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An Intelligent and Efficient Rehabilitation Status Evaluation Method: A Case Study on Stroke Patients

机译:智能高效的康复状态评价方法:卒中患者的案例研究

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摘要

Chronic patients' care encounters challenges, including high cost, lack of professionals, and insufficient rehabilitation state evaluation. Computer-supported cooperative work (CSCW), is capable of alleviating these issues, as it allows healthcare physicians (HCP) to quantify the workload and thus to enhance rehabilitation care quality. This study aims to design a deep learning algorithm Pose-AMGRU, a deep learning-based pose recognition algorithm combining Pose-Attention Mechanism and Gated Recurrent Unit (GRU), to monitor the human pose of rehabilitating patients efficiently. It gives instructions for HCP. To further substantiate the acceptance of our computer-supported method, we develop a multi-fusion theoretical model to determine factors that may influence the acceptance of HCP and verify the usefulness of the method above. Experiment results show Pose-AMGRU achieves an accuracy of 98.61% in the KTH dataset and 100% in the rehabilitation action dataset, which outperforms other algorithms. The efficiency running speed of Pose-AMGRU on the GTX1060 graphics card is up to 14.75FPS. which adapts to the home rehabilitation scene. As to acceptance evaluation, we verified the positive relationship between the computer-supported method and acceptance, and our model presents decent generalizability of stroke patients' care at the Second Affiliated Hospital of Zhengzhou University.
机译:慢性患者的护理遭遇挑战,包括高成本,缺乏专业人才,康复状态评估不足。计算机支持的合作工作(CSCW),能够减轻这些问题,因为它允许医疗保健医生(HCP)量化工作量,从而提高康复护理品质。本研究旨在设计一种深入学习算法的姿势 - Amgru,一种基于深度学习的姿势识别算法,组合姿势注意机制和门控复发单元(GRU),以有效地监测恢复患者的人类姿势。它给出了HCP的说明。为了进一步证实接受我们的计算机支持的方法,我们开发了一种多融合理论模型,以确定可能影响HCP接受并验证上述方法的有用性的因素。实验结果显示Pose-Amgru在Kth DataSet中实现了98.61%的精度,并且在康复行动数据集中100%越优于其他算法。 GTX1060显卡上的姿势运行速度高达14.75fps。它适应家庭康复场景。为了验收评估,我们验证了计算机支持的方法和验收之间的积极关系,我们的模型在郑州大学第二附属医院的中风患者护理方面具有体面的普遍性。

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