通过症状预测实现基于文本的抑郁症自动估计。

Q1 Computer Science Brain Informatics Pub Date : 2023-02-13 DOI:10.1186/s40708-023-00185-9
Kirill Milintsevich, Kairit Sirts, Gaël Dias
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引用次数: 1

摘要

重度抑郁症(MDD)是一种最常见的共病精神障碍,它会影响一个人的日常活动。此外,MDD影响一个人的语言足迹,这反映在言语产生的微妙变化上。这允许我们使用自然语言处理(NLP)技术来建立一个神经分类器,从语音记录中检测抑郁症。通常,当前的NLP系统只区分抑郁和非抑郁状态。然而,这种方法忽视了抑郁症临床表现的复杂性,因为不同的重度抑郁症患者可能有不同的抑郁症状。因此,预测个体症状可以提供有关个人状况的更细粒度的信息。在这项工作中,我们通过症状网络分析方法的棱镜来看待抑郁症分类问题,该方法将注意力从抑郁症的分类分析转向症状特征的个性化分析。为此,我们训练了一个多目标层次回归模型来预测来自DAIC-WOZ语料库的患者-精神科医生访谈记录中的个体抑郁症状。我们的模型在二元诊断分类和抑郁严重程度预测方面取得了与最先进的模型相当的结果,同时为每个人提供了更细粒度的个体症状概述。该模型对8种抑郁症状的平均绝对误差(MAE)在0.438 ~ 0.830之间,在二元抑郁估计(73.9 macro-F1)和总抑郁评分预测(3.78 MAE)方面取得了较好的结果。此外,该模型生成的症状相关图在结构上与实际相符。提出的基于症状的方法通过关注个体症状而不是一般的二元诊断,提供了关于抑郁状况的更深入的信息。
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Towards automatic text-based estimation of depression through symptom prediction.

Major Depressive Disorder (MDD) is one of the most common and comorbid mental disorders that impacts a person's day-to-day activity. In addition, MDD affects one's linguistic footprint, which is reflected by subtle changes in speech production. This allows us to use natural language processing (NLP) techniques to build a neural classifier to detect depression from speech transcripts. Typically, current NLP systems discriminate only between the depressed and non-depressed states. This approach, however, disregards the complexity of the clinical picture of depression, as different people with MDD can suffer from different sets of depression symptoms. Therefore, predicting individual symptoms can provide more fine-grained information about a person's condition. In this work, we look at the depression classification problem through the prism of the symptom network analysis approach, which shifts attention from a categorical analysis of depression towards a personalized analysis of symptom profiles. For that purpose, we trained a multi-target hierarchical regression model to predict individual depression symptoms from patient-psychiatrist interview transcripts from the DAIC-WOZ corpus. Our model achieved results on par with state-of-the-art models on both binary diagnostic classification and depression severity prediction while at the same time providing a more fine-grained overview of individual symptoms for each person. The model achieved a mean absolute error (MAE) from 0.438 to 0.830 on eight depression symptoms and showed state-of-the-art results in binary depression estimation (73.9 macro-F1) and total depression score prediction (3.78 MAE). Moreover, the model produced a symptom correlation graph that is structurally identical to the real one. The proposed symptom-based approach provides more in-depth information about the depressive condition by focusing on the individual symptoms rather than a general binary diagnosis.

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来源期刊
Brain Informatics
Brain Informatics Computer Science-Computer Science Applications
CiteScore
9.50
自引率
0.00%
发文量
27
审稿时长
13 weeks
期刊介绍: Brain Informatics is an international, peer-reviewed, interdisciplinary open-access journal published under the brand SpringerOpen, which provides a unique platform for researchers and practitioners to disseminate original research on computational and informatics technologies related to brain. This journal addresses the computational, cognitive, physiological, biological, physical, ecological and social perspectives of brain informatics. It also welcomes emerging information technologies and advanced neuro-imaging technologies, such as big data analytics and interactive knowledge discovery related to various large-scale brain studies and their applications. This journal will publish high-quality original research papers, brief reports and critical reviews in all theoretical, technological, clinical and interdisciplinary studies that make up the field of brain informatics and its applications in brain-machine intelligence, brain-inspired intelligent systems, mental health and brain disorders, etc. The scope of papers includes the following five tracks: Track 1: Cognitive and Computational Foundations of Brain Science Track 2: Human Information Processing Systems Track 3: Brain Big Data Analytics, Curation and Management Track 4: Informatics Paradigms for Brain and Mental Health Research Track 5: Brain-Machine Intelligence and Brain-Inspired Computing
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