新型医院支付系统——大数据诊断干预包的开发

IF 1.7 Q3 HEALTH CARE SCIENCES & SERVICES
Hua Xie , Xin Cui , Xiaohua Ying , Xiaohan Hu , Jianwei Xuan , Su Xu
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引用次数: 1

摘要

诊断相关组(DRG)是发达国家最常用的前瞻性医院支付平台。DRG系统的一个主要限制是,DRG分组在对底层资源需求进行基准测试时不够同质。我们开发了一个新颖的医院支付和管理系统,称为大数据诊断;干预包(BD-DIP),采用类似的病例混合索引(CMI)原则,但分组是基于ICD-10和ICD-9 v3代码的独特组合。BD-DIP的最初原型是在上海利用医院出院记录开发的,然后在中国广州进行试点。DB-DIP系统的平均变异系数比美国DRG系统小1 / 3左右。试点评估的结果表明,BD-DIP的引入使医院节省了约5%的预算,并显著提高了医院护理效率,包括提高了机构CMI,降低了住院率,缩小了医院收费的变化,降低了患者分担费用的负担。医院监测工具的实施导致发现了潜在的不正常做法,以便进行进一步的审计和调查。与基于drg的支付模式相比,BD-DIP平台在群体内的资源利用更加均匀、设计简单、分组动态、反映真实治疗途径和成本的报销价值以及易于实施等方面具有许多优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development of a novel hospital payment system – Big data diagnosis & intervention Packet

Development of a novel hospital payment system – Big data diagnosis & intervention Packet

Development of a novel hospital payment system – Big data diagnosis & intervention Packet

Development of a novel hospital payment system – Big data diagnosis & intervention Packet

The diagnosis related group (DRG) was the most commonly used prospective hospital payment platform in developed countries. One of the major limitations of the DRG system is that the DRG grouping is not sufficiently homogeneous in benchmarking underlying resource needs. We developed a novel hospital payment and management system called Big Data Diagnosis & Intervention Packet (BD-DIP) by applying the similar case mix index (CMI) principles but the grouping is based on unique combination of ICD-10 and ICD-9 v3 codes. The initial prototype of BD-DIP was developed using hospital discharge records in Shanghai and then piloted in Guangzhou, China. The average coefficient of variation of the DB-DIP is about one-third smaller than the US DRG system. Results from the pilot evaluation showed that introduction of the BD-DIP lead to about 5% hospital budget savings and notable improvement in hospital care efficiency, including increased institutional CMI, lower admission rates, smaller variation in hospital charges, and lower patient cost-sharing burdens. The implementation of hospital monitoring tools resulted in identification of potential irregular practices to enable further auditing and investigation. The BD-DIP platform has a number of advantages over DRG-based payment models in terms of more homogeneous resource utilization within groups, design simplicity, dynamic in grouping, and reimbursement value in reflecting real-world treatment pathways and costs, and easy to implement.

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来源期刊
Health Policy Open
Health Policy Open Medicine-Health Policy
CiteScore
3.80
自引率
0.00%
发文量
21
审稿时长
40 weeks
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