AI-based methodologies for exoskeleton-assisted rehabilitation of the lower limb: a review

Omar Coser, C. Tamantini, Paolo Soda, Loredana Zollo
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Abstract

Over the past few years, there has been a noticeable surge in efforts to design novel tools and approaches that incorporate Artificial Intelligence (AI) into rehabilitation of persons with lower-limb impairments, using robotic exoskeletons. The potential benefits include the ability to implement personalized rehabilitation therapies by leveraging AI for robot control and data analysis, facilitating personalized feedback and guidance. Despite this, there is a current lack of literature review specifically focusing on AI applications in lower-limb rehabilitative robotics. To address this gap, our work aims at performing a review of 37 peer-reviewed papers. This review categorizes selected papers based on robotic application scenarios or AI methodologies. Additionally, it uniquely contributes by providing a detailed summary of input features, AI model performance, enrolled populations, exoskeletal systems used in the validation process, and specific tasks for each paper. The innovative aspect lies in offering a clear understanding of the suitability of different algorithms for specific tasks, intending to guide future developments and support informed decision-making in the realm of lower-limb exoskeleton and AI applications.
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基于人工智能的外骨骼辅助下肢康复方法:综述
在过去几年中,利用机器人外骨骼设计新型工具和方法,将人工智能(AI)融入下肢损伤者康复治疗的努力明显激增。其潜在优势包括利用人工智能进行机器人控制和数据分析,促进个性化反馈和指导,从而实现个性化康复治疗。尽管如此,目前还缺乏专门针对人工智能在下肢康复机器人中应用的文献综述。为了填补这一空白,我们的工作旨在对 37 篇同行评审论文进行综述。本综述根据机器人应用场景或人工智能方法对所选论文进行了分类。此外,它还对每篇论文的输入特征、人工智能模型性能、入选人群、验证过程中使用的外骨骼系统和具体任务进行了详细总结,从而做出了独特的贡献。其创新之处在于让人们清楚地了解不同算法对特定任务的适用性,从而为下肢外骨骼和人工智能应用领域的未来发展提供指导,并支持知情决策。
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