入EHR的AI驱动的OUD筛查工具在识别患者进行成瘾医学咨询方面是否不劣于常规护理,旨在提供一种同样有效但更具可扩展性的替代方案,以取代人为主导的临时咨询。AI筛查工具使用卷积神经网络实时分析EHR记录,识别有风险的患者并推荐咨询。主要结局是完成成瘾医学专家咨询的患者比例,其中包括门诊治疗转诊、复杂戒断管理、OUD药物管理和减少伤害服务等干预措施。研究期包括16个月的干预前阶段,随后是8个月的干预后阶段,在此期间实施了AI筛查工具以支持医院工作人员识别患者进行咨询。各阶段之间的咨询情况没有变化(1.35%对1.51%,非劣效性P<0.001)。在次要结局分析中,AI筛查工具与30天再入院率降低相关(比值比:0.53,95%置信区间:0.30 - 0.91,P = 0.02),每避免一次再入院的增量成本为6801美元,证明了其作为OUD护理的可扩展、具有成本效益解决方案的潜力。ClinicalTrials.gov注册号:NCT05745480 。