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首页> 外文期刊>Frontiers in Computational Neuroscience >Positive Unanimous Voting Algorithm for Focal Cortical Dysplasia Detection on Magnetic Resonance Image
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Positive Unanimous Voting Algorithm for Focal Cortical Dysplasia Detection on Magnetic Resonance Image

机译:磁共振图像局灶性皮质发育异常的正一致投票算法

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摘要

Focal cortical dysplasia (FCD) is the main cause of epilepsy and can be automatically detected via magnetic resonance (MR) images. However, visual detection of lesions is time consuming and highly dependent on the doctor's personal knowledge and experience. In this paper, we propose a new framework for positive unanimous voting (PUV) to detect FCD lesions. Maps of gray matter thickness, gradient, relative intensity, and gray/white matter width are computed in the proposed framework to enhance the differences between lesional and non-lesional regions. Feature maps are further compared with the feature distributions of healthy controls to obtain feature difference maps. PUV driven by feature and feature difference maps is then applied to classify image voxels into lesion and non-lesion. The connected region analysis then refines the classification results by removing the tiny fragment regions consisting of falsely classified positive voxels. The proposed method correctly identified 8/10 patients with FCD lesions and 30/31 healthy people. Experimental results on the small FCD samples demonstrated that the proposed method can effectively reduce the number of false positives and guarantee correct detection of lesion regions compared with four single classifiers and two recent methods.
机译:局灶性皮质发育不良(FCD)是癫痫的主要原因,可以通过磁共振(MR)图像自动检测到。但是,目视检查病变非常耗时,并且高度取决于医生的个人知识和经验。在本文中,我们为检测FCD病变提出了一个一致的积极投票(PUV)的新框架。在提出的框架中计算了灰质厚度,梯度,相对强度和灰/白质宽度的图,以增强病变区域和非病变区域之间的差异。将特征图与健康控件的特征分布进行进一步比较,以获得特征差异图。然后将由特征和特征差异图驱动的PUV应用于将图像体素分类为病变和非病变。然后,通过删除由错误分类的正体素组成的微小片段区域,连通区域分析可以细化分类结果。所提出的方法正确地识别出8/10的FCD病变患者和30/31的健康人。在少量FCD样本上的实验结果表明,与四个单一分类器和两个最新方法相比,该方法可有效减少假阳性的数目并确保正确检测病变区域。

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