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Using Computer Vision and Depth Sensing to Measure Healthcare Worker-Patient Contacts and Personal Protective Equipment Adherence Within Hospital Rooms

机译:使用计算机视觉和深度感测来测量医护室中医护人员与患者的接触以及个人防护设备的附着力

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摘要

>Background. We determined the feasibility of using computer vision and depth sensing to detect healthcare worker (HCW)-patient contacts to estimate both hand hygiene (HH) opportunities and personal protective equipment (PPE) adherence.>Methods. We used multiple Microsoft Kinects to track the 3-dimensional movement of HCWs and their hands within hospital rooms. We applied computer vision techniques to recognize and determine the position of fiducial markers attached to the patient's bed to determine the location of the HCW's hands with respect to the bed.To measure our system's ability to detect HCW-patient contacts, we counted each time a HCW's hands entered a virtual rectangular box aligned with a patient bed. To measure PPE adherence, we identified the hands, torso, and face of each HCW on room entry, determined the color of each body area, and compared it with the color of gloves, gowns, and face masks. We independently examined a ground truth video recording and compared it with our system's results.>Results. Overall, for touch detection, the sensitivity was 99.7%, with a positive predictive value of 98.7%. For gowned entrances, sensitivity was 100.0% and specificity was 98.15%. For masked entrances, sensitivity was 100.0% and specificity was 98.75%; for gloved entrances, the sensitivity was 86.21% and specificity was 98.28%.>Conclusions. Using computer vision and depth sensing, we can estimate potential HH opportunities at the bedside and also estimate adherence to PPE. Our fine-grained estimates of how and how often HCWs interact directly with patients can inform a wide range of patient-safety research.
机译:>背景。我们确定了使用计算机视觉和深度感应来检测医护人员(HCW)-患者接触情况的可行性,以估计手部卫生(HH)机会和个人防护设备(PPE)的依从性。 >方法。我们使用了多个Microsoft Kinects跟踪了医护室及其手在医院病房中的3维运动。我们应用计算机视觉技术来识别并确定附着在患者床上的基准标记的位置,从而确定HCW的手相对于床的位置。为了衡量系统检测HCW与患者的接触的能力,我们每次计数一次HCW的手进入了一个与病人床对齐的虚拟矩形盒子。为了测量PPE的依从性,我们在进入房间时识别了每个HCW的手,躯干和面部,确定了每个身体部位的颜色,并将其与手套,礼服和口罩的颜色进行了比较。我们独立检查了地面实况录像并将其与系统结果进行比较。>结果。总体而言,对于触摸检测,灵敏度为99.7%,阳性预测值为98.7%。对于穿入式入口,敏感性为100.0%,特异性为98.15%。对于有遮盖的入口,敏感性为100.0%,特异性为98.75%;对于带手套的入口,敏感性为86.21%,特异性为98.28%。>结论。使用计算机视觉和深度感应,我们可以估计床边潜在的HH机会,并估计对PPE的依从性。我们对医护人员直接与患者互动的方式和频率的细粒度估计可以为广泛的患者安全研究提供参考。

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