Transferability of a Sensing Mattress for Posture Classification from Research into Clinics.

Oriella Gnarra, Alexander Breuss, Lorenzo Rossi, Manuel Fujs, Samuel E J Knobel, Jan D Warncke, Stephan M Gerber, Claudio L A Bassetti, Robert Riener, Tobias Nef, Markus H Schmidt
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Abstract

Sleep is crucial in rehabilitation processes, promoting neural plasticity and immune functions. Nocturnal body postures can indicate sleep quality and frequent repositioning is required to prevent bedsores for bedridden patients after a stroke or spinal cord injury. Polysomnography (PSG) is considered the gold standard for sleep assessment. Unobtrusive methods for classifying sleep body postures have been presented with similar accuracy to PSG, but most evaluations have been done in research lab environments. To investigate the challenges in the usability of a previously validated device in a clinical setting, we recorded the sleep posture of 17 patients with a sensorized mattress. Ground-truth labels were collected automatically from a PSG device. In addition, we manually labeled the body postures using video data. This allowed us also to evaluate the quality of the PSG labels. We trained neural networks based on the VGG-3 architecture to classify lying postures and used a self-label correction method to account for noisy labels in the training data. The models trained with the video labels achieved a higher classification accuracy than those trained with the PSG labels (0.79 vs. 0.68). The self-label correction could further increase the models' scores based on video and PSG labels to 0.80 and 0.70, respectively. Unobtrusive sensors validated in clinics can, therefore, potentially improve the quality of care for bedridden patients and advance the field of rehabilitation.

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用于姿势分类的传感床垫从研究到临床的可移植性。
睡眠在康复过程中至关重要,可以促进神经可塑性和免疫功能。夜间的身体姿势可以指示睡眠质量,对于中风或脊髓损伤后卧床不起的患者,需要经常重新定位以防止褥疮。多导睡眠图(PSG)被认为是睡眠评估的黄金标准。已经提出了与PSG相似精度的非侵入性睡眠姿势分类方法,但大多数评估都是在研究实验室环境中进行的。为了研究先前验证的设备在临床环境中的可用性挑战,我们记录了17名使用传感床垫的患者的睡眠姿势。地面实况标签是从PSG设备自动收集的。此外,我们使用视频数据手动标记身体姿势。这也使我们能够评估PSG标签的质量。我们训练了基于VGG-3架构的神经网络来对躺着的姿势进行分类,并使用自标签校正方法来解释训练数据中的噪声标签。使用视频标签训练的模型比使用PSG标签训练的模式获得了更高的分类精度(0.79对0.68)。自标签校正可以进一步将模型基于视频和PSG标签的得分分别提高到0.80和0.70。因此,在诊所验证的无干扰传感器可以潜在地提高卧床患者的护理质量,并推进康复领域。
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