Cost-utility analysis of prenatal diagnosis of congenital cardiac diseases using deep learning

Gary M. Ginsberg, Lior Drukker, Uri Pollak, Mayer Brezis

Cost Effectiveness and Resource Allocation(2024)

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摘要
Deep learning (DL) is a new technology that can assist prenatal ultrasound (US) in the detection of congenital heart disease (CHD) at the prenatal stage. Hence, an economic-epidemiologic evaluation (aka Cost-Utility Analysis) is required to assist policymakers in deciding whether to adopt the new technology. The incremental cost-utility ratios (CUR), of adding DL assisted ultrasound (DL-US) to the current provision of US plus pulse oximetry (POX), was calculated by building a spreadsheet model that integrated demographic, economic epidemiological, health service utilization, screening performance, survival and lifetime quality of life data based on the standard formula: CUR = Increase in Intervention Costs - Decrease in Treatment costs/Averted QALY losses of adding DL to US & POX US screening data were based on real-world operational routine reports (as opposed to research studies). The DL screening cost of 145 USD was based on Israeli US costs plus 20.54 USD for reading and recording screens. The addition of DL assisted US, which is associated with increased sensitivity (95
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关键词
Prenatal screening,Ultrasound,Congenital cardiac disease,Deep learning,Cost-utility analysis
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