Key Laboratory for Symbol Computation and Knowledge Engineering of National Education Ministry, College of Computer Science and Technology, Jilin University, Changchun, 130012, China.
Department of Electrical Engineering and Computer Science and Christopher S. Bond Life Sciences Center, University of Missouri, Columbia, MO, 65211, USA.
Sci Rep. 2023 Jan 2;13(1):2. doi: 10.1038/s41598-022-26977-3.
More and more people are under high pressure in modern society, leading to growing mental disorders, such as antenatal depression for pregnant women. Antenatal depression can affect pregnant woman's physical and psychological health and child outcomes, and cause postpartum depression. Therefore, it is essential to detect the antenatal depression of pregnant women early. This study aims to predict pregnant women's antenatal depression and identify factors that may lead to antenatal depression. First, a questionnaire was designed, based on the daily life of pregnant women. The survey was conducted on pregnant women in a hospital, where 5666 pregnant women participated. As the collected data is unbalanced and has high dimensions, we developed a one-class classifier named Stacked Auto Encoder Support Vector Data Description (SAE-SVDD) to distinguish depressed pregnant women from normal ones. To validate the method, SAE-SVDD was firstly applied on three benchmark datasets. The results showed that SAE-SVDD was effective, with its F-scores better than other popular classifiers. For the antenatal depression problem, the F-score of SAE- SVDD was higher than 0.87, demonstrating that the questionnaire is informative and the classification method is successful. Then, by an improved Term Frequency-Inverse Document Frequency (TF-IDF) analysis, the critical factors of antenatal depression were identified as work stress, marital status, husband support, passive smoking, and alcohol consumption. With its generalizability, SAE-SVDD can be applied to analyze other questionnaires.
越来越多的人在现代社会中承受着高压,导致精神障碍不断增加,如孕妇产前抑郁症。产前抑郁症会影响孕妇的身心健康和儿童结局,并导致产后抑郁症。因此,早期发现孕妇产前抑郁至关重要。本研究旨在预测孕妇产前抑郁,并识别可能导致产前抑郁的因素。首先,设计了一个基于孕妇日常生活的问卷。在医院对孕妇进行了调查,共有 5666 名孕妇参与。由于收集到的数据不平衡且维度较高,我们开发了一种称为堆叠自动编码器支持向量数据描述(SAE-SVDD)的一类分类器,以区分抑郁孕妇和正常孕妇。为了验证该方法,首先将 SAE-SVDD 应用于三个基准数据集。结果表明,SAE-SVDD 是有效的,其 F 分数优于其他流行的分类器。对于产前抑郁问题,SAE-SVDD 的 F 分数高于 0.87,表明问卷具有信息性,分类方法是成功的。然后,通过改进的词频-逆文档频率(TF-IDF)分析,确定了产前抑郁的关键因素为工作压力、婚姻状况、丈夫支持、被动吸烟和饮酒。SAE-SVDD 具有通用性,可以应用于分析其他问卷。