论文标题

通过关节异常排名和分类对纵向数据的深层抑郁预测

Deep Depression Prediction on Longitudinal Data via Joint Anomaly Ranking and Classification

论文作者

Pang, Guansong, Pham, Ngoc Thien Anh, Baker, Emma, Bentley, Rebecca, Hengel, Anton van den

论文摘要

已经开发了多种方法来识别抑郁症,但它们主要集中于衡量个人目前患有抑郁症的程度。在这项工作中,我们探讨了使用应用于纵向社会人口统计学数据的机器学习来预测未来抑郁症的可能性。通过这样做,我们证明了住房状况以及家庭环境的细节之类的数据可以为预测未来的精神疾病提供线索。为此,我们介绍了一种新型的深层多任务复发性神经网络,以学习时间依赖时间的抑郁线索。抑郁预测任务通过两个辅助异常排名任务共同优化,包括对比度的单级特征排名和偏差排名。辅助任务解决了问题的两个关键挑战:1)抑郁样本的阶级差异中的高度:它们能够学习对抑郁症样本的高度变化的较高阶层分布的表述; 2)小标记的数据量:它们显着提高了预测模型的样本效率,这降低了对在实践中难以收集的大型抑郁症标记的数据集的依赖。大规模儿童抑郁症数据的广泛经验结果表明,我们的模型具有样本效率,可以在疾病发生前2 - 4年准确预测抑郁症,从而大大表现八个代表性比较器。

A wide variety of methods have been developed for identifying depression, but they focus primarily on measuring the degree to which individuals are suffering from depression currently. In this work we explore the possibility of predicting future depression using machine learning applied to longitudinal socio-demographic data. In doing so we show that data such as housing status, and the details of the family environment, can provide cues for predicting future psychiatric disorders. To this end, we introduce a novel deep multi-task recurrent neural network to learn time-dependent depression cues. The depression prediction task is jointly optimized with two auxiliary anomaly ranking tasks, including contrastive one-class feature ranking and deviation ranking. The auxiliary tasks address two key challenges of the problem: 1) the high within class variance of depression samples: they enable the learning of representations that are robust to highly variant in-class distribution of the depression samples; and 2) the small labeled data volume: they significantly enhance the sample efficiency of the prediction model, which reduces the reliance on large depression-labeled datasets that are difficult to collect in practice. Extensive empirical results on large-scale child depression data show that our model is sample-efficient and can accurately predict depression 2-4 years before the illness occurs, substantially outperforming eight representative comparators.

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