预测产后抑郁症风险水平的机器学习方法研究

T. H. K. R. Prabhashwaree, N. Wagarachchi
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摘要

这种产后抑郁症(PPD)在许多南亚国家接近流行病。它发生在一些母亲分娩后,因为她们的身体,行为和情感发展的变化。本研究的主要目的是根据母亲的家庭、社会背景和其他与母亲状况相关的数据,找出导致产后抑郁症的因素,并建立一个预测产后抑郁症风险水平的模型。在这里,根据斯里兰卡母亲产后6个月的情况,使用爱丁堡产后抑郁量表(EPDS)将风险等级分为轻度、中度、重度和重度4个等级。在回顾过去的文献后,发现前馈神经网络(FFANN)、自适应神经模糊推理系统、遗传算法(ANFIS - GA)、随机森林(RF)和支持向量机(SVM)最适合构建所提出的模型。最后,根据模型的性能来确定哪个模型在预测时具有较好的性能。经过模型训练和测试,作为模型的分类和回归类型,FFANN模型(准确率为97.08%)和ANFIS - GA模型(测试误差为0.0496)具有良好的性能。最后,比较两种模型对PPD风险水平的预测效果,得出FFANN在多分类情况下的预测效果最好。这对确定更多PPD的影响因素有很大的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Machine Learning Approaches for Predicting Risk Level of Postpartum Depression
This Postpartum depression (PPD) is approaching epidemic rates in many South Asian countries. It occurs in some mothers after giving childbirth because of changes in their physical, behavioral, and emotional development. The main objective of this research is to identify factors that reason for PPD based on the mother’s family, social background, and other data related to the status of the mother and develop a model to predict postpartum depression risk levels. Here, based on a postnatal period of Sri Lankan mothers at 6 months, risk levels have been classified into 4 classes mild, moderate, severe, and profound using the Edinburgh Postpartum Depression Scale (EPDS). After reviewing past literature has identified Feed-Forward Neural Network (FFANN), Adaptive Neuro-Fuzzy Inference System, Genetic Algorithm (ANFIS - GA), Random Forest (RF), and Support Vector Machine (SVM) best for building the proposed models. Finally, supposed to identify which model has good performance when predicting depending on the model’s performance. After model training and testing, as classification and regression types of models, the FFANN model (97.08% accuracy) and the ANFIS - GA model (testing error: 0.0496) have good performance. Finally, comparing the performance of both models for predicting PPD risk levels, it is concluded that FFANN has the best performance with multi classification. It has given great help to identify more influencing factors for PPD.
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