以数智化驱动为导向的罕见病医疗救助政策相关研究的现状、趋势及机遇

A Review of the Data-Driven Policy Making of Medical Financial Assistance for Rare Diseases: Current Situation, Trends and Opportunities

  • 摘要: 因罕见病药品的风险性、高价格、小样本使用者等特征,以随机对照试验为基础的标准卫生技术评估无法有效助力罕见病医疗救助政策的待遇、筹资和费用支付设计。医疗保障的数字化转型为数据驱动的决策技术解决上述政策设计难题提供了机遇。本文以综述的方式识别了罕见病医疗救助政策设计的关键决策议题,讨论了罕见病医疗救助数字化转型的现状与趋势,并分析了数智化驱动的罕见病医疗救助政策设计的关键机遇。大数据分析技术、真实世界研究方法等数智驱动的决策有助于提高罕见病医疗救助的目标瞄准效率,改善筹资政策质量,并实现绩效为基础的补偿,这对推动罕见病医疗救助政策的改革与发展具有重要价值。

     

    Abstract: The inherent clinical uncertainties, substantial costs, and small patient cohorts of orphan drugs limit the applicability of randomized controlled trial (RCT)-based health technology assessments (HTAs) in guiding coverage criteria, sustainable financing models, and equitable reimbursement frameworks for medical financial assistance policies for rare diseases.The digital transformation in healthcare system leads to solutions to the challenges in designing the policy by using data-driven decision-making. This article summarizes the decision-making issues in policy design, discusses the current status and trends of digital transformation, and analyzes the important new opportunities for AI-driven policy design for medical financial assistance policies for rare diseases. Decision-making that is digital intelligence driven and using techniques such as big data analytics and real-world research methods will enhance targeting efficiency, improve the quality of financing, and realize the performance-based reimbursement in the medical financial assistance, providing significant value in facilitating the policy reform and development for rare diseases healthcare.

     

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