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A robust classification model based on iBSA and GCA Biomarkers for Diagnosis of Epilepsy

机译:一种基于IBSA和GCA生物标志物的益智诊断癫痫的鲁棒分类模型

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Presence of neurobiological disorder, like epilepsy, causes abnormalities in brain functionality. This is why connectivity and activity patterns of brain regions in epileptic patients are very different as compared with healthy subjects. These asymmetries can be used to distinguish epileptic patients from healthy subjects. Robust features are extracted to capture asymmetries in connectivity patterns. However, these features do not give any information about the brain activity in a particular local region. So in order to get better classification accuracy, we need robust features to capture asymmetries in regional activities. In this paper, we propose a novel feature set that captures abnormalities in activities at local regional level by finding inter subject blood oxygen level dependent (BOLD) signal asymmetries (iBSA). By combining this iBSA with asymmetries in global connectivity patterns, we are able to capture all asymmetries at global network as well as local regions in only 225 features. Employing these 225 features and support vector machines for classification, an overall accuracy of 86.6% was obtained on resting state fMRI (rfMRI) data of 180 subjects without any feature selection. The results presented in this paper are better than any other reported results in current literature.
机译:像癫痫一样的神经生物学疾病的存在导致脑功能的异常。这就是癫痫患者脑区的连接和活动模式与健康受试者相比的脑区的连接和活动模式非常不同。这些不对称的人可用于区分癫痫患者免受健康受试者。提取鲁棒特征以捕获连接模式中的不对称。然而,这些特征不给出关于特定局部区域的大脑活动的任何信息。因此,为了获得更好的分类准确性,我们需要强大的功能来捕获区域活动中的不对称。在本文中,我们提出了一种新的特征集,通过发现血氧血氧水平依赖性(粗体)信号不对称(IBSA)来捕获当地区域级别的活动异常。通过将此IBSA与全局连接模式中的不对称组合,我们能够在全球网络中捕获所有不对称,并且在仅225个功能中捕获所有不对称。采用这些225个功能和支持向量机进行分类,在没有任何特征选择的情况下,获得了180个受试者的休息状态FMRI(RFMRI)数据的总精度为86.6%。本文提出的结果优于当前文献中的任何其他报道的结果。

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