Nicora Giovanna, Pe Samuele, Santangelo Gabriele, Billeci Lucia, Aprile Irene Giovanna, Germanotta Marco, Bellazzi Riccardo, Parimbelli Enea, Quaglini Silvana
Department of Electrical, Computer and Biomedical Engineering, University of Pavia, Pavia, Italy.
Institute of Clinical Physiology, National Research Council of Italy (CNR-IFC), Pisa, Italy.
J Neuroeng Rehabil. 2025 Apr 9;22(1):79. doi: 10.1186/s12984-025-01605-z.
Robotic technology is expected to transform rehabilitation settings, by providing precise, repetitive, and task-specific interventions, thereby potentially improving patients' clinical outcomes. Artificial intelligence (AI) and machine learning (ML) have been widely applied in different areas to support robotic rehabilitation, from controlling robot movements to real-time patient assessment. To provide an overview of the current landscape and the impact of AI/ML use in robotics rehabilitation, we performed a systematic review focusing on the use of AI and robotics in rehabilitation from a broad perspective, encompassing different pathologies and body districts, and considering both motor and neurocognitive rehabilitation. We searched the Scopus and IEEE Xplore databases, focusing on the studies involving human participants. After article retrieval, a tagging phase was carried out to devise a comprehensive and easily-interpretable taxonomy: its categories include the aim of the AI/ML within the rehabilitation system, the type of algorithms used, and the location of robots and sensors. The 201 selected articles span multiple domains and diverse aims, such as movement classification, trajectory prediction, and patient evaluation, demonstrating the potential of ML to revolutionize personalized therapy and improve patient engagement. ML is reported as highly effective in predicting movement intentions, assessing clinical outcomes, and detecting compensatory movements, providing insights into the future of personalized rehabilitation interventions. Our analysis also reveals pitfalls in the current use of AI/ML in this area, such as potential explainability issues and poor generalization ability when these systems are applied in real-world settings.
机器人技术有望通过提供精确、重复且针对特定任务的干预措施来改变康复环境,从而有可能改善患者的临床治疗效果。人工智能(AI)和机器学习(ML)已广泛应用于不同领域,以支持机器人康复,从控制机器人运动到实时患者评估。为了概述当前的现状以及人工智能/机器学习在机器人康复中的应用影响,我们进行了一项系统综述,从广义角度聚焦人工智能和机器人在康复中的应用,涵盖不同的病症和身体部位,并兼顾运动康复和神经认知康复。我们检索了Scopus和IEEE Xplore数据库,重点关注涉及人类参与者的研究。文章检索后,进行了一个标记阶段,以设计一个全面且易于解释的分类法:其类别包括人工智能/机器学习在康复系统中的目标、所使用的算法类型以及机器人和传感器的位置。所选的201篇文章涵盖多个领域和不同目标,如运动分类、轨迹预测和患者评估,展示了机器学习在彻底改变个性化治疗和提高患者参与度方面的潜力。据报道,机器学习在预测运动意图、评估临床治疗效果和检测代偿性运动方面非常有效,为个性化康复干预的未来提供了见解。我们的分析还揭示了当前在该领域使用人工智能/机器学习时存在的缺陷,例如当这些系统应用于实际环境时可能存在的可解释性问题和较差的泛化能力。