Pain Detection with fNIRS-Measured Brain Signals: A Personalized Machine Learning Approach Using the Wavelet Transform and Bayesian Hierarchical Modeling with Dirichlet Process Priors

D. Martinez, Ke Peng, Arielle J. Lee, D. Borsook, Rosalind W. Picard
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引用次数: 17

Abstract

Currently self-report pain ratings are the gold standard in clinical pain assessment. However, the development of objective automatic measures of pain could substantially aid pain diagnosis and therapy. Recent neuroimaging studies have shown the potential of functional near-infrared spectroscopy (fNIRS) for pain detection. This is a brain-imaging technique that provides non-invasive, long-term measurements of cortical hemoglobin concentration changes. In this study, we focused on fNIRS signals acquired exclusively from the prefrontal cortex, which can be accessed unobtrusively, and derived an algorithm for the detection of the presence of pain using Bayesian hierarchical modelling with wavelet features. This approach allows personalization of the inference process by accounting for inter-participant variability in pain responses. Our work highlights the importance of adopting a personalized approach and supports the use of fNIRS for pain assessment.
基于fnirs测量的脑信号的疼痛检测:基于小波变换和Dirichlet过程先验贝叶斯分层建模的个性化机器学习方法
目前,自我报告疼痛评分是临床疼痛评估的金标准。然而,疼痛的客观自动测量的发展可以大大帮助疼痛的诊断和治疗。最近的神经影像学研究显示了功能性近红外光谱(fNIRS)在疼痛检测方面的潜力。这是一种脑成像技术,提供皮质血红蛋白浓度变化的非侵入性长期测量。在这项研究中,我们专注于仅从前额皮质获取的fNIRS信号,这些信号可以不引人注目地访问,并推导了一种基于小波特征的贝叶斯分层建模的疼痛检测算法。这种方法允许通过考虑疼痛反应的参与者之间的可变性来个性化推理过程。我们的工作强调了采用个性化方法的重要性,并支持使用近红外光谱进行疼痛评估。
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