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Decoding acute pain with combined EEG and physiological data

机译:结合脑电图和生理数据解码急性疼痛

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Across neuroscience research, clinical diagnostics, and engineering applications in pain evaluation and treatment, there is a need for an objective measure of pain experience and detection when it occurs. This detector should be reliable in real-world settings using easily accessible, non-invasive data sources. We present a simple yet robust paradigm for decoding pain using neural and physiological data including electroencephalography (EEG), pulse, and skin conductance (GSR) measurements. The present study uses multivariate classification to distinguish painful events from non-painful multimodal sensory stimuli. To classify the pain response and detect relevant data attributes, we employed a sparse logistic regression (SLR) machine learning protocol with automatic feature selection. EEG input consisted of time-frequency changes under trial conditions, and physiological data included fluctuations and spikes in pulse and skin conductance. Classification averaged 70% accuracy and selected between 5 and 15 features. In our experiment, pain was induced by cold stimulation which became noxious with prolonged exposure. Due to the long, ramp-and-hold nature of the stimulus, along with individual variability in sensitivity to pain, we did not observe specific rapid evoked responses or time-locked events common across participants. However, this format more closely resembles the experience of pain conditions requiring intervention which could be facilitated by a decoding system. The results illustrate the feasibility of developing a wireless pain detection system and give insight to important temporal, spectral, and spatial EEG events and physiological indicators of pain states. Success of the classifier protocol using these parameters could lead to the creation of a closed-loop system for decoding and intervention which can be applied in engineering and medical contexts.
机译:在疼痛评估和治疗的整个神经科学研究,临床诊断和工程应用中,需要一种客观的方法来评估疼痛的经历并在疼痛发生时进行检测。使用易于访问的非侵入性数据源,该检测器在现实环境中应该是可靠的。我们提出了一种简单而健壮的范例,用于使用神经和生理数据(包括脑电图(EEG),脉搏和皮肤电导(GSR)测量)来解码疼痛。本研究使用多元分类法将疼痛事件与非疼痛性多模态感觉刺激区分开。为了对疼痛反应进行分类并检测相关的数据属性,我们采用了具有自动特征选择功能的稀疏逻辑回归(SLR)机器学习协议。脑电图输入由试验条件下的时频变化组成,生理数据包括脉搏和皮肤电导的波动和峰值。分类的平均准确度为70%,并在5至15个特征之间进行选择。在我们的实验中,疼痛是由冷刺激引起的,长时间暴露会变得有害。由于刺激的长期,持续性,以及对疼痛敏感性的个体差异,我们没有观察到参与者之间常见的特定快速诱发反应或时间锁定事件。但是,这种格式更类似于需要干预的疼痛状况,而解码系统可以促进这种痛苦。结果说明了开发无线疼痛检测系统的可行性,并为重要的时间,频谱和空间EEG事件以及疼痛状态的生理指标提供了见识。使用这些参数的分类器协议的成功可能导致用于解码和干预的闭环系统的创建,该闭环系统可以在工程和医学环境中应用。

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