重症监护透析资源分配:COVID-19大流行的影响和大数据分析的前景。

Frontiers in nephrology Pub Date : 2023-10-26 eCollection Date: 2023-01-01 DOI:10.3389/fneph.2023.1266967
Farrukh M Koraishy, Sandeep K Mallipattu
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引用次数: 0

摘要

2019冠状病毒病大流行给重症监护病房带来了前所未有的负担。由于需求增加而供应有限,包括透析机在内的重症护理资源变得稀缺,因此需要进行基于价值的成本效益分析和资源配给,以提供最高质量的患者护理。入住ICU的COVID-19患者中有很大一部分需要透析,导致透析机、护理人员、技术人员以及透析过滤器和溶液以及抗凝药物等消耗品等资源负担沉重。基于人工智能(AI)的大数据分析现在被用于多种数据驱动的医疗保健服务,包括医疗保健系统利用率的优化。许多因素可以影响对危重患者的透析资源分配,特别是在突发公共卫生事件期间,但目前,资源分配是通过少数传统因素确定的。考虑到医院系统中所有相关医疗信息和患者结果的智能分析可以改善资源分配、成本效益和护理质量。在这篇综述中,我们讨论了透析资源在重症监护中的利用,COVID-19大流行的影响,以及人工智能如何在未来的突发公共卫生事件中提高资源利用。这方面的研究应该是一个重要的优先事项。
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Dialysis resource allocation in critical care: the impact of the COVID-19 pandemic and the promise of big data analytics.

The COVID-19 pandemic resulted in an unprecedented burden on intensive care units (ICUs). With increased demands and limited supply, critical care resources, including dialysis machines, became scarce, leading to the undertaking of value-based cost-effectiveness analyses and the rationing of resources to deliver patient care of the highest quality. A high proportion of COVID-19 patients admitted to the ICU required dialysis, resulting in a major burden on resources such as dialysis machines, nursing staff, technicians, and consumables such as dialysis filters and solutions and anticoagulation medications. Artificial intelligence (AI)-based big data analytics are now being utilized in multiple data-driven healthcare services, including the optimization of healthcare system utilization. Numerous factors can impact dialysis resource allocation to critically ill patients, especially during public health emergencies, but currently, resource allocation is determined using a small number of traditional factors. Smart analytics that take into account all the relevant healthcare information in the hospital system and patient outcomes can lead to improved resource allocation, cost-effectiveness, and quality of care. In this review, we discuss dialysis resource utilization in critical care, the impact of the COVID-19 pandemic, and how AI can improve resource utilization in future public health emergencies. Research in this area should be an important priority.

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