Fernandez Rojas Raul, Joseph Calvin, Bargshady Ghazal, Ou Keng-Liang
Human-Centred Technology Research Centre, Faculty of Science and Technology, University of Canberra, Canberra, ACT, Australia.
Department of Dentistry, Taipei Medical University Hospital, Taipei, Taiwan.
Front Neuroinform. 2024 Feb 14;18:1320189. doi: 10.3389/fninf.2024.1320189. eCollection 2024.
Pain assessment is extremely important in patients unable to communicate and it is often done by clinical judgement. However, assessing pain using observable indicators can be challenging for clinicians due to the subjective perceptions, individual differences in pain expression, and potential confounding factors. Therefore, the need for an objective pain assessment method that can assist medical practitioners. Functional near-infrared spectroscopy (fNIRS) has shown promising results to assess the neural function in response of nociception and pain. Previous studies have explored the use of machine learning with hand-crafted features in the assessment of pain.
In this study, we aim to expand previous studies by exploring the use of deep learning models Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), and (CNN-LSTM) to automatically extract features from fNIRS data and by comparing these with classical machine learning models using hand-crafted features.
The results showed that the deep learning models exhibited favourable results in the identification of different types of pain in our experiment using only fNIRS input data. The combination of CNN and LSTM in a hybrid model (CNN-LSTM) exhibited the highest performance (accuracy = 91.2%) in our problem setting. Statistical analysis using one-way ANOVA with Tukey's () test performed on accuracies showed that the deep learning models significantly improved accuracy performance as compared to the baseline models.
Overall, deep learning models showed their potential to learn features automatically without relying on manually-extracted features and the CNN-LSTM model could be used as a possible method of assessment of pain in non-verbal patients. Future research is needed to evaluate the generalisation of this method of pain assessment on independent populations and in real-life scenarios.
疼痛评估在无法进行沟通的患者中极为重要,通常通过临床判断来完成。然而,由于主观认知、疼痛表达的个体差异以及潜在的混杂因素,使用可观察指标评估疼痛对临床医生而言可能具有挑战性。因此,需要一种能够协助医生的客观疼痛评估方法。功能近红外光谱技术(fNIRS)在评估伤害感受和疼痛反应的神经功能方面已显示出有前景的结果。先前的研究探索了在疼痛评估中使用具有手工特征的机器学习方法。
在本研究中,我们旨在扩展先前的研究,探索使用深度学习模型卷积神经网络(CNN)、长短期记忆网络(LSTM)以及(CNN-LSTM)从fNIRS数据中自动提取特征,并将这些模型与使用手工特征的经典机器学习模型进行比较。
结果表明,在我们仅使用fNIRS输入数据的实验中,深度学习模型在识别不同类型的疼痛方面表现出良好的结果。在我们的问题设置中,CNN和LSTM的混合模型(CNN-LSTM)表现出最高的性能(准确率 = 91.2%)。对准确率进行单因素方差分析并结合Tukey检验的统计分析表明,与基线模型相比,深度学习模型显著提高了准确率性能。
总体而言,深度学习模型显示出无需依赖手动提取特征即可自动学习特征的潜力,并且CNN-LSTM模型可作为评估非言语患者疼痛的一种可能方法。未来需要开展研究,以评估这种疼痛评估方法在独立人群和现实生活场景中的通用性。