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多生理参数分类的急性疼痛强度监测。

Acute pain intensity monitoring with the classification of multiple physiological parameters.

机构信息

Department of Future Technologies, University of Turku, Turku, Finland.

Department of Nursing Science, University of Turku, Turku, Finland.

出版信息

J Clin Monit Comput. 2019 Jun;33(3):493-507. doi: 10.1007/s10877-018-0174-8. Epub 2018 Jun 26.

Abstract

Current acute pain intensity assessment tools are mainly based on self-reporting by patients, which is impractical for non-communicative, sedated or critically ill patients. In previous studies, various physiological signals have been observed qualitatively as a potential pain intensity index. On the basis of that, this study aims at developing a continuous pain monitoring method with the classification of multiple physiological parameters. Heart rate (HR), breath rate (BR), galvanic skin response (GSR) and facial surface electromyogram were collected from 30 healthy volunteers under thermal and electrical pain stimuli. The collected samples were labelled as no pain, mild pain or moderate/severe pain based on a self-reported visual analogue scale. The patterns of these three classes were first observed from the distribution of the 13 processed physiological parameters. Then, artificial neural network classifiers were trained, validated and tested with the physiological parameters. The average classification accuracy was 70.6%. The same method was applied to the medians of each class in each test and accuracy was improved to 83.3%. With facial electromyogram, the adaptivity of this method to a new subject was improved as the recognition accuracy of moderate/severe pain in leave-one-subject-out cross-validation was promoted from 74.9 ± 21.0 to 76.3 ± 18.1%. Among healthy volunteers, GSR, HR and BR were better correlated to pain intensity variations than facial muscle activities. The classification of multiple accessible physiological parameters can potentially provide a way to differentiate among no, mild and moderate/severe acute experimental pain.

摘要

当前的急性疼痛强度评估工具主要基于患者的自我报告,对于无法交流、镇静或危重症患者来说并不实用。在之前的研究中,已经观察到各种生理信号可以定性地作为潜在的疼痛强度指标。在此基础上,本研究旨在开发一种基于多种生理参数分类的连续疼痛监测方法。在热和电疼痛刺激下,从 30 名健康志愿者中采集心率(HR)、呼吸率(BR)、皮肤电反应(GSR)和面部表面肌电图。根据自我报告的视觉模拟量表,将采集到的样本标记为无痛、轻度疼痛或中度/重度疼痛。首先从 13 个处理后的生理参数的分布中观察这三个类别的模式。然后,使用生理参数对人工神经网络分类器进行训练、验证和测试。平均分类准确率为 70.6%。同样的方法应用于每个测试中每个类别的中位数,准确率提高到 83.3%。使用面部肌电图,该方法对新对象的适应性得到了提高,因为在受试者留一交叉验证中,中度/重度疼痛的识别准确率从 74.9±21.0提高到了 76.3±18.1。在健康志愿者中,GSR、HR 和 BR 与疼痛强度变化的相关性优于面部肌肉活动。多种可访问生理参数的分类可能为区分无、轻度和中度/重度急性实验疼痛提供一种方法。

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