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Cost‐effectiveness analysis of the artificial intelligence diagnosis support system for early gastric cancers

Shion Yonazu, Tsuyoshi OZAWA, Tamiji Nakanishi, Kentaro Ochiai, Junichi Shibata, Hiroyuki Osawa, Toshiaki Hirasawa, Yusuke Kato, Hisao Tajiri, Tomohiro Tada

2023DEN Open25 citationsDOIOpen Access PDF

Abstract

Objectives: The introduction of artificial intelligence into the medical field has improved the diagnostic capabilities of physicians. However, few studies have analyzed the economic impact of employing artificial intelligence technologies in the clinical environment. This study evaluated the cost-effectiveness of a computer-assisted diagnosis (CADx) system designed to support clinicians in differentiating early gastric cancers from non-cancerous lesions in Japan, where the universal health insurance system was introduced. Methods: infection. Decision trees with Markov models were built to analyze the cumulative cost-effectiveness of using CADx relative to the pre-artificial intelligence status quo, a condition reconstructed from data in published reports. After conducting a base-case analysis, we performed sensitivity analyses by modifying several parameters. The primary outcome was the incremental cost-effectiveness ratio. Results: Compared with the status quo as represented in the base-case analysis, the incremental cost-effectiveness ratio of CADx in the Japanese market was forecasted to be 11,093 USD per quality-adjusted life year. The sensitivity analyses demonstrated that the expected incremental cost-effectiveness ratios were within the willingness-to-pay threshold of 50,000 USD per quality-adjusted life year when the cost of the CAD was less than 104 USD. Conclusions: Using CADx for EGCs may decrease their misdiagnosis, contributing to improved cost-effectiveness in Japan.

Topics & Concepts

MedicineStatus quoPopulationQuality-adjusted life yearCost-effectiveness analysisCost effectivenessEnvironmental healthRisk analysis (engineering)EconomicsMarket economyGastric Cancer Management and OutcomesColorectal Cancer Screening and DetectionAI in cancer detection
Cost‐effectiveness analysis of the artificial intelligence diagnosis support system for early gastric cancers | Litcius