Observation is an essential tool for understanding and studying human behavior and mental states. However, coding human behavior is a time-consuming, expensive task, in which reliability can be difficult to achieve and bias is a risk. Machine learning (ML) methods offer ways to improve reliability, decrease cost, and scale up behavioral coding for application in clinical and research settings. Here, we use computer vision to derive behavioral codes or concepts of a gold standard behavioral rating system, offering familiar interpretation for mental health professionals. Features were extracted from videos of clinical diagnostic interviews of children and adolescents with and without obsessive-compulsive disorder. Our computationally-derived ratings were comparable to human expert ratings for negative emotions, activity-level/arousal and anxiety. For the attention and positive affect concepts, our ML ratings performed reasonably. However, results for gaze and vocalization indicate a need for improved data quality or additional data modalities.
翻译:观察是理解和研究人类行为和精神状态的基本工具。然而,人类行为编码是一项耗时、昂贵的任务,其中可靠性难以实现,偏见也是一种风险。机器学习方法提供了提高可靠性、降低成本和扩大行为编码的方法,供临床和研究环境中应用。在这里,我们利用计算机愿景来得出行为规范或金色标准行为评级体系概念,为心理健康专业人员提供熟悉的解释。从对患有和没有强迫性障碍的儿童和青少年的临床诊断访谈的视频中提取了特征。我们计算得出的评级与负面情绪、活动水平/振奋和焦虑的人类专家评级相当。为了关注和积极影响概念,我们的ML评级是合理的。然而,视觉和语音评级的结果表明需要改进数据质量或补充数据模式。