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Integrated Prediction Method for Mental Illness with Multimodal Sleep Function Indicators

机译:具有多式睡眠功能指标的精神疾病综合预测方法

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Sleep quality has great effect on physical and mental health. Severe insomnia will cause autonomic neurological dysfunction. For making good clinical decisions, it is crucial to extract features of sleep quality and accurately predict the mental illness. Prior studies have a number of deficiencies to be overcome. On the one hand, the selected features for sleep quality are not good enough, as they do not account for multisource and heterogeneous features. On the other hand, the mental illness prediction model does not work well and thus needs to be enhanced and improved. This paper presents a multi-dimensional feature extraction method and an ensemble prediction model for mental illness. First, we do correlation analysis for every indicators and sleep quality, and further select the optimal heterogeneous features. Next, we propose a combinational model, which is integrated by basic modules according to their weights. Finally, we perform abundant experiments to test our method. Experimental results demonstrate that our approach outperforms many state-of-the-art approaches.
机译:睡眠质量对身心健康有很大影响。严重的失眠将引起自主神经功能障碍。为了提高良好的临床决策,这对于提取睡眠质量的特征并准确预测精神疾病至关重要。事先研究有许多缺陷要克服。一方面,睡眠质量的所选功能不够好,因为它们不考虑多源和异质特征。另一方面,精神疾病预测模型不起作用,因此需要提高和改善。本文提出了一种多维特征提取方法和精神疾病的集合预测模型。首先,我们为每个指标和睡眠质量进行相关分析,进一步选择最佳的异构特征。接下来,我们提出了一种组合模型,其根据其权重被基本模块集成。最后,我们对测试我们的方法进行丰富的实验。实验结果表明,我们的方法优于许多最先进的方法。

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