首页> 外文会议>IEEE International Symposium on Biomedical Imaging >AUTOMATIC VOLUMETRY CAN REVEAL VISUALLY UNDETECTED DISEASE FEATURES ON BRAIN MR IMAGES IN TEMPORAL LOBE EPILEPSY
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AUTOMATIC VOLUMETRY CAN REVEAL VISUALLY UNDETECTED DISEASE FEATURES ON BRAIN MR IMAGES IN TEMPORAL LOBE EPILEPSY

机译:自动体积可以揭示颞叶癫痫脑MR图像上的视觉未检测到的疾病特征

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Brain structural volumes can be used for automatically classifying subjects into categories like controls and patients. We aimed to automatically separate patients with temporal lobe epilepsy (TLE) with and without hippocampal atrophy on MRI, pTLE and nTLE, from controls, and determine the epileptogenic side. In the proposed framework 83 brain structure volumes are identified using multi-atlas segmentation. We then use structure selection using a divergence measure and classification based on structural volumes, as well as morphological similarities using SVM. A spectral analysis step is used to convert the pairwise measures of similarity between subjects into per-subject features. Up to 96% of pTLE patients were correctly separated from controls using 14 structural brain volumes. The classification method based on spectral analysis was 91% accurate at separating nTLE patients from controls. Right and left hippocampus were sufficient for the lateralization of the seizure focus in the pTLE group and achieved 100% accuracy.
机译:脑结构卷可用于将受试者自动分类为控制和患者等类别。我们旨在自动将患有颞叶癫痫(TLE)的患者与MRI,PTLE和NLE上的HIPPOPAMAL萎缩,从对照中进行,并确定癫痫术侧。在所提出的框架83中,使用多拟标志分割来识别脑结构卷。然后,我们使用基于结构体积的分解测量和分类以及使用SVM的形态相似性使用结构选择。光谱分析步骤用于将受试者之间的相似性转换为每个对象特征。使用14个结构脑体积,高达96%的PTLE患者与对照正确分离。基于光谱分析的分类方法在分离来自对照的纯粹患者时准确为91%。右侧和左海马足以在PTLE组中癫痫发作焦点的外侧化,并实现100%的精度。

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