Akiyama Toshiya, Matsumoto Kazuyuki, Osaka Kyoko, Tanioka Ryuichi, Betriana Feni, Zhao Yueren, Kai Yoshihiro, Miyagawa Misao, Yasuhara Yuko, Ito Hirokazu, Soriano Gil, Tanioka Tetsuya
Graduate School of Health Sciences, Tokushima University, Tokushima 770-8509, Japan.
Graduate School of Engineering, Tokushima University, Tokushima 770-8506, Japan.
Healthcare (Basel). 2022 Nov 24;10(12):2363. doi: 10.3390/healthcare10122363.
Patients with schizophrenia may exhibit a flat affect and poor facial expressions. This study aimed to compare subjective facial emotion recognition (FER) and FER based on multi-task cascaded convolutional network (MTCNN) face detection in 31 patients with schizophrenia (patient group) and 40 healthy participants (healthy participant group). A Pepper Robot was used to converse with the 71 aforementioned participants; these conversations were recorded on video. Subjective FER (assigned by medical experts based on video recordings) and FER based on MTCNN face detection was used to understand facial expressions during conversations. This study confirmed the discriminant accuracy of the FER based on MTCNN face detection. The analysis of the smiles of healthy participants revealed that the kappa coefficients of subjective FER (by six examiners) and FER based on MTCNN face detection concurred (κ = 0.63). The perfect agreement rate between the subjective FER (by three medical experts) and FER based on MTCNN face detection in the patient, and healthy participant groups were analyzed using Fisher's exact probability test where no significant difference was observed ( = 0.72). The validity and reliability were assessed by comparing the subjective FER and FER based on MTCNN face detection. The reliability coefficient of FER based on MTCNN face detection was low for both the patient and healthy participant groups.
精神分裂症患者可能表现出情感平淡和面部表情匮乏。本研究旨在比较31例精神分裂症患者(患者组)和40名健康参与者(健康参与者组)的主观面部情绪识别(FER)以及基于多任务级联卷积网络(MTCNN)面部检测的FER。使用一个胡椒机器人与上述71名参与者进行对话;这些对话被录制在视频中。主观FER(由医学专家根据视频记录进行评定)和基于MTCNN面部检测的FER被用于了解对话期间的面部表情。本研究证实了基于MTCNN面部检测的FER的判别准确性。对健康参与者微笑的分析显示,主观FER(由六名检查者评定)和基于MTCNN面部检测的FER的kappa系数一致(κ = 0.63)。使用Fisher精确概率检验分析了患者组和健康参与者组中主观FER(由三名医学专家评定)与基于MTCNN面部检测的FER之间的完全一致率,未观察到显著差异( = 0.72)。通过比较主观FER和基于MTCNN面部检测的FER来评估有效性和可靠性。基于MTCNN面部检测的FER的可靠性系数在患者组和健康参与者组中均较低。