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Biomedic Signal Processing and Analysis of Neuroimaging from fNIRS for Human Pain

机译:fNIRS对人类疼痛的生物医学信号处理和神经影像分析

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One of major biomedical signals, pain, and its diagnosis has been critical but hard in clinical practice, in particularly for nonverbal patients. However, as we know that neuroimaging methods, such as functional near-infrared spectroscopy (fNIRS), have shown some great encouraging assessing neuronal function corresponding to nociception and pain. Specially some research results strongly suggest that neuroimaging, together with supports from machine learning, may be practically used to not only facilitate but also can predict different cognitive tasks over this challenge. The aim of this current research is to expand our previous studies by exploring the classification of fNIRS signals (oxyhaemoglobin) according to temperature level (we define cold and hot) and corresponding pain intensity (say low and high) by means of machine learning models. In order to find out the relations between temperatures and pain intensity, we defined and used the quantitative sensory testing to determine pain threshold and pain tolerance for the cold and heat in all eighteen-healthy people. The classification algorithm is based on a bag-of-words approach, a histogram representation was used in document classification based on the frequencies of extracted words and adapted for time series. Two machine learning algorithms were used separately, namely, K-nearest neighbor (K-NN) and support vector machines (SVM). A comparison between two sets of fNIRS channels was made in our classification task. The results showed that K-NN obtained slightly better results (92.1%) than SVM (91.3%) with all the 24 channels; however, the performances slightly dropped if using only channels from the region of interest with K-NN (91.5%) and SVM (90.8%). These research results encourage potential applications of fNIRS in the development of a physiologically based diagnosis of human pain, including in clinical parties.
机译:主要的生物医学信号之一,疼痛及其诊断一直很关键,但在临床实践中却很困难,特别是对于非言语患者。但是,我们知道,诸如功能近红外光谱(fNIRS)之类的神经影像学方法在评估与伤害感受和疼痛相对应的神经元功能方面显示出了极大的鼓舞性。特别是,一些研究结果强烈表明,神经影像技术与机器学习的支持一起,不仅可以实际用于促进而且还可以预测应对这一挑战的不同认知任务。这项当前研究的目的是通过机器学习模型根据温度水平(我们定义为冷和热)和相应的疼痛强度(比如说低和高)探索fNIRS信号(氧合血红蛋白)的分类,从而扩展我们以前的研究。为了找出温度与疼痛强度之间的关系,我们定义并使用了定量感官测试来确定所有十八名健康人群的疼痛阈值和对冷热的疼痛耐受性。分类算法基于词袋方法,在直方图表示中基于提取词的频率对文档进行分类,并适用于时间序列。分别使用了两种机器学习算法,即K最近邻(K-NN)和支持向量机(SVM)。在我们的分类任务中,对两组fNIRS通道之间进行了比较。结果表明,在所有24个通道中,K-NN的效果(92.1%)均比SVM(91.3%)略好;但是,如果仅使用来自感兴趣区域的K-NN(91.5%)和SVM(90.8%)的通道,性能会略有下降。这些研究结果鼓励fNIRS在基于生理的人类疼痛诊断(包括临床方面)的开发中的潜在应用。

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