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A Machine Learning Approach to detect Depression and Anxiety using Supervised Learning

机译:用监督学习检测抑郁和焦虑的机器学习方法

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Depression and anxiety are among the leading causes of substantial disability in developing countries. According to a study of World Health Organization (WHO) South East Region, Bangladesh ranks highest in anxiety disorders with women being affected twice severely as men. Intervening these orders at an early stage would be cheaper and more effective than later treatment, and thus, we have proposed a model that uses a standard psychological assessment and machine learning algorithms to diagnose the different levels of such mental disorders. In our proposed model we have found the usage and effectiveness of the five different types of AI algorithms: Convolutional Neural Network, Support vector machine, Linear discriminant analysis, K Nearest Neighbor Classifier and Linear Regression on the two datasets of anxiety and depression. Comparing the results on the basis of different measurement metrics (accuracy, recall and precision), our model achieves the highest accuracy of 96% for anxiety and 96.8% for depression using the CNN algorithm. Additionally, our analysis shows that among Bangladeshi women of age 18-35, 7.4% suffers from profound levels of anxiety and 15.6% undergoes chronic depression.
机译:抑郁和焦虑是发展中国家大量残疾的主要原因。根据世界卫生组织(世卫组织)东南部地区的研究,孟加拉国在焦虑症中排名最高,女性受到严重影响为男性的两次。在早期阶段干预这些订单将比后期的治疗更便宜,更有效,因此我们提出了一种使用标准心理评估和机器学习算法的模型来诊断这种精神障碍的不同水平。在我们拟议的模型中,我们已经找到了五种不同类型的AI算法的使用和有效性:卷积神经网络,支持向量机,线性判别分析,K最近邻分类,以及在焦虑和抑郁数据数据上的线性回归。将结果与不同测量指标的基础(准确,召回和精确)进行比较,我们的模型使用CNN算法实现焦虑的最高精度为96%,而抑郁症的抑郁率为96.8%。此外,我们的分析表明,在18-35岁的孟加拉国女性中,7.4%的焦虑水平遭受了深刻的焦虑水平和15.6%的慢性抑郁症。

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