Durham School of Architectural Engineering & Construction, University of Nebraska-Lincoln, Omaha, Nebraska 68182-0681, USA.
Department of Mathematical and Statistical Sciences, University of Nebraska Omaha, Omaha, Nebraska 68182-0681, USA.
J Acoust Soc Am. 2023 Aug 1;154(2):1239-1247. doi: 10.1121/10.0020760.
Hospital noise can be problematic for both patients and staff and consistently is rated poorly on national patient satisfaction surveys. A surge of research in the last two decades highlights the challenges of healthcare acoustic environments. However, existing research commonly relies on conventional noise metrics such as equivalent sound pressure level, which may be insufficient to fully characterize the fluctuating and complex nature of the hospital acoustic environments experienced by occupants. In this study, unsupervised machine learning clustering techniques were used to extract patterns of activity in noise and the relationship to patient perception. Specifically, nine patient rooms in three adult inpatient hospital units were acoustically measured for 24 h and unsupervised machine learning clustering techniques were applied to provide a more detailed statistical analysis of the acoustic environment. Validation results of five different clustering models found two clusters, labeled active and non-active, using k-means. Additional insight from this analysis includes the ability to calculate how often a room is active or non-active during the measurement period. While conventional LAeq was not significantly related to patient perception, novel metrics calculated from clustered data were significant. Specifically, lower patient satisfaction was correlated with higher Active Sound Levels, higher Total Percent Active, and lower Percent Quiet at Night metrics. Overall, applying statistical clustering to the hospital acoustic environment offers new insights into how patterns of background noise over time are relevant to occupant perception.
医院噪音可能会给患者和医护人员都带来问题,并且在全国患者满意度调查中一直评价不佳。在过去的二十年中,大量研究强调了医疗保健声环境面临的挑战。然而,现有研究通常依赖于等效声压级等传统噪声指标,这些指标可能不足以充分描述患者所经历的医院声环境的波动和复杂性。在这项研究中,使用无监督机器学习聚类技术来提取噪声中的活动模式及其与患者感知的关系。具体来说,对三个成人住院病房的九间病房进行了 24 小时的声学测量,并应用无监督机器学习聚类技术对声环境进行更详细的统计分析。使用 k-均值对五种不同聚类模型的验证结果发现了两个聚类,分别标记为活跃和不活跃。此分析的其他见解包括计算测量期间房间处于活跃或不活跃状态的频率的能力。虽然传统的 LAeq 与患者感知没有显著关系,但从聚类数据计算出的新指标则有显著关系。具体来说,患者满意度较低与较高的活跃声级、较高的总活跃百分比和较低的夜间安静百分比相关。总体而言,将统计聚类应用于医院声环境提供了有关随时间变化的背景噪声模式如何与居住者感知相关的新见解。