Javed Fajar, Gilani Syed Omer, Latif Seemab, Waris Asim, Jamil Mohsin, Waqas Ahmed
Department of Biomedical Engineering, SMME, National University of Sciences & Technology (NUST), Islamabad 44000, Pakistan.
Department of Computing, SEECS, National University of Sciences & Technology (NUST), Islamabad 44000, Pakistan.
J Pers Med. 2021 Mar 12;11(3):199. doi: 10.3390/jpm11030199.
Perinatal depression and anxiety are defined to be the mental health problems a woman faces during pregnancy, around childbirth, and after child delivery. While this often occurs in women and affects all family members including the infant, it can easily go undetected and underdiagnosed. The prevalence rates of antenatal depression and anxiety worldwide, especially in low-income countries, are extremely high. The wide majority suffers from mild to moderate depression with the risk of leading to impaired child-mother relationship and infant health, few women end up taking their own lives. Owing to high costs and non-availability of resources, it is almost impossible to diagnose every pregnant woman for depression/anxiety whereas under-detection can have a lasting impact on mother and child's health. This work proposes a multi-layer perceptron based neural network (MLP-NN) classifier to predict the risk of depression and anxiety in pregnant women. We trained and evaluated our proposed system on a Pakistani dataset of 500 women in their antenatal period. ReliefF was used for feature selection before classifier training. Evaluation metrics such as accuracy, sensitivity, specificity, precision, F1 score, and area under the receiver operating characteristic curve were used to evaluate the performance of the trained model. Multilayer perceptron and support vector classifier achieved an area under the receiving operating characteristic curve of 88% and 80% for antenatal depression and 85% and 77% for antenatal anxiety, respectively. The system can be used as a facilitator for screening women during their routine visits in the hospital's gynecology and obstetrics departments.
围产期抑郁和焦虑被定义为女性在孕期、分娩前后所面临的心理健康问题。虽然这种情况常发生在女性身上,并会影响包括婴儿在内的所有家庭成员,但它很容易被忽视和漏诊。全球范围内,尤其是在低收入国家,产前抑郁和焦虑的患病率极高。绝大多数人患有轻度至中度抑郁,有导致母婴关系受损和婴儿健康问题的风险,很少有女性最终自杀。由于成本高昂且资源匮乏,几乎不可能对每位孕妇进行抑郁/焦虑诊断,而检测不足会对母婴健康产生持久影响。这项工作提出了一种基于多层感知器的神经网络(MLP-NN)分类器,用于预测孕妇抑郁和焦虑的风险。我们在一个包含500名处于产前阶段女性的巴基斯坦数据集上对我们提出的系统进行了训练和评估。在分类器训练之前,使用ReliefF进行特征选择。使用诸如准确率、灵敏度、特异性、精确率、F1分数和接收器操作特征曲线下面积等评估指标来评估训练模型的性能。多层感知器和支持向量分类器在产前抑郁方面,接收器操作特征曲线下面积分别达到了88%和80%,在产前焦虑方面分别为85%和77%。该系统可作为在医院妇产科对女性进行常规检查时的筛查辅助工具。