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Predicting the level of generalized anxiety disorder of the coronavirus pandemic among college age students using artificial intelligence technology

机译:用人工智能技术预测大学生冠状病毒大流行病的广义焦虑障碍水平

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Introduction: Emerging reports indicate heightened anxiety among university students during the Corona pandemic. Implications of which can impact their academic performance. Artificial intelligence (AI) through machine learning can be used to predict which students are more susceptible to anxiety which can inform closer monitoring and early intervention. To date, there are no studies that have explored the efficacy of AI to predict anxiety among college students. Objective: to develop the best fit model to predict anxiety and to rank the most important factors affecting anxiety. Method: Data was collected using an online survey that included general information; Covid-19 stressors and (GAD-7). This scale categorizes level of anxiety to none, mild, moderate, and severe. We received 917 survey answers. Several machine learning classifiers were used to develop the best fit model to predict student level of anxiety. Results: the best performance based on AUC is AdaBoost (0.943) followed by neural network (0.936). Highest accuracy and F1 were for neural network (0.754) and (0.749) respectively, then neural network selected to be the best fit model. The three scoring methods revealed that the top three features that predicted anxiety to be gender; sufficient support from family and friends; and fixed family income. Conclusion: Neural network model can assist college counselors to predict which students are going through anxiety and revealed the top three features for heightened student anxiety to be gender, a support system, and family fixed income. This information can alter college councilors for early mental intervention.
机译:介绍:新兴报告表明在科罗长大流行期间大学生焦虑症。其含义可以影响他们的学术表现。通过机器学习的人工智能(AI)可用于预测哪些学生更容易受到焦虑的影响,这可以告知更接近的监测和早期干预。迄今为止,没有研究探讨了AI预测大学生焦虑的疗效。目的:制定最佳拟合模型,以预测焦虑,并对影响焦虑的最重要因素进行排名。方法:使用包含一般信息的在线调查收集数据; Covid-19压力源和(GAD-7)。这种规模对无,轻度,中等和严重的焦虑水平分类。我们收到了917个调查答案。几种机器学习分类器用于开发最佳拟合模型以预测学生焦虑水平。结果:基于AUC的最佳性能是Adaboost(0.943),然后是神经网络(0.936)。最高精度和F1分别用于神经网络(0.754)和(0.749),然后选择是最佳拟合模型的神经网络。三种评分方法透露,预测性别焦虑的三大特征;家人和朋友的充分支持;和固定家庭收入。结论:神经网络模型可以帮助学院辅导员预测哪些学生正在经历焦虑,揭示了高级学生焦虑成为性别,支持系统和家庭固定收益的三大特征。这些信息可以改变大学议员进行早期心理干预。

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