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将机器学习与机器人康复相结合可能有助于预测中风幸存者上肢运动功能的恢复情况。

Integrating Machine Learning with Robotic Rehabilitation May Support Prediction of Recovery of the Upper Limb Motor Function in Stroke Survivors.

作者信息

Quattrocelli Sara, Russo Emanuele Francesco, Gatta Maria Teresa, Filoni Serena, Pellegrino Raffaello, Cangelmi Leonardo, Cardone Daniela, Merla Arcangelo, Perpetuini David

机构信息

Department of Engineering and Geology, University "G. d'Annunzio" of Chieti-Pescara, 65127 Pescara, Italy.

Padre Pio Foundation and Rehabilitation Centers, 71013 San Giovanni Rotondo, Italy.

出版信息

Brain Sci. 2024 Jul 29;14(8):759. doi: 10.3390/brainsci14080759.

Abstract

Motor impairment is a common issue in stroke patients, often affecting the upper limbs. To this standpoint, robotic neurorehabilitation has shown to be highly effective for motor function recovery. Notably, Machine learning (ML) may be a powerful technique able to identify the optimal kind and intensity of rehabilitation treatments to maximize the outcomes. This retrospective observational research aims to assess the efficacy of robotic devices in facilitating the functional rehabilitation of upper limbs in stroke patients through ML models. Specifically, clinical scales, such as the Fugl-Meyer Assessment (A-D) (FMA), the Frenchay Arm Test (FAT), and the Barthel Index (BI), were used to assess the patients' condition before and after robotic therapy. The values of these scales were predicted based on the patients' clinical and demographic data obtained before the treatment. The findings showed that ML models have high accuracy in predicting the FMA, FAT, and BI, with R-squared (R) values of 0.79, 0.57, and 0.74, respectively. The findings of this study suggest that integrating ML into robotic therapy may have the capacity to establish a personalized and streamlined clinical practice, leading to significant improvements in patients' quality of life and the long-term sustainability of the healthcare system.

摘要

运动功能障碍是中风患者的常见问题,通常影响上肢。从这个角度来看,机器人神经康复已被证明对运动功能恢复非常有效。值得注意的是,机器学习(ML)可能是一种强大的技术,能够确定最佳的康复治疗类型和强度,以最大限度地提高治疗效果。这项回顾性观察研究旨在通过ML模型评估机器人设备在促进中风患者上肢功能康复方面的疗效。具体而言,使用临床量表,如Fugl-Meyer评估(A-D)(FMA)、Frenchay上肢测试(FAT)和Barthel指数(BI),来评估机器人治疗前后患者的状况。这些量表的值是根据治疗前获得的患者临床和人口统计学数据预测的。研究结果表明,ML模型在预测FMA、FAT和BI方面具有较高的准确性,R平方(R)值分别为0.79、0.57和0.74。本研究结果表明,将ML整合到机器人治疗中可能有能力建立个性化和简化的临床实践,从而显著改善患者的生活质量和医疗系统的长期可持续性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6553/11352886/2f294c11d75b/brainsci-14-00759-g001.jpg

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