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Automatic 3D graph cuts for brain cortex segmentation in patients with focal cortical dysplasia

机译:局灶性皮质发育不良患者脑皮质分割的自动3D图削减

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In patients with intractable epilepsy, focal cortical dysplasia (FCD) is the most frequent malformation of cortical development. Identification of subtle FCD lesions using brain MRI scans is very often based on the cortical thickness measurement, where brain cortex segmentation is required as a preprocessing step. However, the accuracy of the selected segmentation method can highly affect the final FCD lesion detection. In this work, we propose an improved graph cuts algorithm integrating Markov random field-based energy function for more accurate brain cortex MRI segmentation. Our method uses three-label graph cuts and preforms automatic 3D MRI brain cortex segmentation integrating intensity and boundary information. The performance of the method is tested on both simulated MR brain images with different noise levels and real patients with FCD lesions. Experimental quantitative segmentation results showed that the proposed method is effective, robust to noise and achieves higher accuracy than other popular brain MRI segmentation methods. The qualitative validation, visually verified by a medical expert, showed that the FCD lesions were segmented well as a part of the cortex, indicating increased thickness and cortical deformation. The proposed technique can be successfully used in this, as well as in many other clinical applications.
机译:在患有顽固性癫痫患者中,局灶性皮质发育不良(FCD)是皮质发育中最常见的畸形。使用脑MRI扫描的微妙FCD病变的鉴定通常基于皮质厚度测量,其中需要脑皮质分割作为预处理步骤。然而,所选分段方法的准确性可以高度影响最终的FCD病变检测。在这项工作中,我们提出了一种改进的图表算法,为更准确的大脑皮层MRI分割进行了基于Markov随机场的能量函数。我们的方法使用三个标签图剪切和预成型自动3D MRI脑皮层分段集成强度和边界信息。该方法的性能在模拟MR脑图像上进行了不同的噪声水平和FCD病变的真实患者。实验定量分割结果表明,该方法是有效的,对噪声鲁棒,达到比其他流行脑MRI分段方法更高的精度。由医学专家视觉验证的定性验证表明,FCD病变被分段,作为皮质的一部分,表明厚度和皮质变形增加。所提出的技术可以成功地使用,以及许多其他临床应用。

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