论文标题
使用双向LSTMS基于FNIRS的疼痛评估
Pain Assessment based on fNIRS using Bidirectional LSTMs
论文作者
论文摘要
评估无法说话的患者(也称为非语言患者)的疼痛非常复杂,并且通常是通过临床判断来完成的。但是,由于其他潜在的医疗状况,生命体征可能会显着波动,因此该方法并不可靠。迄今为止,尚无客观诊断测试可以帮助医生诊断疼痛。在这项研究中,我们建议使用功能性近红外光谱(FNIRS)和深度学习来评估人类疼痛。这项研究的目的是探索深度学习,以自动从FNIRS原始数据中学习功能,以降低手工制作功能设计中所需的主观性和领域知识水平。评估了四个深度学习模型,即多层感知器(MLP),前后长的短期记忆网(LSTM)和双向LSTM。结果表明,BI-LSTM模型的精度最高(90.6%),并且比其他三个模型更快。这些结果通过使用神经影像作为诊断方法提高了疼痛评估的知识,并更接近开发基于生理的人类疼痛的诊断,这将使无法自我报告疼痛的弱势群体受益。
Assessing pain in patients unable to speak (also called non-verbal patients) is extremely complicated and often is done by clinical judgement. However, this method is not reliable since patients vital signs can fluctuate significantly due to other underlying medical conditions. No objective diagnosis test exists to date that can assist medical practitioners in the diagnosis of pain. In this study we propose the use of functional near-infrared spectroscopy (fNIRS) and deep learning for the assessment of human pain. The aim of this study is to explore the use deep learning to automatically learn features from fNIRS raw data to reduce the level of subjectivity and domain knowledge required in the design of hand-crafted features. Four deep learning models were evaluated, multilayer perceptron (MLP), forward and backward long short-term memory net-works (LSTM), and bidirectional LSTM. The results showed that the Bi-LSTM model achieved the highest accuracy (90.6%)and faster than the other three models. These results advance knowledge in pain assessment using neuroimaging as a method of diagnosis and represent a step closer to developing a physiologically based diagnosis of human pain that will benefit vulnerable populations who cannot self-report pain.