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fNIRS Approach to Pain Assessment for Non-verbal Patients

机译:fNIRS方法用于非语言患者的疼痛评估

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The absence of verbal communication in some patients (e.g., critically ill, suffering from advanced dementia) difficults their pain assessment due to the impossibility to self-report pain. Functional near-infrared spectroscopy (fNIRS) is a non-invasive technology that has showed promising results in assessing cortical activity in response to painful stimulation. In this study, we used fNIRS signals to predict the state of pain in humans using machine learning methods. Eighteen healthy subjects were stimulated using thermal stimuli with a thermode, while their cortical activity was recorded using fNIRS. Bag-of-words (BoW) model was used to represent each fNIRS time series. The effect of different step sizes, window lengths, and codebook sizes was investigated to improve computational cost and generalization. In addition, we explored the effect of choosing different features as neurological biomarkers in three different domains: time, frequency, and time-frequency (wavelet). Classification on the histogram representation was performed using K-nearest neighbours (K-NN). The performance is evaluated by using leave-one-out cross validation and with different nearest neighbours. The results showed that wavelet-based features produced the highest accuracy (88.33%) to distinguish between heat and cold pain while discriminate between low and high pain. It is possible to use fNIRS to assess pain in response to four types of thermal pain. However, future research is needed for the assessment of pain in clinical settings.
机译:由于无法自我报告疼痛,一些患者没有口头交流(例如,重病,患有晚期痴呆症)使他们的疼痛评估变得困难。功能性近红外光谱法(fNIRS)是一项非侵入性技术,在评估对疼痛刺激的皮层活动方面已显示出令人鼓舞的结果。在这项研究中,我们使用fNIRS信号通过机器学习方法来预测人类的疼痛状态。 18名健康受试者使用带有热电极的热刺激刺激,而其皮层活动则使用fNIRS记录。词袋(BoW)模型用于表示每个fNIRS时间序列。研究了不同步长,窗口长度和码本大小的影响,以提高计算成本和推广效果。此外,我们探讨了在三个不同的领域中选择不同的特征作为神经生物学标志的效果:时间,频率和时频(小波)。使用K最近邻居(K-NN)对直方图表示进行分类。通过使用留一法交叉验证以及与其他最近的邻居进行性能评估。结果表明,基于小波的特征产生最高的准确性(88.33%),以区分热痛和冷痛,同时区分低痛和高痛。可以使用fNIRS来评估针对四种类型的热痛的疼痛。但是,需要进一步的研究来评估临床环境中的疼痛。

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