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基于床褥压力传感器的卧床姿态分类人工神经网络

Artificial Neural Network for in-Bed Posture Classification Using Bed-Sheet Pressure Sensors.

出版信息

IEEE J Biomed Health Inform. 2020 Jan;24(1):101-110. doi: 10.1109/JBHI.2019.2899070. Epub 2019 Feb 13.

Abstract

Pressure ulcer prevention is a vital procedure for patients undergoing long-term hospitalization. A human body lying posture (HBLP) monitoring system is essential to reschedule posture change for patients. Video surveillance, the conventional method of HBLP monitoring, suffers from various limitations, such as subject's privacy, and field-of-view obstruction. We propose an autonomous method for classifying the four state-of-the-art HBLPs in healthy adults subjects: supine, prone, left and right lateral, with no sensors or cables attached on the body and no constraints imposed on the subject. Experiments have been conducted on 12 healthy adults (age 27.35 ± 5.39 years) using a collection of textile pressure sensors embedded in a cover placed under the bed sheet. Histogram of oriented gradients and local binary patterns were extracted and fed to a supervised artificial neural network classification model. The model was trained based on the scaled conjugate gradient backpropagation. A nested cross validation with an exhaustive outer validation loop was performed to validate the classification's generalization performance. A high testing prediction accuracy of 97.9% with a Cohen's Kappa coefficient of 97.2% has been interestingly obtained. Prone and supine postures were successfully separated in the classification, in contrast to the majority of previous similar works. We found that using the information of body weight distribution along with the shape and edges contributes to a better classification performance and the ability to separate supine and prone postures. The results are satisfactorily promising toward unobtrusively monitoring posture for ulcer prevention. The method can be used in sleep studies, post-surgical procedures, or applications requiring HBLP identification.

摘要

压疮预防是长期住院患者的重要程序。人体卧姿(HBLP)监测系统对于重新安排患者的姿势改变至关重要。视频监控是 HBLP 监测的传统方法,但存在各种限制,例如受试者的隐私和视野受阻。我们提出了一种自主方法,用于对健康成年人受试者的四种最先进的 HBLP 进行分类:仰卧、俯卧、左侧卧和右侧卧,无需在身体上附加传感器或电缆,也不对受试者施加任何限制。我们在 12 名健康成年人(年龄 27.35±5.39 岁)上进行了实验,使用了一种嵌入床单下的覆盖物中的纺织压力传感器的集合。提取了方向梯度直方图和局部二值模式,并将其输入到监督人工神经网络分类模型中。该模型基于比例共轭梯度反向传播进行训练。使用详尽的外部验证循环进行嵌套交叉验证,以验证分类的泛化性能。有趣的是,分类测试的预测准确率达到了 97.9%,Cohen's Kappa 系数为 97.2%。与大多数先前的类似工作相比,成功地对俯卧和仰卧姿势进行了分类。我们发现,使用体重分布信息以及形状和边缘有助于提高分类性能,并能够区分仰卧和俯卧姿势。结果令人满意,有望实现对压疮预防的非侵入式监测。该方法可用于睡眠研究、手术后程序或需要识别 HBLP 的应用程序。

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