Arora Rhythm, Prajod Pooja, Nicora Matteo Lavit, Panzeri Daniele, Tauro Giovanni, Vertechy Rocco, Malosio Matteo, André Elisabeth, Gebhard Patrick
German Research Center for Artificial Intelligence, Saarbrücken, Germany.
Human-Centered Artificial Intelligence, Augsburg University, Augsburg, Germany.
Front Artif Intell. 2024 Nov 28;7:1441955. doi: 10.3389/frai.2024.1441955. eCollection 2024.
Individuals with diverse motor abilities often benefit from intensive and specialized rehabilitation therapies aimed at enhancing their functional recovery. Nevertheless, the challenge lies in the restricted availability of neurorehabilitation professionals, hindering the effective delivery of the necessary level of care. Robotic devices hold great potential in reducing the dependence on medical personnel during therapy but, at the same time, they generally lack the crucial human interaction and motivation that traditional in-person sessions provide.
To bridge this gap, we introduce an AI-based system aimed at delivering personalized, out-of-hospital assistance during neurorehabilitation training. This system includes a rehabilitation training device, affective signal classification models, training exercises, and a socially interactive agent as the user interface. With the assistance of a professional, the envisioned system is designed to be tailored to accommodate the unique rehabilitation requirements of an individual patient. Conceptually, after a preliminary setup and instruction phase, the patient is equipped to continue their rehabilitation regimen autonomously in the comfort of their home, facilitated by a socially interactive agent functioning as a virtual coaching assistant. Our approach involves the integration of an interactive socially-aware virtual agent into a neurorehabilitation robotic framework, with the primary objective of recreating the social aspects inherent to in-person rehabilitation sessions. We also conducted a feasibility study to test the framework with healthy patients.
The results of our preliminary investigation indicate that participants demonstrated a propensity to adapt to the system. Notably, the presence of the interactive agent during the proposed exercises did not act as a source of distraction; instead, it positively impacted users' engagement.
具有不同运动能力的个体通常受益于旨在促进其功能恢复的强化和专门康复治疗。然而,挑战在于神经康复专业人员的供应有限,这阻碍了提供必要水平护理的有效性。机器人设备在治疗期间减少对医务人员的依赖方面具有巨大潜力,但与此同时,它们通常缺乏传统面对面治疗所提供的关键人际互动和激励。
为了弥合这一差距,我们引入了一种基于人工智能的系统,旨在在神经康复训练期间提供个性化的院外协助。该系统包括一个康复训练设备、情感信号分类模型、训练练习以及作为用户界面的社交互动代理。在专业人员的协助下,设想的系统旨在进行定制,以适应个体患者独特的康复需求。从概念上讲,在初步设置和指导阶段之后,患者能够在社交互动代理作为虚拟教练助手的帮助下,在舒适的家中自主继续他们的康复方案。我们的方法涉及将一个交互式的具有社交意识的虚拟代理集成到神经康复机器人框架中,主要目标是重现面对面康复治疗中固有的社交方面。我们还进行了一项可行性研究,以在健康患者中测试该框架。
我们初步调查的结果表明,参与者表现出适应该系统的倾向。值得注意的是,在所提议练习期间交互式代理的存在并没有成为干扰源;相反,它对用户的参与产生了积极影响。