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Continuous Pain Intensity Estimation from Autonomic Signals with Recurrent Neural Networks

机译:具有递归神经网络的自主信号的连续疼痛强度估计

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Pain is usually measured by patient's self-report, which requires patient collaboration. Hence, the development of an objective automatic pain detection method would be useful in many clinical applications and patient populations. Previous studies have explored the feasibility of using physiological autonomic signals to detect the presence of pain. In this study, we focused on continuously estimating experimental heat pain intensity with high temporal resolution from autonomic signals. Specifically, we employed skin conductance deconvolution and point process heart rate variability analysis to continuously evaluate time-varying autonomic parameters, and presented a regression algorithm based on recurrent neural networks.
机译:疼痛通常通过患者的自我报告来衡量,这需要患者的协作。因此,客观的自动疼痛检测方法的开发将在许多临床应用和患者人群中有用。以前的研究已经探索了使用生理自主信号来检测疼痛的存在的可行性。在这项研究中,我们专注于通过自主信号连续估算具有高时间分辨率的实验性热痛强度。具体来说,我们采用皮肤电导反褶积和点过程心率变异性分析来连续评估随时间变化的自主神经参数,并提出了一种基于递归神经网络的回归算法。

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