Improving Hand Hygiene Compliance through Collaborative Computational Design

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Abstract

Hand sanitization by healthcare staff remains one of the most effective ways for controlling infection in healthcare settings. However, predicting faithful adherence to Hand Hygiene Compliance (HHC) is difficult in complex environments such as inpatient hospital settings. The main challenge is understanding how different components of human and built systems interact to achieve specific goals such as HHC at the critical moments of care delivery. The aim of this explorative study was to evaluate how Human Factors derived visual salience cues and proximity-compatibility principles might be used in the design of healthcare spaces to support nurse moments of HHC through increased perceived behavioral control and intention. The investigative team used a Collaborative Computational Scenario Planning (CCSP) Model approach to determine the integrative effects of reinforcing and detracting operational and environmental factors on discrete moments of HHC behavior. Supervised Machine Learning analysis was conducted on data collected by a large academic medical center that included HHC observance in clinical staff spanning from 2017 to 2021 in two inpatient hospital units. The probabilistic outcomes of unit based HHC observance likelihood were used to compute Fuzzy Cognitive Model Edge Probabilities between Hand Hygiene (HH) cues and detected HHC at key moments. Hospital infection control experts were then engaged to identify the weight of various reinforcing and detracting operational and environmental factors contributing to HHC observance. Combining the quantitative and qualitative methods, allowed the team to then develop integrative CCSP models which facilitated predictive insight into the development of targeted environmental improvements that might contribute to HHC control and intention to support safer patient care.
通过协同计算设计提高手卫生依从性
卫生保健人员的手部消毒仍然是卫生保健环境中控制感染的最有效方法之一。然而,预测忠实遵守手卫生合规(HHC)是困难的在复杂的环境,如住院医院设置。主要的挑战是了解人类和建筑系统的不同组成部分如何相互作用,以在提供医疗服务的关键时刻实现特定目标,例如HHC。本探索性研究的目的是评估人为因素如何衍生出视觉显著性线索和接近性兼容原则,通过增加感知行为控制和意图,在医疗保健空间设计中用于支持HHC的护理时刻。调查小组使用协作计算情景规划(CCSP)模型方法来确定强化和削弱操作和环境因素对HHC行为离散时刻的综合影响。对一家大型学术医疗中心收集的数据进行了监督式机器学习分析,其中包括2017年至2021年两个住院医院单位临床工作人员的HHC观察情况。利用基于单位的HHC观察似然的概率结果,计算关键时刻手部卫生(HH)提示与检测到的HHC之间的模糊认知模型边缘概率。然后聘请医院感染控制专家来确定各种增强和削弱HHC遵守的操作和环境因素的权重。将定量和定性方法相结合,使团队能够开发综合CCSP模型,从而促进对有针对性的环境改善的发展的预测性洞察,这可能有助于HHC控制和支持更安全的患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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