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Automated Detection of Epileptogenic Cortical Malformations Using Multimodal MRI

机译:使用多峰MRI自动检测癫痫性皮层畸形

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Focal cortical dysplasia (FCD), a malformation of cortical development, is a frequent cause of drug-resistant epilepsy. This surgically-amenable lesion is histologically characterized by cortical dyslamination, dysmorphic neurons, and balloon cells, which may extend into the immediate subcortical white matter. On MRI, FCD is typically associated with cortical thickening, blurring of the cortical boundary, and intensity anomalies. Notably, even histologically-verified FCD may not be clearly visible on preoperative MRI. We propose a novel FCD detection algorithm, which aggregates surface-based descriptors of morphology and intensity derived from T1-weighted (T1w) MRI, T2-weighted fluid attenuation inversion recovery (FLAIR) MRI, and FLAIR/T1w ratio images. Features were systematically sampled at multiple intracortical/subcortical levels and fed into a two-stage classifier for automated lesion detection based on ensemble learning. Using 5-fold cross-validation, we evaluated the approach in 41 patients with histologically-verified FCD and 38 age-and sex-matched healthy controls. Our approach showed excellent sensitivity (83%, 34/41 lesions detected) and specificity (92%, no findings in 35/38 controls), suggesting benefits for presurgical diagnostics.
机译:局灶性皮质发育不良(FCD)是皮质发育的畸形,是耐药性癫痫的常见原因。这种可手术切除的病灶在组织学上的特征是皮质功能异常,神经元畸形和球囊细胞,它们可能会扩展到直接的皮质下白质。在MRI上,FCD通常与皮质增厚,皮质边界模糊和强度异常有关。值得注意的是,在术前MRI上,即使经过组织学验证的FCD也可能无法清晰可见。我们提出了一种新颖的FCD检测算法,该算法聚合了从T1加权(T1w)MRI,T2加权流体衰减反转恢复(FLAIR)MRI和FLAIR / T1w比图像得出的基于表面的形态和强度描述符。在多个皮层内/皮层下水平对特征进行系统采样,并将其输入到基于集成学习的两阶段分类器中,以进行自动病变检测。使用5倍交叉验证,我们评估了41例经组织学验证的FCD患者和38例年龄和性别匹配的健康对照者的方法。我们的方法显示出极好的敏感性(83%,检测到34/41个病变)和特异性(92%,在35/38对照中未发现),提示术前诊断有益处。

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