Ahmed Mahnoor, Dai Tinglong, Channa Roomasa, Abramoff Michael D, Lehmann Harold P, Wolf Risa M
Section on Biomedical Informatics and Data Science, Johns Hopkins University, Baltimore, MD, USA.
Carey Business School, Johns Hopkins University, Baltimore, MD, USA.
NPJ Digit Med. 2025 Jan 2;8(1):3. doi: 10.1038/s41746-024-01382-4.
Autonomous artificial intelligence (AI) for pediatric diabetic retinal disease (DRD) screening has demonstrated safety, effectiveness, and the potential to enhance health equity and clinician productivity. We examined the cost-effectiveness of an autonomous AI strategy versus a traditional eye care provider (ECP) strategy during the initial year of implementation from a health system perspective. The incremental cost-effectiveness ratio (ICER) was the main outcome measure. Compared to the ECP strategy, the base-case analysis shows that the AI strategy results in an additional cost of $242 per patient screened to a cost saving of $140 per patient screened, depending on health system size and patient volume. Notably, the AI screening strategy breaks even and demonstrates cost savings when a pediatric endocrine site screens 241 or more patients annually. Autonomous AI-based screening consistently results in more patients screened with greater cost savings in most health system scenarios.
用于儿科糖尿病视网膜病变(DRD)筛查的自主人工智能(AI)已证明具有安全性、有效性,以及增强健康公平性和提高临床医生工作效率的潜力。我们从卫生系统的角度,研究了自主人工智能策略与传统眼科护理提供者(ECP)策略在实施第一年的成本效益。增量成本效益比(ICER)是主要的结果指标。与ECP策略相比,基础案例分析表明,根据卫生系统规模和患者数量,人工智能策略导致每筛查一名患者额外增加242美元成本到节省140美元成本不等。值得注意的是,当儿科内分泌科室每年筛查241名或更多患者时,人工智能筛查策略实现收支平衡并显示出成本节约。在大多数卫生系统场景中,基于自主人工智能的筛查始终能筛查更多患者,并节省更多成本。