Department of Neuro-Information Technology, Institute for Information Technology and Communications, Otto-von-Guericke University Magdeburg, 39106 Magdeburg, Germany.
Sensors (Basel). 2022 Jul 1;22(13):4992. doi: 10.3390/s22134992.
Pain is a reliable indicator of health issues; it affects patients' quality of life when not well managed. The current methods in the clinical application undergo biases and errors; moreover, such methods do not facilitate continuous pain monitoring. For this purpose, the recent methodologies in automatic pain assessment were introduced, which demonstrated the possibility for objectively and robustly measuring and monitoring pain when using behavioral cues and physiological signals. This paper focuses on introducing a reliable automatic system for continuous monitoring of pain intensity by analyzing behavioral cues, such as facial expressions and audio, and physiological signals, such as electrocardiogram (ECG), electromyogram (EMG), and electrodermal activity (EDA) from the X-ITE Pain Dataset. Several experiments were conducted with 11 datasets regarding classification and regression; these datasets were obtained from the database to reduce the impact of the imbalanced database problem. With each single modality (Uni-modality) experiment, we used a Random Forest [RF] baseline method, a Long Short-Term Memory (LSTM) method, and a LSTM using a sample weighting method (called LSTM-SW). Further, LSTM and LSTM-SW were used with fused modalities (two modalities = Bi-modality and all modalities = Multi-modality) experiments. Sample weighting was used to downweight misclassified samples during training to improve the performance. The experiments' results confirmed that regression is better than classification with imbalanced datasets, EDA is the best single modality, and fused modalities improved the performance significantly over the single modality in 10 out of 11 datasets.
疼痛是健康问题的可靠指标;如果管理不当,它会影响患者的生活质量。目前临床应用中的方法存在偏差和误差;此外,这些方法不利于持续的疼痛监测。为此,引入了自动疼痛评估的最新方法,这些方法通过使用行为线索和生理信号,展示了客观、稳健地测量和监测疼痛的可能性。本文重点介绍了一种可靠的自动系统,通过分析行为线索,如面部表情和音频,以及生理信号,如心电图 (ECG)、肌电图 (EMG) 和皮肤电活动 (EDA),从 X-ITE 疼痛数据集连续监测疼痛强度。进行了几项涉及分类和回归的实验;这些数据集是从数据库中获得的,以减少不平衡数据库问题的影响。对于每个单一模态(单模态)实验,我们使用随机森林 [RF] 基线方法、长短期记忆 (LSTM) 方法和使用样本加权方法的 LSTM(称为 LSTM-SW)。此外,还使用 LSTM 和 LSTM-SW 进行了融合模态(两种模态=双模态和所有模态=多模态)实验。样本加权用于在训练过程中对错误分类的样本进行降权,以提高性能。实验结果证实,回归在不平衡数据集上优于分类,EDA 是最佳的单一模态,融合模态在 11 个数据集中有 10 个显著提高了单一模态的性能。