IEEE Int Conf Rehabil Robot. 2022 Jul;2022:1-6. doi: 10.1109/ICORR55369.2022.9896509.
Robotic-based rehabilitation administered by means of serious games certainly represents the frontier of rehabilitation treatments, offering a high degree of customization of therapy, to meet individual patients' needs and to tailor a proper rehabilitation therapy. Despite the rush on developing complex rehabilitation systems, they often do not provide clinicians with long-term information about the outcome of rehabilitation, thus, not supporting them in the initial set-up phase of the therapy. In this paper, a Random-Forest based system was trained and tested to provide a prediction at discharge of several clinical scales outcomes (i.e. FMA, ARAT, and MI), having clinical scale scores and measures from the robotic system at the enrollment as inputs. The dataset includes 25 post-stroke patients from different clinics, that underwent a variable number of days of rehabilitation with a robotic treatment. Results have shown that the system is able to predict the final outcome with an accuracy ranging from 60% to 73% on the selected scales. Also results provide information on which variables are more relevant for the prediction of outcome of therapy, in particular clinical scales scores such as FMA, ARAT, MI, NRS, PCS, and MCS and robotic automatically extracted measurements related to patient's work expenditure and time. This supports the idea of using such a system in a clinical environment in a decision support tool for clinicians.
基于机器人的康复治疗,通过严肃游戏进行管理,无疑代表了康复治疗的前沿,提供了高度个性化的治疗,以满足个体患者的需求,并定制适当的康复治疗方案。尽管复杂的康复系统开发热潮汹涌,但它们往往无法为临床医生提供关于康复结果的长期信息,因此无法在治疗的初始设置阶段为他们提供支持。在本文中,我们训练和测试了一个基于随机森林的系统,以根据在入组时从机器人系统获得的临床量表评分和测量值,对几个临床量表的出院预测结果(即 FMA、ARAT 和 MI)进行预测。该数据集包括来自不同诊所的 25 名脑卒中患者,他们接受了不同天数的机器人治疗康复。结果表明,该系统能够在选定的量表上以 60%到 73%的准确率预测最终结果。此外,结果还提供了有关哪些变量对治疗结果预测更为重要的信息,特别是临床量表评分,如 FMA、ARAT、MI、NRS、PCS 和 MCS,以及与患者工作投入和时间相关的机器人自动提取的测量值。这支持了在临床环境中使用此类系统作为临床医生决策支持工具的想法。