医院住院病人抢救过程建模与分析:一种马尔可夫链方法

Xiaolei Xie, Jingshan Li, Colleen H. Swartz, Yue Dong
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引用次数: 1

摘要

提高患者安全是医院管理的重中之重。在医院,住院病人在住院期间可能会出现临床恶化。护士、医生和快速反应小组(RRT)的快速和适当治疗对抢救患者至关重要。本文引入一种分析方法,对医院住院抢救过程进行建模和分析。提出了一种连续时间马尔可夫链模型来描述患者状态,并分析不同患者状态之间的转换,如风险、无风险、护理提供者的干预或提升到重症监护等。对于单个病例,建立了计算患者停留在不同状态的概率的封闭公式。提出了一种近似方法,称为共享资源迭代(SRI)方法,用于研究多患者场景。结果表明,这种迭代是收敛的,并能获得较高的患者状态概率估计精度。该方法为分析HIR过程和研究提高患者安全的策略提供了定量工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and analysis of hospital inpatient rescue process: A Markov chain approach
Improving patient safety is the top priority for hospital management. On the hospital floor, an inpatient may experience clinical deterioration during his/her stay. Quick and appropriate treatment from the nurse, physician, and rapid response team (RRT) is essential to rescue the patient. In this paper, we introduce an analytical method to model and analyze the hospital inpatient rescue (HIR) process. A continuous time Markov chain model is presented to characterize the patient status and analyze the transitions between different patient states, such as risk, non-risk, intervention by the care provider, or elevation to intensive care, etc. Closed formulas to calculate the probability of the patient staying in different states are developed for single patient case. An approximation method, referred to as the shared resource iteration (SRI) approach, is proposed to study the multiple patients scenario. It is shown that such an iteration is convergent and results in a high accuracy estimation of patient state probability. This method provides a quantitative tool to analyze the HIR process and investigate strategies to improve patient safety.
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