US Army DEVCOM Army Research Laboratory, Aberdeen Proving Ground, USA.
US Army Military Intelligence Corps., Fort Belvoir, USA.
Sci Data. 2023 Jul 6;10(1):434. doi: 10.1038/s41597-023-02114-1.
Valid approaches for interfacing with and deciphering neural commands related to movement are critical to understanding muscular coordination and developing viable prostheses and wearable robotics. While electromyography (EMG) has been an established approach for mapping neural input to mechanical output, there is a lack of adaptability to dynamic environments due to a lack of data from dynamic movements. This report presents data consisting of simultaneously recorded high density surface EMG, intramuscular EMG, and joint dynamics from the tibialis anterior during static and dynamic muscle contractions. The dataset comes from seven subjects performing three to five trials each of different types of muscle contractions, both static (isometric) and dynamic (isotonic and isokinetic). Each subject was seated in an isokinetic dynamometer such that ankle movement was isolated and instrumented with four fine wire electrodes and a 126-electrode surface EMG grid. This data set can be used to (i) validate methods for extracting neural signals from surface EMG, (ii) develop models for predicting torque output, or (iii) develop classifiers for movement intent.
有效的方法来对接和解读与运动相关的神经指令对于理解肌肉协调和开发可行的假肢和可穿戴机器人至关重要。虽然肌电图 (EMG) 已经成为一种将神经输入映射到机械输出的成熟方法,但由于缺乏动态运动的数据,它缺乏对动态环境的适应性。本报告介绍了来自七个受试者在静态和动态肌肉收缩期间同时记录的高密度表面肌电图、肌内肌电图和胫骨前肌的关节动力学数据。该数据集来自于七个受试者,每个受试者分别进行了三到五次不同类型的肌肉收缩试验,包括静态(等长)和动态(等张和等速)。每个受试者都坐在等速测力计上,使脚踝运动得以隔离,并配备了四个细金属丝电极和一个 126 电极表面肌电图网格。该数据集可用于:(i)验证从表面肌电图中提取神经信号的方法,(ii)开发预测扭矩输出的模型,或(iii)开发运动意图分类器。