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Efficient detection of mesial temporal sclerosis using hippocampus and CSF features in MRI images

机译:利用海马和CSF特征在MESIAL时间硬化的有效检测MRI图像

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Mesial temporal sclerosis (MTS) is one of the most common pathological abnormalities associated with temporal lobe epilepsy. Prompt identification of MTS can determine surgical candidacy of a medically refractory epilepsy patient thus reducing morbidity and mortality. Traditionally, MTS is detected by visual inspection or manual quantification using structural brain MRI images based on characteristics such as the volume loss, shape variance and high intensities. However, it is a subjective process with inter-observer variance. In this paper, we propose an automated detection method for MTS based on brain MRI image analysis. It includes brain and hippocampus segmentation followed by extraction of volume, shape and CSF-ratio features from the 3D hippocampal images. Support vector machines are then used for MTS detection based on the extracted features. Experimental results show that the proposed technique provides promising performance in MTS detection.
机译:术语时间硬化症(MTS)是与颞叶癫痫相关的最常见的病理异常之一。迅速识别MTS可以确定医学难治性癫痫患者的外科候选,从而降低发病率和死亡率。传统上,通过基于诸如体积损失,形状方差和高强度的特性使用结构脑MRI图像来检测MTS通过目视检查或手动量化来检测。但是,它是具有观察者间方差的主观过程。本文基于脑MRI图像分析提出了一种用于MTS的自动检测方法。它包括大脑和海马分段,然后从3D海马图像提取体积,形状和CSF比特征。然后,支持向量机基于提取的特征用于MTS检测。实验结果表明,该技术在MTS检测中提供了有希望的性能。

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