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Classifying Depression Severity in Recovery From Major Depressive Disorder via Dynamic Facial Features

机译:通过动态面部特征对重大抑郁症恢复的抑制严重程度

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摘要

Major depressive disorder is a common psychiatric illness. At present, there are no objective, non-verbal, automated markers that can reliably track treatment response. Here, we explore the use of video analysis of facial expressivity in a cohort of severely depressed patients before and after deep brain stimulation (DBS), an experimental treatment for depression. We introduced a set of variability measurements to obtain unsupervised features from muted video recordings, which were then leveraged to build predictive models to classify three levels of severity in the patients' recovery from depression. Multiscale entropy was utilized to estimate the variability in pixel intensity level at various time scales. A dynamic latent variable model was utilized to learn a low-dimensional representation of factors that describe the dynamic relationship between high-dimensional pixels in each video frame and over time. Finally, a novel elastic net ordinal regression model was trained to predict the severity of depression, as independently rated by standard rating scales. Our results suggest that unsupervised features extracted from these video recordings, when incorporated in an ordinal regression predictor, can discriminate different levels of depression severity during ongoing DBS treatment. Objective markers of patient response to treatment have the potential to standardize treatment protocols and enhance the design of future clinical trials.
机译:主要抑郁症是一种常见的精神病疾病。目前,没有客观,非言语,自动标记可以可靠地跟踪治疗响应。在这里,我们探讨了在深脑刺激(DBS)之前和之后严重抑郁症患者队列中面部富有症的视频分析的使用,这是抑郁症的实验治疗。我们介绍了一系列可变性测量,以获得来自静音视频录制的无监督特征,然后利用这一点来建立预测模型,以对患者从抑郁症的恢复中分类三个程度的严重程度。多尺度熵用于在各种时间尺度下估计像素强度级别的可变性。使用动态潜变量模型来学习描述每个视频帧中的高维素像之间的动态关系的因素的低维表示。最后,培训了一种新的弹性网序数回归模型,以预测抑郁症的严重程度,如标准评级尺度独立评定。我们的研究结果表明,当在序数回归预测器中结合到这些视频录制中,可以在正在进行的DBS治疗期间区分不同水平的抑郁症严重程度。患者对治疗反应的目标标志有潜力标准化治疗方案并增强未来临床试验的设计。

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