首页> 外文会议>Conference on biomedical applications in molecular, structural, and functional imaging >Hippocampus Shape Analysis for Temporal Lobe Epilepsy Detection in Magnetic Resonance Imaging
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Hippocampus Shape Analysis for Temporal Lobe Epilepsy Detection in Magnetic Resonance Imaging

机译:磁共振成像中颞叶癫痫检测的海马形状分析

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There are evidences in the literature that Temporal Lobe Epilepsy (TLE) causes some lateralized atrophy and deformation on hippocampus and other substructures of the brain. Magnetic Resonance Imaging (MRI), due to high-contrast soft tissue imaging, is one of the most popular imaging modalities being used in TLE diagnosis and treatment procedures. Using an algorithm to help clinicians for better and more effective shape deformations analysis could improve the diagnosis and treatment of the disease. In this project our purpose is to design, implement and test a classification algorithm for MRIs based on hippocampal asymmetry detection using shape-and size-based features. Our method consisted of two main parts; (1) shape feature extraction, and (2) image classification. We tested 11 different shape and size features and selected four of them that detect the asymmetry in hippocampus significantly in a randomly selected subset of the dataset. Then, we employed a support vector machine (SVM) classifier to classify the remaining images of the dataset to normal and epileptic images using our selected features. The dataset contains 25 patient images in which 12 cases were used as a training set and the rest 13 cases for testing the performance of classifier. We measured accuracy, specificity and sensitivity of, respectively, 76%, 100%, and 70% for our algorithm. The preliminary results show that using shape and size features for detecting hippocampal asymmetry could be helpful in TLE diagnosis in MRI.
机译:文献中有证据表明颞叶癫痫(TLE)导致海马和其他脑部的其他副结构上的一些盲化的萎缩和变形。磁共振成像(MRI)由于高对比度软组织成像,是在TLE诊断和治疗程序中使用的最流行的成像模式之一。使用算法帮助临床医生进行更好,更有效的形状变形分析可以改善疾病的诊断和治疗。在该项目中,我们的目的是根据基于形状和大小的特征来设计,实施和测试基于海马不对称检测的MRI的分类算法。我们的方法包括两个主要部分; (1)形状特征提取,和(2)图像分类。我们测试了11个不同的形状和尺寸特征,并选择了其中的四个,在数据集的随机选择的子集中显着检测海马的不对称。然后,我们使用支持向量机(SVM)分类器将数据集的剩余图像分类为使用我们所选功能的正常和癫痫型图像。数据集包含25例患者图像,其中12个案例被用作训练集,其余13个用于测试分类器性能的情况。我们测量了我们算法的精度,特异性和敏感性,分别为76%,100%和70%。初步结果表明,使用用于检测海马不对称的形状和尺寸特征可能有助于MRI中的TLE诊断。

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