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An automatic classifier of pain scores in chronic pain patients from local field potentials recordings

机译:根据局部场电位记录对慢性疼痛患者的疼痛评分进行自动分类

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This paper investigates measures to assess automatically the level of pain in a group of chronic pain patients implanted with electrodes for deep brain stimulation. Electrical activity in local field potentials in particular frequency bands has been shown to be associated with changes in the perception of pain. In this paper we develop a method to classify pain intensity with two groups of patients, one with electrodes implanted in the thalamus (VPL) and the other with implants in periaqueductal grey (PAG/PVG), using wavelet analysis to process the local field potential data from the deep brain electrodes. A fuzzy network classifier is used to relate sections of the data to the pain intensity, as recorded by patients using a visual analogue scale (VAS) scale. Our results suggest that in the PAG implanted patients alpha activity is a good measure of pain in a single patient, whereas correlation with beta activity is more appropriate in thalamus implanted patients. The relation between such activity and pain level shows some consistency within a session. This suggests that a closed loop form of DBS may be possible for these patients to optimize their treatment. However it was not possible to train a classifier consistently across the groups of patients, possibly because of differences in pain perception across individuals.
机译:本文研究了自动评估一组植入电极以深层大脑刺激的慢性疼痛患者的疼痛程度的措施。已经显示出特定频带中的局部场电势中的电活动与疼痛感的变化有关。在本文中,我们开发了一种对两组患者的疼痛强度进行分类的方法,一组使用丘脑植入电极(VPL),另一组使用导水管周围灰色植入物(PAG / PVG),使用小波分析来处理局部电场电位来自大脑深部电极的数据。如患者使用视觉模拟量表(VAS)量表记录的那样,模糊网络分类器用于将数据的各个部分与疼痛强度相关联。我们的结果表明,在植入PAG的患者中,α活性可以很好地衡量一名患者的疼痛,而与β活性相关的患者更适合于丘脑植入的患者。此类活动与疼痛程度之间的关系显示出会话中的某些一致性。这表明,DBS的闭环形式对于这些患者来说可能是最佳的,以优化他们的治疗。但是,由于各个人对疼痛的理解不同,不可能在所有患者组中一致地训练分类器。

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