Analysis of the Impact of the Presence of Physical Pain in fNIRS-based BCI Systems

A. Subramanian, F. Shamsi, L. Najafizadeh
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Abstract

An important application of brain computer interface devices (BCIs) is in assistive systems for patients with motor and communication disabilities. Due to their condition, these patients may experience pain. However, how the presence of pain influences the operation of such BCIs has not been fully investigated. This paper studies the impact of the presence of acute pain on the classification accuracy of a BCI, which employs functional near infrared spectroscopy (fNIRS) for brain signal acquisition. Cortical signals are obtained in the presence and absence of an external pain stimulus, while participants perform two mental arithmetic tasks. Convolutional neural network (CNN) is used to classify the tasks. It is observed that when the classifier is trained on pain-free data and tested on data obtained in the presence of pain, the classification accuracy significantly drops. Next, multi-label classification is performed to simultaneously identify the presence of pain and classify the tasks, further demonstrating that the distinction of tasks in the presence of pain is challenging. Finally, to mitigate the impact of pain, it is proposed to train the model collectively on data obtained in the presence and the absence of pain. It is observed that using this approach significantly improves the classification accuracy. Our results suggest that it is critical to include data obtained in the presence of pain in the training process of the classification models, when designing BCIs in assistive systems for patients.
基于fnir的脑机接口系统中存在身体疼痛的影响分析
脑机接口设备(BCIs)的一个重要应用是在运动和交流障碍患者的辅助系统中。由于他们的病情,这些患者可能会感到疼痛。然而,疼痛的存在如何影响此类脑机接口的操作尚未得到充分的研究。本文研究了急性疼痛的存在对脑机接口(BCI)分类准确度的影响,该脑机接口采用功能性近红外光谱(fNIRS)进行脑信号采集。当参与者执行两项心算任务时,在有和没有外部疼痛刺激的情况下获得皮层信号。使用卷积神经网络(CNN)对任务进行分类。可以观察到,当分类器在无痛的数据上进行训练,并在有痛的数据上进行测试时,分类准确率明显下降。接下来,进行多标签分类,同时识别疼痛的存在并对任务进行分类,进一步证明在疼痛存在的情况下区分任务是具有挑战性的。最后,为了减轻疼痛的影响,建议在存在和不存在疼痛的情况下对模型进行集体训练。使用该方法可以显著提高分类精度。我们的研究结果表明,在为患者设计辅助系统中的脑机接口时,在分类模型的训练过程中包括疼痛存在的数据是至关重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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