基于深度nlp的抑郁模型的跨人口可移植性

T. Rutowski, Elizabeth Shriberg, A. Harati, Yang Lu, R. Oliveira, P. Chlebek
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引用次数: 4

摘要

深度学习模型在行为健康方面的实际应用正迅速引起人们的兴趣。当前文献中的一个重要差距是,这些模型在不同人群中的推广效果如何。我们研究了基于自然语言处理(NLP)的模型来探索两种年龄高度不匹配的不同语料库的可移植性。第一个更大的语料库包含了年轻的演讲者。它被用来训练一个NLP模型来预测抑郁症。当对来自相同年龄分布的未见过的说话者进行测试时,该模型的AUC=0.82。然后,我们在第二个语料库上测试该模型,该语料库由来自退休社区的老年人组成。尽管两种语料库的人口统计学差异很大,但我们看到高级语料库数据的性能仅略有下降,达到AUC=0.76。有趣的是,在老年人群中,我们发现健康状态随时间保持一致的患者子集的AUC=0.81。讨论了基于语音的应用程序对人口统计可移植性的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Demographic Portability of Deep NLP-Based Depression Models
Deep learning models are rapidly gaining interest for real-world applications in behavioral health. An important gap in current literature is how well such models generalize over different populations. We study Natural Language Processing (NLP) based models to explore portability over two different corpora highly mismatched in age. The first and larger corpus contains younger speakers. It is used to train an NLP model to predict depression. When testing on unseen speakers from the same age distribution, this model performs at AUC=0.82. We then test this model on the second corpus, which comprises seniors from a retirement community. Despite the large demographic differences in the two corpora, we saw only modest degradation in performance for the senior-corpus data, achieving AUC=0.76. Interestingly, in the senior population, we find AUC=0.81 for the subset of patients whose health state is consistent over time. Implications for demographic portability of speech-based applications are discussed.
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