Department of Hospital Institutional Research, University of Miyazaki Hospital, 5200 Kibara Kiyotake-cho, Miyazaki, 8891692, Japan.
Graduate School of Medicine and Veterinary Medicine, University of Miyazaki, 5200 Kibara Kiyotake-cho, Miyazaki, 8891692, Japan.
J Med Syst. 2021 Oct 1;45(11):98. doi: 10.1007/s10916-021-01775-y.
This study aimed to develop a method to enable the financial estimation of each patient's uncertainty without focusing on healthcare technology. We define financial uncertainty (FU) as the difference between an actual amount of claim (AC) and the discounted present value of the AC (DAC). DAC can be calculated based on a discounted present value calculated using a cash flow, a period of investment, and a discount rate. The present study considered these three items as AC, the length of hospital stay, and the predicted mortality rate. The mortality prediction model was built using typical data items in standard level electronic medical records such as sex, age, and disease information. The performance of the prediction model was moderate because an area under curve was approximately 85%. The empirical analysis primarily compares the FU of the top 20 diseases with the actual AC using a retrospective cohort in the University of Miyazaki Hospital. The observational period is 5 years, from April 1, 2013, to March 31, 2018. The analysis demonstrates that the proportion of FU to actual AC is higher than 20% in low-weight children, patients with leukemia, brain tumor, myeloid leukemia, or non-Hodgkin's lymphoma. For these diseases, patients cannot avoid long hospitalization; therefore, the medical fee payment system should be designed based on uncertainty. Our method is both practical and generalizable because it uses a small number of data items that are required in standard electronic medical records. This method contributes to the decision-making processes of health policymakers.
本研究旨在开发一种方法,使每个患者的不确定性的财务评估无需关注医疗技术。我们将财务不确定性(FU)定义为实际索赔金额(AC)与 AC 的折扣现值(DAC)之间的差额。DAC 可以基于使用现金流、投资期和贴现率计算的折扣现值来计算。本研究将这三个项目视为 AC、住院时间和预测死亡率。死亡率预测模型是使用标准电子病历中的典型数据项(如性别、年龄和疾病信息)构建的。由于曲线下面积约为 85%,因此预测模型的性能中等。实证分析主要使用宫崎大学医院的回顾性队列比较前 20 种疾病的 FU 与实际 AC。观察期为 5 年,从 2013 年 4 月 1 日至 2018 年 3 月 31 日。分析表明,在低体重儿童、白血病、脑肿瘤、髓性白血病或非霍奇金淋巴瘤患者中,FU 占实际 AC 的比例高于 20%。对于这些疾病,患者无法避免长时间住院治疗;因此,应根据不确定性设计医疗费用支付系统。我们的方法既实用又具有普遍性,因为它使用了标准电子病历中所需的少量数据项。该方法有助于卫生政策制定者的决策过程。