疾病药物经济学自动评价 Skill — 对任意指定疾病,自动设计适合的 Markov / 决策树模型框架, 联网遴选当前最常用治疗药物,搜索模型参数(有效率、AE率、效用值、费用等), 以中国最新人均 GDP(1倍)为 QALY 支付阈值,计算每种药物的增量成本效果比(ICER)与 货币化净收益(NMB),从大到小排序,最终输出完整 Python 代码 + 科学论文格式报告。 Disease Pharmacoeconomics Auto-Evaluation Skill — For any specified disease, automatically designs an appropriate Markov or decision tree model framework, identifies the most commonly used treatment drugs through web-based search, retrieves model parameters (response rate, adverse event rate, utility values, costs, etc.), uses China's latest per capita GDP (1×) as the WTP threshold per QALY, calculates ICER and NMB for each drug, ranks from highest to lowest, and outputs complete Python code plus a scientific paper–style report. 触发词:药物经济学评价、CEA、成本效果分析、ICER、NMB、多药对比、治疗方案比较、 cost-effectiveness analysis, economic evaluation, multiple drugs, QALY, NMB ranking。

Install

openclaw skills install @tlb1201/disease-cea-auto