多模态特征选择检测母亲与青春期子女二元互动中的抑郁

Maneesh Bilalpur, Saurabh Hinduja, Laura A. Cariola, Lisa B. Sheeber, Nick Alien, László A. Jeni, Louis-Philippe Morency, J. Cohn
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引用次数: 2

摘要

抑郁症是最常见的心理障碍,是世界范围内导致残疾的主要原因,也是精神病理在家庭中代际传播的主要因素。为了帮助我们理解家庭中的抑郁症,并为模式选择和特征减少提供信息,在发育适当的背景下识别可解释的特征是至关重要的。研究人员对患有和不患有抑郁症的母亲进行了研究。抑郁症被定义为抑郁症的治疗史和当前或近期症状的加重。本研究探讨了两种多模态特征选择策略在母亲与其青春期子女的二元互动任务中用于抑郁检测。模式包括面部和头部动态、面部动作单元、言语相关行为和言语特征。初始特征空间巨大且相互关联(共线)。为了降低维度并深入了解每种模态和特征的相对贡献,我们探索了使用方差膨胀因子(VIF)和Shapley值的特征选择策略。通过VIF的平均共线性校正导致单峰和多峰特征的特征减少约4倍。共线性校正也被发现是Shapley分析之前的最佳中间步骤。遵循VIF的Shapley特征选择产生了最佳性能。通过Shapley获得的前15个特征的准确率达到78%。信息量最大的特征来自所有四种模式的采样,这支持了多模式特征选择的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Feature Selection for Detecting Mothers' Depression in Dyadic Interactions with their Adolescent Offspring
Depression is the most common psychological disorder, a leading cause of disability world-wide, and a major contributor to inter-generational transmission of psychopathol-ogy within families. To contribute to our understanding of depression within families and to inform modality selection and feature reduction, it is critical to identify interpretable features in developmentally appropriate contexts. Mothers with and without depression were studied. Depression was defined as history of treatment for depression and elevations in current or recent symptoms. We explored two multimodal feature selection strategies in dyadic interaction tasks of mothers with their adolescent children for depression detection. Modalities included face and head dynamics, facial action units, speech-related behavior, and verbal features. The initial feature space was vast and inter-correlated (collinear). To reduce dimension-ality and gain insight into the relative contribution of each modality and feature, we explored feature selection strategies using Variance Inflation Factor (VIF) and Shapley values. On an average collinearity correction through VIF resulted in about 4 times feature reduction across unimodal and multimodal features. Collinearity correction was also found to be an optimal intermediate step prior to Shapley analysis. Shapley feature selection following VIF yielded best performance. The top 15 features obtained through Shapley achieved 78 % accuracy. The most informative features came from all four modalities sampled, which supports the importance of multimodal feature selection.
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