IEEE J Biomed Health Inform. 2021 Aug;25(8):3176-3184. doi: 10.1109/JBHI.2021.3053846. Epub 2021 Aug 5.
Childhood internalizing disorders, like anxiety and depression, are common, impairing, and difficult to detect. Universal childhood mental health screening has been recommended, but new technologies are needed to provide objective detection. Instrumented mood induction tasks, designed to press children for specific behavioral responses, have emerged as means for detecting childhood internalizing psychopathology. In our previous work, we leveraged machine learning to identify digital phenotypes of childhood internalizing psychopathology from movement and voice data collected during negative valence tasks (pressing for anxiety and fear). In this work, we develop a digital phenotype for childhood internalizing disorders based on wearable inertial sensor data recorded from a Positive Valence task during which a child plays with bubbles. We find that a phenotype derived from features that capture reward responsiveness is able to accurately detect children with underlying internalizing psychopathology (AUC = 0.81). In so doing, we explore the impact of a variety of feature sets computed from wearable sensors deployed to two body locations on phenotype performance across two phases of the task. We further consider this novel digital phenotype in the context of our previous Negative Valence digital phenotypes and find that each task brings unique information to the problem of detecting childhood internalizing psychopathology, capturing different problems and disorder subtypes. Collectively, these results provide preliminary evidence for a mood induction task battery to develop a novel diagnostic for childhood internalizing disorders.
儿童期内化障碍,如焦虑和抑郁,较为常见,会造成损害,且难以发现。普遍的儿童心理健康筛查已被推荐,但需要新的技术来提供客观的检测。仪器化情绪诱发任务旨在促使儿童做出特定的行为反应,已成为检测儿童内化性精神病理学的一种手段。在我们之前的工作中,我们利用机器学习从负面情绪任务(引发焦虑和恐惧)中收集的运动和语音数据中识别儿童内化性精神病理学的数字表型。在这项工作中,我们基于穿戴式惯性传感器数据,从积极情绪任务中开发了一个儿童内化障碍的数字表型,在此任务中,儿童玩泡泡。我们发现,一个从捕捉奖励反应的特征中得出的表型能够准确地检测出有潜在内化性精神病理学的儿童(AUC = 0.81)。通过这样做,我们探讨了从两个身体部位部署的穿戴式传感器计算的各种特征集对任务两个阶段的表型性能的影响。我们还考虑了这一新颖的数字表型与我们之前的负面情绪数字表型的关系,并发现每个任务都为检测儿童内化性精神病理学问题带来了独特的信息,捕捉到了不同的问题和障碍亚型。总的来说,这些结果为开发儿童内化障碍的新型诊断工具提供了初步证据,证明情绪诱发任务组是有效的。