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Identification of potential biomarkers in the hippocampus region for the diagnosis of ADHD using PBL-McRBFN approach

机译:使用PBL-McRBFN方法鉴定海马区潜在的生物标志物以诊断ADHD

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Attention Deficiency Hyperactivity Disorder (ADHD) as a disruptive behavior disorder is receiving lots of attention because of its complexity and need for early detection. This paper presents a study on identification of potential biomarkers in the diagnosis of ADHD based on the structural-MRI of the brain obtained through ADHD-200 competition data set. The region of the brain considered here is "hippocampus". The grey matter probability of the T1 images is segmented followed by tissue alignment and inter subject normalization. Then, the voxels of the hippocampus are segregated using a region-of-interest mask, and the grey matter tissue probability values are obtained. These values are then used as features to classify ADHD patients against typically developing controls using a projection based learning algorithm for a meta-cognitive radial basis function network (PBL-McRBFN) and compared the results with that of support vector machines. Initially we take all the voxels of hippocampus for our study and then we have selected the most relevant voxels as a biomarker using Chi-square approach and developed a classifier to diagnosis ADHD. The results clearly highlight that use of hippocampus from the structural-MRI is sufficient to diagnosis ADHD to certain degree of confidence.
机译:注意缺陷多动障碍(ADHD)作为一种破坏性行为障碍,由于其复杂性和需要及早发现而受到了广泛关注。本文基于通过ADHD-200竞争数据集获得的大脑结构MRI,提出了在ADHD诊断中潜在生物标志物鉴定的研究。这里考虑的大脑区域是“海马”。分割T1图像的灰质概率,然后进行组织对齐和对象间归一化。然后,使用感兴趣区域蒙版隔离海马体素,并获得灰质组织概率值。然后,将这些值用作特征,以针对基于元认知径向基函数网络(PBL-McRBFN)的基于投影的学习算法将ADHD患者与典型发展的对照进行分类,并将结果与​​支持向量机进行比较。最初,我们将所有海马体素用于我们的研究,然后我们使用卡方方法选择了最相关的体素作为生物标记,并开发了用于诊断多动症的分类器。结果清楚地表明,使用结构性MRI产生的海马足以在一定程度上诊断ADHD。

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