Clinician and Visitor Activity Patterns in an Intensive Care Unit Room: A Study to Examine How Ambient Monitoring Can Inform the Measurement of Delirium Severity and Escalation of Care.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-10-14 DOI:10.3390/jimaging10100253
Keivan Nalaie, Vitaly Herasevich, Laura M Heier, Brian W Pickering, Daniel Diedrich, Heidi Lindroth
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Abstract

The early detection of the acute deterioration of escalating illness severity is crucial for effective patient management and can significantly impact patient outcomes. Ambient sensing technology, such as computer vision, may provide real-time information that could impact early recognition and response. This study aimed to develop a computer vision model to quantify the number and type (clinician vs. visitor) of people in an intensive care unit (ICU) room, study the trajectory of their movement, and preliminarily explore its relationship with delirium as a marker of illness severity. To quantify the number of people present, we implemented a counting-by-detection supervised strategy using images from ICU rooms. This was accomplished through developing three methods: single-frame, multi-frame, and tracking-to-count. We then explored how the type of person and distribution in the room corresponded to the presence of delirium. Our designed pipeline was tested with a different set of detection models. We report model performance statistics and preliminary insights into the relationship between the number and type of persons in the ICU room and delirium. We evaluated our method and compared it with other approaches, including density estimation, counting by detection, regression methods, and their adaptability to ICU environments.

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重症监护病房中临床医生和访客的活动模式:一项研究,探讨环境监测如何为谵妄严重程度的测量和护理升级提供依据。
及早发现疾病严重程度的急性恶化对于有效管理病人至关重要,并能极大地影响病人的预后。计算机视觉等环境传感技术可以提供实时信息,从而影响早期识别和响应。本研究旨在开发一种计算机视觉模型,以量化重症监护室(ICU)病房中人员的数量和类型(临床医生与访客),研究他们的移动轨迹,并初步探索其与作为疾病严重程度标志的谵妄之间的关系。为了量化在场人数,我们利用重症监护病房的图像实施了一种通过检测进行计数的监督策略。为此,我们开发了三种方法:单帧法、多帧法和跟踪计数法。然后,我们探索了人的类型和在房间中的分布如何与谵妄的存在相对应。我们用一组不同的检测模型对所设计的管道进行了测试。我们报告了模型的性能统计以及对 ICU 病房中人员数量和类型与谵妄之间关系的初步见解。我们对我们的方法进行了评估,并将其与其他方法进行了比较,包括密度估算法、检测计数法、回归法以及它们对 ICU 环境的适应性。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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