Singh Vanita
Economics and Public Policy, Management Development Institute, Gurgaon, India.
Health Econ Policy Law. 2024 Oct;19(4):429-445. doi: 10.1017/S174413312400001X. Epub 2024 Mar 4.
Using Demographic and Health Survey data (2015-16) from the state of Andhra Pradesh, we estimate the differential probability of hysterectomy (removal of uterus) for women (aged 15-49 years) covered under publicly funded health insurance (PFHI) schemes relative to those not covered. To reduce the extent of selection bias into treatment assignment (PFHI coverage) we use matching methods, propensity score matching, and coarsened exact matching, achieving a comparable treatment and control group. We find that PFHI coverage increases the probability of undergoing a hysterectomy by 7-11 percentage points in our study sample. Sub-sample analysis indicates that the observed increase is significant for women with lower education levels and higher order parity. Additionally, we perform a test of no-hidden bias by estimating the treatment effect on placebo outcomes (doctor's visit, health check-up). The robustness of the results is established using different matching specifications and sensitivity analysis. The study results are indicative of increased demand for surgical intervention associated with PFHI coverage in our study sample, suggesting a need for critical evaluation of the PFHI scheme design and delivery in the context of increasing reliance on PFHI schemes for delivering specialised care to poor people, neglect of preventive and primary care, and the prevailing fiscal constraints in the healthcare sector.
利用安得拉邦2015 - 2016年的人口与健康调查数据,我们估算了参加公共资助医疗保险(PFHI)计划的15至49岁女性进行子宫切除术(切除子宫)的概率与未参保女性的概率差异。为了减少治疗分配(PFHI覆盖)中的选择偏差,我们使用了匹配方法、倾向得分匹配和精确粗匹配,从而得到了具有可比性的治疗组和对照组。我们发现,在我们的研究样本中,PFHI覆盖使进行子宫切除术的概率提高了7至11个百分点。子样本分析表明,观察到的增加对教育水平较低和多胎次的女性具有显著意义。此外,我们通过估计对安慰剂结果(看医生、健康检查)的治疗效果来检验是否存在隐藏偏差。使用不同的匹配规范和敏感性分析确定了结果的稳健性。研究结果表明,在我们的研究样本中,与PFHI覆盖相关的手术干预需求增加,这表明在越来越依赖PFHI计划为贫困人口提供专科护理、忽视预防和初级护理以及医疗保健部门普遍存在财政限制的背景下,需要对PFHI计划的设计和实施进行严格评估。