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Forecasting depressive relapse in Bipolar Disorder from clinical data

机译:从临床数据预测双相障碍中抑郁复发

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Bipolar disorder (BD) is a mood disorder characterized by recurrent episodes of depression and mania/hypomania. Depressive relapse in BD reach rates close to 50% in 1 year and 70% in up to 4 years of treatment. Several studies have been developed to discover more efficient treatments for BD and prevent relapses. However, most of relapse studies used only statistical methods. We aim to analyze the performance of machine learning algorithms in predicting depressive relapse using only clinical data from patients. Five well-used machine learning algorithms (Support Vector Machines, Random Forests, Na?ve Bayes and Multilayer Perceptron) were applied to the Systematic Treatment Enhancement Program for Bipolar Disorder (STEPBD) dataset of a cohort of 800 patients who became euthymic during the study and were followed up for 1 year: 507 presented a depressive relapse and 293 did not. The algorithms showed reasonable performance in the prediction task, ranging from 61% to 80% in the F-measure. Random Forest algorithm had a higher average of performance (Relapse Group 68%; No Relapse Group 74%), although, the performance between classifiers showed no significant difference. Random Forest analysis demonstrated that the three most important mood symptoms observed were: interest, depression mood and energy. Results show that the machine learning algorithms could be seen as a sensible approach to better support medical decision-making in the BD treatment and prevention of future relapses.
机译:双极性障碍(BD)是一种情绪障碍,其特征在于抑郁和躁狂症/ Hypomania的反复发作。 BD抑郁复发达到率1年内接近50%,70%达4多年的治疗。已经开发了几项研究,以发现对BD的更有效的治疗方法并防止复发。然而,大多数复发研究仅使用统计方法。我们的目的是分析机器学习算法的性能,仅使用患者的临床数据预测抑郁复发。使用五种使用过良好的机器学习算法(支持向量机,随机森林,NA贝尔斯和多层Perceptron)对系统治疗增强计划(STEPBD)DataSet的系统治疗增强计划(STEPBD)DataSet,在该研究期间被视为肠道患者并随访1年:507呈现抑郁复发,293岁没有。该算法在预测任务中表现出合理的性能,在F测量中的61%至80%。随机森林算法具有较高的性能平均值(复发组68%;没有复发组74%),但是分类器之间的性能显示没有显着差异。随机森林分析表明,观察到的三种最重要的情绪症状是:兴趣,抑郁情绪和能量。结果表明,机器学习算法可以被视为在BD治疗中更好地支持医疗决策的明智方法,并防止未来复发。

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