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基于再入院量化评估指标的预测模型降低医疗成本的承诺:分析。

The Promise for Reducing Healthcare Cost with Predictive Model: An Analysis with Quantized Evaluation Metric on Readmission.

机构信息

Department of Biomedical Engineering, Faculty of Engineering, Universiti Malaya, 50603 Kuala Lumpur, Malaysia.

The Affiliated Changshu Hospital of Soochow University (Changshu No.1 People's Hospital), Changshu, Jiangsu 215500, China.

出版信息

J Healthc Eng. 2021 Nov 2;2021:9208138. doi: 10.1155/2021/9208138. eCollection 2021.

Abstract

Quality of care data has gained transparency captured through various measurements and reporting. Readmission measure is especially related to unfavorable patient outcomes that directly bends the curve of healthcare cost. Under the Hospital Readmission Reduction Program, payments to hospitals were reduced for those with excessive 30-day rehospitalization rates. These penalties have intensified efforts from hospital stakeholders to implement strategies to reduce readmission rates. One of the key strategies is the deployment of predictive analytics stratified by patient population. The recent research in readmission model is focused on making its prediction more accurate. As cost-saving improvements through artificial intelligent-based health solutions are expected, the broad economic impact of such digital tool remains unknown. Meanwhile, reducing readmission rate is associated with increased operating expenses due to targeted interventions. The increase in operating margin can surpass native readmission cost. In this paper, we propose a quantized evaluation metric to provide a methodological mean in assessing whether a predictive model represents cost-effective way of delivering healthcare. Herein, we evaluate the impact machine learning has had on transitional care and readmission with proposed metric. The final model was estimated to produce net healthcare savings at over $1 million given a 50% rate of successfully preventing a readmission.

摘要

通过各种测量和报告,护理质量数据已经变得更加透明。再入院指标尤其与不良患者预后有关,直接影响医疗成本的走势。在医院再入院率降低计划下,对于再入院率过高的医院,其支付款项会被减少。这些处罚促使医院利益相关者加强努力,实施降低再入院率的策略。其中一个关键策略是根据患者人群部署预测分析。最近的再入院模型研究侧重于提高其预测的准确性。由于预计基于人工智能的健康解决方案将带来节省成本的改进,因此这种数字工具的广泛经济影响尚不清楚。同时,由于针对性干预,降低再入院率会导致运营费用增加。由于针对性干预,运营利润率的增长可能会超过原生再入院成本。在本文中,我们提出了一个量化评估指标,以提供一种方法来评估预测模型是否代表提供医疗保健的具有成本效益的方式。在此,我们使用提出的指标来评估机器学习对过渡性护理和再入院的影响。鉴于 50%的成功预防再入院率,最终模型估计可产生超过 100 万美元的净医疗储蓄。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49f4/8577942/062c11895c67/JHE2021-9208138.001.jpg

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