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双侧镜像运动提高了用于神经或肌电假肢控制监督学习的训练数据的准确性和精确性。

Bilaterally Mirrored Movements Improve the Accuracy and Precision of Training Data for Supervised Learning of Neural or Myoelectric Prosthetic Control.

作者信息

George Jacob A, Tully Troy N, Colgan Paul C, Clark Gregory A

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3297-3301. doi: 10.1109/EMBC44109.2020.9175388.

DOI:10.1109/EMBC44109.2020.9175388
PMID:33018709
Abstract

Intuitive control of prostheses relies on training algorithms to correlate biological recordings to motor intent. The quality of the training dataset is critical to run-time performance, but it is difficult to label hand kinematics accurately after the hand has been amputated. We quantified the accuracy and precision of labeling hand kinematics for two different training approaches: 1) assuming a participant is perfectly mimicking predetermined motions of a prosthesis (mimicked training), and 2) assuming a participant is perfectly mirroring their contralateral hand during identical bilateral movements (mirrored training). We compared these approaches in non-amputee individuals, using an infrared camera to track eight different joint angles of the hands in real-time. Aggregate data revealed that mimicked training does not account for biomechanical coupling or temporal changes in hand posture. Mirrored training was significantly more accurate and precise at labeling hand kinematics. However, when training a modified Kalman filter to estimate motor intent, the mimicked and mirrored training approaches were not significantly different. The results suggest that the mirrored training approach creates a more faithful but more complex dataset. Advanced algorithms, more capable of learning the complex mirrored training dataset, may yield better run-time prosthetic control.

摘要

假肢的直观控制依赖于训练算法,以将生物记录与运动意图相关联。训练数据集的质量对于运行时性能至关重要,但在手部截肢后,准确标记手部运动学特征却很困难。我们针对两种不同的训练方法,量化了标记手部运动学特征的准确性和精确性:1)假设参与者完美模仿假肢的预定动作(模仿训练),以及2)假设参与者在相同的双侧运动中完美镜像其对侧手(镜像训练)。我们在非截肢个体中比较了这些方法,使用红外摄像头实时跟踪手部的八个不同关节角度。汇总数据显示,模仿训练没有考虑生物力学耦合或手部姿势的时间变化。镜像训练在标记手部运动学特征方面明显更准确、更精确。然而,在训练一个改进的卡尔曼滤波器以估计运动意图时,模仿训练和镜像训练方法没有显著差异。结果表明,镜像训练方法创建了一个更忠实但更复杂的数据集。能够学习复杂镜像训练数据集的先进算法,可能会产生更好的运行时假肢控制效果。

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IEEE Trans Neural Syst Rehabil Eng. 2024;32:1974-1983. doi: 10.1109/TNSRE.2024.3400729. Epub 2024 May 22.
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