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Predicting Psychosis Using the Experience Sampling Method with Mobile Apps

机译:使用移动应用程序使用经验采样方法预测精神病

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Smart phones have become ubiquitous in the recent years, which opened up a new opportunity for rediscovering the Experience Sampling Method (ESM) in a new efficient form using mobile apps, and provides great prospects to become a low cost and high impact mHealth tool for psychiatry practice. The method is used to collect longitudinal data of participants' daily life experiences, and is ideal to capture fluctuations in emotions (momentary mental states) as an early indicator for later mental health disorder. In this study ESM data of patients with psychosis and controls were used to examine emotion changes and identify patterns. This paper attempts to determine whether aggregated ESM data, in which statistical measures represent the distribution and dynamics of the original data, are able to distinguish patients from controls. Variable importance, recursive feature elimination and ReliefF methods were used for feature selection. Model training and tuning, and testing were performed in nested cross-validation, and were based on algorithms such as Random Forests, Support Vector Machines, Gaussian Processes, Logistic Regression and Neural Networks. ROC analysis was used to post-process these models. Stability of model performances was studied using Monte Carlo simulations. The results provide evidence that pattern in mood changes can be captured with the combination of techniques used. The best results were achieved by SVM with radial kernel, where the best model performed with 82% accuracy and 82% sensitivity.
机译:近年来,智能手机已成为普遍存在的普遍存在,这开辟了使用移动应用程序以新的高效形式重新发现经验采样方法(ESM)的新机会,并提供了良好的前景,成为精神病学的低成本和高影响力的MHEATH工具实践。该方法用于收集参与者日常生活经验的纵向数据,是捕获情绪(瞬间精神状态)的波动作为早期心理健康障碍的早期指标。在本研究中,使用精神病和控制患者的ESM数据来检查情绪变化并确定模式。本文试图确定统计措施代表原始数据的分布和动态的汇总ESM数据是否能够区分控制患者。可变重要性,递归功能消除和Relieff方法用于特征选择。模型培训和调整以及测试在嵌套交叉验证中进行,并且基于算法,​​如随机林,支持向量机,高斯过程,逻辑回归和神经网络。 ROC分析用于后处理这些模型。使用Monte Carlo模拟研究了模型性能的稳定性。结果提供了证据,可以通过使用的技术组合来捕获情绪变化的模式。通过SVM具有径向内核的SVM实现了最佳结果,其中最佳模型以82 %的精度和82 %的灵敏度进行。

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