Autonomous detection of disruptions in the intensive care unit using deep mask RCNN.

Kumar Rohit Malhotra, Anis Davoudi, Scott Siegel, Azra Bihorac, Parisa Rashidi
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引用次数: 20

Abstract

Patients staying in the Intensive Care Unit (ICU) have a severely disrupted circadian rhythm. Due to patients' critical medical condition, ICU physicians and nurses have to provide round-the-clock clinical care, further disrupting patients' circadian rhythm. Mistimed family visits during rest-time can also disrupt patients' circadian rhythm. Currently, such effects are only reported based on hospital visitation policies rather than the actual number of visitors and care providers in the room. To quantify visitation disruptions, we used a deep Mask R-CNN model, a deep learning framework for object instance segmentation to detect and quantify the number of individuals in the ICU unit. This study represents the first effort to automatically quantify visitations in an ICU room, which could have implications in terms of policy adjustment, as well as circadian rhythm investigation. Our model achieved precision of 0.97 and recall of 0.67, with F1 score of 0.79 for detecting disruptions in the ICU units.

Abstract Image

使用深度掩膜RCNN自动检测重症监护室的干扰。
入住重症监护室(ICU)的患者昼夜节律严重紊乱。由于患者的病情危急,ICU医生和护士不得不提供全天候的临床护理,这进一步扰乱了患者的昼夜节律。休息时间不及时的探亲也会扰乱患者的昼夜节律。目前,此类影响仅根据医院探视政策而非房间内访客和护理人员的实际人数进行报告。为了量化探视中断,我们使用了深度Mask R-CNN模型,这是一种用于对象实例分割的深度学习框架,用于检测和量化ICU单元中的个体数量。这项研究首次尝试自动量化ICU病房的探视情况,这可能对政策调整和昼夜节律调查产生影响。我们的模型实现了0.97的精度和0.67的召回率,在检测ICU单元中断时F1得分为0.79。
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