从扩展面部代码到癌症患者基于视频的疼痛识别的二元分类器模型的开发。

IF 1.5 Q4 CLINICAL NEUROLOGY
Scandinavian Journal of Pain Pub Date : 2023-09-05 Print Date: 2023-10-26 DOI:10.1515/sjpain-2023-0011
Marco Cascella, Vincenzo Norman Vitale, Fabio Mariani, Manuel Iuorio, Francesco Cutugno
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引用次数: 0

摘要

目的:自动疼痛评估(APA)依赖于使用客观的方法来评估疼痛的严重程度和其他疼痛相关特征。面部表情是APA研究最多的疼痛行为特征。我们构建了一个二元分类器模型,通过视频分析来区分疼痛的存在与否。方法:对癌症患者进行约两分钟的简短访谈,并在访谈过程中进行录像。Delaware疼痛数据库和UNBC McMaster肩部疼痛数据集用于训练。通过了一套17个行动单位。对于每个图像,使用OpenFace工具包来提取所考虑的AU。收集的数据被分组并分为训练集和测试集:80 % 其中的数据被用作训练集,其余20个数据 % 作为验证集。为了进行连续估计,将帧预测值为0(无疼痛)或1(疼痛)的整个患者视频导入注释器(ELAN 6.4)。开发的神经网络分类器由两个密集层组成。第一层包含与OpenFace为每个图像提取的面部AU相关联的17个节点。输出层是“疼痛”(1)或“无疼痛”(0)的分类标签。结果:分类器获得了~94的准确度 % 经过大约400个训练时期。ROC曲线下面积(AUROC)值约为0.98。结论:本研究表明,使用从所选AU开发的二元分类器模型可以作为评估癌症疼痛的有效工具。APA分类器的实现可用于检测潜在的疼痛波动。在APA研究的背景下,有必要进行进一步的研究,以完善这一过程,特别是将这些数据与多参数分析相结合,如语音分析、文本分析和从生理参数中获得的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a binary classifier model from extended facial codes toward video-based pain recognition in cancer patients.

Objectives: The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to evaluate the severity of pain and other pain-related characteristics. Facial expressions are the most investigated pain behavior features for APA. We constructed a binary classifier model for discriminating between the absence and presence of pain through video analysis.

Methods: A brief interview lasting approximately two-minute was conducted with cancer patients, and video recordings were taken during the session. The Delaware Pain Database and UNBC-McMaster Shoulder Pain dataset were used for training. A set of 17 Action Units (AUs) was adopted. For each image, the OpenFace toolkit was used to extract the considered AUs. The collected data were grouped and split into train and test sets: 80 % of the data was used as a training set and the remaining 20 % as the validation set. For continuous estimation, the entire patient video with frame prediction values of 0 (no pain) or 1 (pain), was imported into an annotator (ELAN 6.4). The developed Neural Network classifier consists of two dense layers. The first layer contains 17 nodes associated with the facial AUs extracted by OpenFace for each image. The output layer is a classification label of "pain" (1) or "no pain" (0).

Results: The classifier obtained an accuracy of ∼94 % after about 400 training epochs. The Area Under the ROC curve (AUROC) value was approximately 0.98.

Conclusions: This study demonstrated that the use of a binary classifier model developed from selected AUs can be an effective tool for evaluating cancer pain. The implementation of an APA classifier can be useful for detecting potential pain fluctuations. In the context of APA research, further investigations are necessary to refine the process and particularly to combine this data with multi-parameter analyses such as speech analysis, text analysis, and data obtained from physiological parameters.

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来源期刊
Scandinavian Journal of Pain
Scandinavian Journal of Pain CLINICAL NEUROLOGY-
CiteScore
3.30
自引率
6.20%
发文量
73
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