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Feature Selection and Imbalanced Data Handling for Depression Detection

机译:特征选择和不平衡数据处理用于抑郁症检测

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Major Depressive Disorder (MDD) is the most common disorder worldwide. Accurate detection of depression is a challenging problem. Machine learning-based automated depression detection provides useful assistance to the clinicians for effective depression diagnosis. One of the most fundamental steps in any automated detection is feature selection and investigation of the most relevant features. Studies show that regional volumes of the brain are affected in response to depression. Regional volumes are considered as features. The gray matter volumes' correlation with depression and the most effective gray volumes for depression detection is investigated in this study. Various feature selection techniques are studied, along with the investigation on the importance of resampling to handle imbalanced data, which is typically the case for depression detection, as the number of depressed instances is commonly a fraction of the entire data size. Experimental results using Random Forests (RF) and support vector machines (SVM) with a Gaussian kernel (RBF) as classifiers show that feature selection followed by data resampling gives superior performance measured by Area Under the ROC Curve (AUC) as well as prediction accuracy, and RF outperforms SVM for the depression detection task.
机译:严重抑郁症(MDD)是全球最常见的疾病。准确检测抑郁是一个具有挑战性的问题。基于机器学习的自动抑郁症检测为临床医生进行有效的抑郁症诊断提供了有用的帮助。任何自动检测中最基本的步骤之一就是特征选择和最相关特征的研究。研究表明,对抑郁症的反应会影响大脑的局部区域。区域量被认为是特征。在这项研究中,研究了灰质体积与抑郁的相关性以及最有效的抑郁检测灰体积。研究了各种特征选择技术,并研究了重采样对处理不平衡数据的重要性,这通常是抑郁检测的一种情况,因为抑郁实例的数量通常是整个数据大小的一小部分。使用具有高斯核(RBF)作为分类器的随机森林(RF)和支持向量机(SVM)进行的实验结果表明,特征选择和数据重采样后,通过ROC曲线下面积(AUC)测得的性能优越,并且预测精度高,并且在抑郁症检测任务方面,RF的性能优于SVM。

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