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Towards an Intelligent System for Clinical Guidance on Wheelchair Tilt and Recline Usage

机译:朝着轮椅倾斜和斜倚使用的临床指导智能系统

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We propose to construct an intelligent system for clinical guidance on how to effectively use power wheelchair tilt and recline functions. The motivations fall into the following two aspects. (1) People with spinal cord injury (SCI) are vulnerable to pressure ulcers. SCI can lead to structural and functional changes below the injury level that may predispose individuals to tissue breakdown. As a result, pressure ulcers can significantly affect the quality of life, including pain, infection, altered body image, and even mortality. (2) Clinically, wheelchair power seat function, i.e., tilt and recline, is recommended for relieving sitting-induced pressures. The goal is to increase skin blood flow for the ischemic soft tissues to avoid irreversible damage. Due to variations in the level and completeness of SCI, the effectiveness of using wheelchair tilt and recline to reduce pressure ulcer risks has considerable room for improvement. Our previous study indicated that the blood flow of people with SCI may respond very differently to wheelchair tilt and recline settings. In this study, we propose to use the artificial neural network (ANN) to predict how wheelchair power seat functions affect blood flow response to seating pressure. This is regression learning because the predicted outputs are numerical values. Besides the challenging nature of regression learning, ANN may suffer from the overfitting problem which, when occurring, leads to poor predictive quality (i.e., cannot generalize). We propose using the particle swarm optimization (PSO) algorithm to train ANN to mitigate the impact of overfitting so that ANN can make correct predictions on both existing and new data. Experimental results show that the proposed approach is promising to improve ANN’s predictive quality for new data.
机译:我们建议构建一个智能系统,了解如何有效地使用电源轮椅倾斜和斜倚函数的临床指导。动机属于以下两个方面。 (1)脊髓损伤(SCI)的人容易受到压力溃疡的伤害。 SCI可能导致低于伤害水平的结构和功能变化,可能会使个体倾向于组织破裂。结果,压力溃疡可以显着影响生活质量,包括疼痛,感染,身体形象,甚至死亡率。 (2)临床上,轮椅动力座椅功能,即倾斜和斜倚,建议用于缓解坐姿诱导的压力。目标是增加缺血软组织的皮肤血流,以避免不可逆的损坏。由于SCI的水平和完整性的变化,使用轮椅倾斜和斜线以降低压力溃疡风险的有效性具有相当大的改进空间。我们以前的一项研究表明,SCI的人们的血流可能与轮椅倾斜和斜倚设置非常不同。在这项研究中,我们建议使用人工神经网络(ANN)来预测轮椅动力座椅的功能如何影响血液流量对座位压力的响应。这是回归学习,因为预测的输出是数值。除了挑战性的回归学习的性质外,Ann可能遭受过度装备的问题,当发生时,导致预测质量差(即,不能概括)。我们建议使用粒子群优化(PSO)算法来培训ANN,以减轻过度拟合的影响,以便在现有数据和新数据上进行正确的预测。实验结果表明,该拟议的方法很有希望改善新数据的ANN的预测品质。

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