1D-Convolutional Neural Networks can Quantify Therapy Content of Children and Adolescents Walking in a Robot-Assisted Gait Trainer.

Florian van Dellen, Cristina Gallego Vazquez, Rob Labruyere
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Abstract

Therapy content, consisting of device parameter settings and therapy instructions, is crucial for an effective robot-assisted gait therapy program. Settings and instructions depend on the therapy goals of the individual patient. While device parameters can be recorded by the robot, therapeutic instructions and associated patient responses are currently difficult to capture. This limits the transferability of successful therapeutic approaches between clinics. Here, we propose that 1D-convolutional neural networks can be used to relate patient behavior during individual steps to the instructions given as a surrogate for the patient's intent. Our model takes the surface electromyography patterns of two leg muscles as input and predicts the given instruction as output. We tested this approach with data from 20 healthy children walking in a robot-assisted gait trainer with 5 different instructions. Our model performs well, with a classification accuracy of almost 90%, when the instruction targets specific aspects of gait, such as step length. This shows that 1D-convolutional neural networks are a viable tool for quantifying therapy content. Thus, they could help compare therapy approaches and identify effective strategies.

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1D卷积神经网络可以量化儿童和青少年在机器人辅助步态训练器中行走的治疗内容。
治疗内容包括设备参数设置和治疗说明,对于有效的机器人辅助步态治疗程序至关重要。设置和说明取决于个体患者的治疗目标。虽然设备参数可以由机器人记录,但治疗指令和相关的患者反应目前很难捕捉。这限制了成功的治疗方法在诊所之间的可转移性。在这里,我们提出1D卷积神经网络可以用于将患者在各个步骤期间的行为与作为患者意图的替代品给出的指令联系起来。我们的模型以两条腿肌肉的表面肌电图模式作为输入,并预测给定的指令作为输出。我们用20名健康儿童的数据测试了这种方法,这些儿童在机器人辅助步态训练器中行走,有5种不同的指令。当指令针对步态的特定方面(如步长)时,我们的模型表现良好,分类准确率几乎达到90%。这表明1D卷积神经网络是量化治疗内容的可行工具。因此,他们可以帮助比较治疗方法并确定有效的策略。
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