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Toward mitigating pressure injuries: Detecting patient orientation from vertical bed reaction forces

机译:促使压力损伤:检测垂直床反应力的患者取向

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Introduction Prolonged bed rest without repositioning can lead to pressure injuries. However, it can be challenging for caregivers and patients to adhere to repositioning schedules. A device that alerts caregivers when a patient has remained in the same orientation for too long may reduce the incidence and/or severity of pressure injuries. This paper proposes a method to detect a person’s orientation in bed using data from load cells placed under the legs of a hospital grade bed. Methods Twenty able-bodied individuals were positioned into one of three orientations (supine, left side-lying, or right side-lying) either with no support, a pillow, or a wedge, and the head of the bed either raised or lowered. Breathing pattern characteristics extracted from force data were used to train two machine learning classification systems (Logistic Regression and Feed Forward Neural Network) and then evaluate for their ability to identify each participant’s orientation using a leave-one-participant-out cross-validation. Results The Feed Forward Neural Network yielded the highest orientation prediction accuracy at 94.2%. Conclusions The high accuracy of this non-invasive system’s ability to a participant’s position in bed shows potential for this algorithm to be useful in developing a pressure injury prevention tool.
机译:引言长时间卧床休息而不重新定位可导致压力损伤。然而,护理人员和患者将坚持重新定位的时间表可能是挑战。当患者保持在相同的方向上时警告护理人员的设备可能会降低压力损伤的发生率和/或严重程度。本文提出了一种使用从医院级床的腿下放置的装载单元中的数据来检测床上的人的方向的方法。方法将20个能够的体型定位成三个取向(仰卧,左侧躺着或右侧侧侧侧面之一,无论是没有支撑,枕头还是楔形,也都是升高或降低的床头。从力数据提取的呼吸模式特征用于培训两种机器学习分类系统(Logistic回归和馈送神经网络),然后评估他们使用休假 - 一个参与者交叉验证识别每个参与者的方向的能力。结果饲料前进神经网络产生的最高定向预测精度为94.2%。结论这种非侵入式系统对床上的参与者位置的能力的高精度显示出该算法在开发压力损伤工具方面是有用的潜力。

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