Thao Viengneesee, Zhu Ye, Tseng Andrew S, Inselman Jonathan W, Borah Bijan J, McCoy Rozalina G, Attia Zachi I, Lopez-Jimenez Francisco, Pellikka Patricia A, Rushlow David R, Friedman Paul A, Noseworthy Peter A, Yao Xiaoxi
Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, MN.
Division of Preventive and Occupational Medicine, Mayo Clinic, Rochester, MN.
Mayo Clin Proc Digit Health. 2024 Oct 26;2(4):620-631. doi: 10.1016/j.mcpdig.2024.10.001. eCollection 2024 Dec.
To investigate the cost-effectiveness of using artificial intelligence (AI) to screen for low ejection fraction (EF) in routine clinical practice using a pragmatic randomized controlled trial (RCT).
In a post hoc analysis of the electrocardiogram (ECG) AI-guided screening for low ejection fraction trial, we developed a decision analytic model for patients aged 18 years and older without previously diagnosed heart failure and underwent a clinically indicated ECG between August 5, 2019, and March 31, 2020. In the previously published RCT, the intervention arm underwent an AI-guided targeted screening program for low EF with a workflow embedded into routine clinical practice-AI was applied to the ECG to identify patients at high-risk and recommended clinicians to order an ECG and the control arm received usual care without the screening program. We used results from the RCT for rates of low EF diagnosis and a lifetime Markov model to project the long-term outcomes. Quality-adjusted life years (QALYs), costs of intervention and treatment, disease event costs, incremental cost-effectiveness ratio (ICER), and cost for the number needed to screen. Multiple scenario and sensitivity analyses were performed.
Compared with usual care, AI-integrated ECG was cost effective, with an incremental cost-effectiveness ratio of $27,858/QALY. The program remained cost effective even with a change in patient age and follow-up time duration, although the specific ICER values varied for these parameters. The program was more cost effective in outpatient settings (ICER $1651/QALY) than in inpatient or emergency room settings.
Implementing AI-guided targeted screening for low EF in routine clinical practice was cost effective.
通过一项实用随机对照试验(RCT),研究在常规临床实践中使用人工智能(AI)筛查低射血分数(EF)的成本效益。
在对心电图(ECG)AI引导的低射血分数筛查试验的事后分析中,我们为年龄在18岁及以上、既往未诊断为心力衰竭且在2019年8月5日至2020年3月31日期间接受了临床指征心电图检查的患者开发了一个决策分析模型。在先前发表的RCT中,干预组接受了AI引导的低EF靶向筛查计划,其工作流程嵌入常规临床实践——将AI应用于心电图以识别高危患者,并建议临床医生开具心电图检查,而对照组接受无筛查计划的常规护理。我们使用RCT的结果来获取低EF诊断率,并使用终生马尔可夫模型来预测长期结果。质量调整生命年(QALYs)、干预和治疗成本、疾病事件成本、增量成本效益比(ICER)以及筛查所需人数的成本。进行了多种情景和敏感性分析。
与常规护理相比,整合AI的心电图具有成本效益,增量成本效益比为27,858美元/QALY。即使患者年龄和随访时间发生变化,该计划仍具有成本效益,尽管这些参数的具体ICER值有所不同。该计划在门诊环境(ICER为1651美元/QALY)中比在住院或急诊室环境中更具成本效益。
在常规临床实践中实施AI引导的低EF靶向筛查具有成本效益。