物理医学与康复
运动学
计算机科学
康复
冲程(发动机)
机器人学
机电一体化
下肢
上肢
数据收集
日常生活活动
电动机控制
康复机器人
人工智能
人机交互
医学
机器人
心理学
物理疗法
神经科学
工程类
外科
物理
统计
机械工程
经典力学
数学
作者
Giuseppe Averta,Federica Barontini,Vincenzo Catrambone,Sami Haddadin,Giacomo Handjaras,Jeremia P. O. Held,Tingli Hu,Eike Jakubowitz,Christoph M. Kanzler,Johannes Kühn,Olivier Lambercy,Andrea Leo,Alina Obermeier,Emiliano Ricciardi,Anne Schwarz,Gaetano Valenza,Antonio Bicchi,Matteo Bianchi
出处
期刊:GigaScience
[Oxford University Press]
日期:2021-06-01
卷期号:10 (6)
被引量:29
标识
DOI:10.1093/gigascience/giab043
摘要
Abstract Background Shedding light on the neuroscientific mechanisms of human upper limb motor control, in both healthy and disease conditions (e.g., after a stroke), can help to devise effective tools for a quantitative evaluation of the impaired conditions, and to properly inform the rehabilitative process. Furthermore, the design and control of mechatronic devices can also benefit from such neuroscientific outcomes, with important implications for assistive and rehabilitation robotics and advanced human-machine interaction. To reach these goals, we believe that an exhaustive data collection on human behavior is a mandatory step. For this reason, we release U-Limb, a large, multi-modal, multi-center data collection on human upper limb movements, with the aim of fostering trans-disciplinary cross-fertilization. Contribution This collection of signals consists of data from 91 able-bodied and 65 post-stroke participants and is organized at 3 levels: (i) upper limb daily living activities, during which kinematic and physiological signals (electromyography, electro-encephalography, and electrocardiography) were recorded; (ii) force-kinematic behavior during precise manipulation tasks with a haptic device; and (iii) brain activity during hand control using functional magnetic resonance imaging.
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