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Detection of obsessive compulsive disorder using resting-state functional connectivity data

机译:使用静态功能连接数据检测强迫症的强迫症

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Obsessive Compulsive Disorder (OCD) is a serious psychological disease that might be affiliated with abnormal resting-state functional connectivity (rs-FC) in default mode network (DMN) of brain. In this study it is aimed to discriminate patients with OCD from healthy individuals by employing pattern recognition methods on resting-state functional connectivity (rs-FC) data. For this purpose, two different feature extraction approaches were implemented. In the first approach the rs-FC fMRI data were subsampled and then the dimensionality of the subsampled data was reduced using subspace transforms. In the second approach, feature vectors having already low dimensions were obtained by measuring similarities of the rs-FC data of subjects to the separate means in OCD and healthy groups. Afterwards the healthy and OCD groups were classified using Support Vector Machine (SVM). In order to obtain more reliable performance results, the Double LOO-CV method that we proposed as a version of Leave-One-Out Cross Validation (LOO-CV) was used. Quite encouraging results are obtained when the features extracted using similarity measures are classified by SVM.
机译:强迫症(OCD)是一种严重的心理疾病,可能在大脑的默认模式网络(DMN)中具有异常静态功能连接(RS-FC)。在本研究中,它旨在通过在休息状态功能连接(RS-FC)数据上采用模式识别识别方法来区分患有健康个体的患者。为此目的,实施了两种不同的特征提取方法。在第一种方法中,RS-FC FMRI数据已被限制,然后使用子空间变换减少了限制数据的维度。在第二种方法中,通过测量受试者的RS-FC数据的相似性来获得具有已经低尺寸的特征向量通过对应于OCD和健康组的单独手段。之后,使用支持向量机(SVM)分类健康和OCD组。为了获得更可靠的性能结果,使用我们提出作为休假交叉验证(LOO-CV)的版本的双重LOO-CV方法。当使用相似度测量提取的特征被SVM分类时,获得了相当令人鼓舞的结果。

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