Rahul Awasthy, Meetu Malhotra, Michael L Seavers, Mark Newman
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The study applies key ML models to the PhysioNet dataset, encompassing hospital admissions and mortality records of heart failure patients at Zigong Fourth People's Hospital in Sichuan, China, between 2016 and 2019. In addition, the model outcomes for the PhysioNet dataset are compared with the Healthcare Cost and Utilization Project (HCUP) Maryland (MD) State Inpatient Data (SID) for 2014, a secondary dataset containing heart failure patients, to assess the generalizability of results across diverse healthcare settings and patient demographics. The ML models in this project demonstrate efficiencies surpassing 97.8% and specificities exceeding 95% in identifying HF patients at a higher risk and ranking them based on their mortality risk level. Utilizing this machine learning for the PP approach underscores risk assessment, supporting healthcare professionals in managing HF patients more effectively and allocating resources to those in immediate need, whether in hospital or telehealth settings.</p>","PeriodicalId":73078,"journal":{"name":"Frontiers in digital health","volume":"6 ","pages":"1379336"},"PeriodicalIF":3.2000,"publicationDate":"2024-07-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11250659/pdf/","citationCount":"0","resultStr":"{\"title\":\"Admission prioritization of heart failure patients with multiple comorbidities.\",\"authors\":\"Rahul Awasthy, Meetu Malhotra, Michael L Seavers, Mark Newman\",\"doi\":\"10.3389/fdgth.2024.1379336\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>The primary objective of this study was to enhance the operational efficiency of the current healthcare system by proposing a quicker and more effective approach for healthcare providers to deliver services to individuals facing acute heart failure (HF) and concurrent medical conditions. 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引用次数: 0
摘要
本研究的主要目的是通过提出一种更快速、更有效的方法,让医疗服务提供者为面临急性心力衰竭(HF)和并发症的患者提供服务,从而提高当前医疗系统的运行效率。该工具利用量身定制的机器学习(ML)模型,在急诊室收治患有慢性心脏病和并发症的心力衰竭患者时对其进行优先排序。该研究将关键的ML模型应用于PhysioNet数据集,其中包括中国四川省自贡市第四人民医院2016年至2019年期间心衰患者的入院和死亡记录。此外,PhysioNet 数据集的模型结果还与医疗成本和利用项目(HCUP)马里兰州(MD)2014 年住院患者数据(SID)(包含心衰患者的二级数据集)进行了比较,以评估结果在不同医疗环境和患者人口统计学中的通用性。该项目中的 ML 模型在识别高风险心衰患者并根据其死亡风险水平进行排序方面的效率超过 97.8%,特异性超过 95%。无论是在医院还是远程医疗环境中,利用这种机器学习的 PP 方法都能强调风险评估,支持医护人员更有效地管理高血压患者,并将资源分配给急需的患者。
Admission prioritization of heart failure patients with multiple comorbidities.
The primary objective of this study was to enhance the operational efficiency of the current healthcare system by proposing a quicker and more effective approach for healthcare providers to deliver services to individuals facing acute heart failure (HF) and concurrent medical conditions. The aim was to support healthcare staff in providing urgent services more efficiently by developing an automated decision-support Patient Prioritization (PP) Tool that utilizes a tailored machine learning (ML) model to prioritize HF patients with chronic heart conditions and concurrent comorbidities during Urgent Care Unit admission. The study applies key ML models to the PhysioNet dataset, encompassing hospital admissions and mortality records of heart failure patients at Zigong Fourth People's Hospital in Sichuan, China, between 2016 and 2019. In addition, the model outcomes for the PhysioNet dataset are compared with the Healthcare Cost and Utilization Project (HCUP) Maryland (MD) State Inpatient Data (SID) for 2014, a secondary dataset containing heart failure patients, to assess the generalizability of results across diverse healthcare settings and patient demographics. The ML models in this project demonstrate efficiencies surpassing 97.8% and specificities exceeding 95% in identifying HF patients at a higher risk and ranking them based on their mortality risk level. Utilizing this machine learning for the PP approach underscores risk assessment, supporting healthcare professionals in managing HF patients more effectively and allocating resources to those in immediate need, whether in hospital or telehealth settings.