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利用面部表情的计算机视觉评估初发精神病且未服用过抗精神病药物患者的症状领域及治疗反应。

Using computer vision of facial expressions to assess symptom domains and treatment response in antipsychotic-naïve patients with first-episode psychosis.

作者信息

Ambrosen Karen S, Lemvigh Cecilie K, Nielsen Mette Ø, Glenthøj Birte Y, Syeda Warda T, Ebdrup Bjørn H

机构信息

Center for Neuropsychiatric Schizophrenia Research (CNSR) & Center for Clinical Intervention and Neuropsychiatric Schizophrenia Research (CINS), Mental Health Center, Glostrup, Copenhagen University Hospital, Mental Health Services CPH, Copenhagen, Denmark.

Department of Clinical Medicine, Faculty of Health and Medical Sciences, University of Copenhagen, Copenhagen, Denmark.

出版信息

Acta Psychiatr Scand. 2025 Mar;151(3):270-279. doi: 10.1111/acps.13743. Epub 2024 Aug 12.

Abstract

BACKGROUND

Facial expressions are a core aspect of non-verbal communication. Reduced emotional expressiveness of the face is a common negative symptom of schizophrenia, however, quantifying negative symptoms can be clinically challenging and involves a considerable element of rater subjectivity. We used computer vision to investigate if (i) automated assessment of facial expressions captures negative as well as positive and general symptom domains, and (ii) if automated assessments are associated with treatment response in initially antipsychotic-naïve patients with first-episode psychosis.

METHOD

We included 46 patients (mean age 25.4 (6.1); 65.2% males). Psychopathology was assessed at baseline and after 6 weeks of monotherapy with amisulpride using the Positive and Negative Syndrome Scale (PANSS). Baseline interview videos were recorded. Seventeen facial action units (AUs), that is, activation of muscles, from the Facial Action Coding System were extracted using OpenFace 2.0. A correlation matrix was calculated for each patient. Facial expressions were identified using spectral clustering at group-level. Associations between facial expressions and psychopathology were investigated using multiple linear regression.

RESULTS

Three clusters of facial expressions were identified related to different locations of the face. Cluster 1 was associated with positive and general symptoms at baseline, Cluster 2 was associated with all symptom domains, showing the strongest association with the negative domain, and Cluster 3 was only associated with general symptoms. Cluster 1 was significantly associated with the clinically rated improvement in positive and general symptoms after treatment, and Cluster 2 was significantly associated with clinical improvement in all domains.

CONCLUSION

Using automated computer vision of facial expressions during PANSS interviews did not only capture negative symptoms but also combinations of the three overall domains of psychopathology. Moreover, automated assessments of facial expressions at baseline were associated with initial antipsychotic treatment response. The findings underscore the clinical relevance of facial expressions and motivate further investigations of computer vision in clinical psychiatry.

摘要

背景

面部表情是非语言交流的核心方面。面部情绪表达减少是精神分裂症常见的阴性症状,然而,量化阴性症状在临床上具有挑战性,且涉及相当程度的评估者主观性。我们使用计算机视觉来研究:(i)面部表情的自动评估是否能够捕捉阴性症状以及阳性症状和一般症状领域;(ii)自动评估是否与初发精神病且未接受过抗精神病药物治疗的患者的治疗反应相关。

方法

我们纳入了46名患者(平均年龄25.4岁(6.1岁);65.2%为男性)。在基线期以及使用氨磺必利单药治疗6周后,使用阳性和阴性症状量表(PANSS)评估精神病理学。记录基线期访谈视频。使用OpenFace 2.0从面部动作编码系统中提取17个面部动作单元(AUs),即肌肉的激活情况。为每位患者计算相关矩阵。在组水平上使用谱聚类识别面部表情。使用多元线性回归研究面部表情与精神病理学之间的关联。

结果

识别出与面部不同部位相关的三类面部表情。聚类1在基线期与阳性症状和一般症状相关,聚类2与所有症状领域相关,与阴性症状领域的关联最强,聚类3仅与一般症状相关。聚类1与治疗后临床评定的阳性症状和一般症状改善显著相关,聚类2与所有领域的临床改善显著相关。

结论

在PANSS访谈期间使用面部表情的自动计算机视觉不仅能够捕捉阴性症状,还能捕捉精神病理学三个总体领域的组合。此外,基线期面部表情的自动评估与初始抗精神病药物治疗反应相关。这些发现强调了面部表情的临床相关性,并激发了在临床精神病学中对计算机视觉的进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9d6f/11787927/02668197d71c/ACPS-151-270-g002.jpg

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