基于面部特征的中医望神分类与贝克抑郁量表评分的相关性分析

Correlation analysis between facial feature-based traditional Chinese medicine inspection of spirit classification and Beck Depression Inventory score

  • 摘要:
    目的 基于面部特征提取探讨抑郁症中医(TCM)望神分类与抑郁标准化量表评分严重程度之间的相关性,为临床中西医融合智能诊断提供参考。
    方法 本研究基于抑郁症公共数据集AVEC 2014中包含的150个访谈视频,分别对样本进行中医望神分类:得神、少神、神乱,以及基于贝克抑郁量表第2版(BDI-II)评分分为轻微(0 – 13,Q1)、轻度(14 – 19,Q2)、中度(20 – 28,Q3)、重度(29 – 63,Q4),使用ResNet-50网络提取了68个特征点,规范特征提取模式。分别用随机森林和支持向量机(SVM)分类器预测中医望神分类和抑郁等级。随后,应用卡方检验和Apriori关联规则挖掘对中医望神分类和西医抑郁严重等级进行关联分析。
    结果 中医望神分类与抑郁严重程度等级之间在统计学上存在显著的中等强度的相关性,我们通过卡方检验(χ2 = 14.04,P = 0.029)和克莱姆V相关系数(Cramer’s V效应量为0.243)对实验数据进行进一步验证,关联规则挖掘中发现最具说服力的规则是“Q3→ 神乱”,此规则显示了5%的支持水平,表明这种特定的共现出现在5%的研究群体中。同时,该分析达到了86%的高置信度,即在被诊断为Q3的患者中,有86%的人在中医望神分类中的评估为神乱。显著的提升值2.37意味着,在Q3患者中观察到神乱出现的可能性比如果这些状态是独立的所预期的概率高出2.37倍,这是高度非随机关联的有力证据。因此,神乱作为一个独特的、核心的中医诊断表现,与Q3密切相关,在这个患者亚组中形成了一个临床显著的表型。
    结论 自动化面部特征分析可以作为中西医诊断抑郁症时的一个共同视角。本研究观察到的精神衰退轨迹与抑郁症的严重程度相一致,该方法支持抑郁症早期筛查和分层干预,并为临床智能辅助中西医结合诊断抑郁症提供参考。

     

    Abstract:
    Objective To determine the correlation between traditional Chinese medicine (TCM) inspection of spirit classification and the severity grade of depression based on facial features, offering insights for intelligent intergrated TCM and western medicine diagnosis of depression.
    Methods Using the Audio-Visual Emotion Challenge and Workshop (AVEC 2014) public dataset on depression, which conclude 150 interview videos, the samples were classified according to the TCM inspection of spirit classification: Deshen (得神, presence of spirit), Shaoshen (少神, insufficiency of spirit), and Shenluan (神乱, confusion of spirit). Meanwhile, based on Beck Depression Inventory-II (BDI-II) score for the severity grade of depression, the samples were divided into minimal (0 – 13, Q1), mild (14 – 19, Q2), moderate (20 – 28, Q3), and severe (29 – 63, Q4). Sixty-eight landmarks were extracted with a ResNet-50 network, and the feature extracion mode was stadardized. Random forest and support vectior machine (SVM) classifiers were used to predict TCM inspection of spirit classification and the severity grade of depression, respectively. A Chi-square test and Apriori association rule mining were then applied to quantify and explore the relationships.
    Results The analysis revealed a statistically significant and moderately strong association between TCM spirit classification and the severity grade of depression, as confirmed by a Chi-square test (χ2 = 14.04, P = 0.029) with a Cramer’s V effect size of 0.243. Further exploration using association rule mining identified the most compelling rule: “moderate depression (Q3) → Shenluan”. This rule demonstrated a support level of 5%, indicating this specific co-occurrence was present in 5% of the cohort. Crucially, it achieved a high Confidence of 86%, meaning that among patients diagnosed with Q3, 86% exhibited the Shenluan pattern according to TCM assessment. The substantial Lift of 2.37 signifies that the observed likelihood of Shenluan manifesting in Q3 patients is 2.37 times higher than would be expected by chance if these states were independent—compelling evidence of a highly non-random association. Consequently, Shenluan emerges as a distinct and core TCM diagnostic manifestation strongly linked to Q3, forming a clinically significant phenotype within this patient subgroup.
    Conclusion Automated facial analysis can serve as a common lens for TCM and western psychological assessments align in the diagnosis of depression. The inspection of spirit decline trajectory parallels worsening depression, supporting early screening and stratified intervention, and providing a reference for the intelligent assistance of integrated TCM and western medicine in the diagnosis of depression.

     

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