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Identifying lesions in paediatric epilepsy using morphometric and textural analysis of magnetic resonance images

机译:使用磁共振图像的形态计量学和纹理分析识别小儿癫痫病灶

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摘要

We seek to examine the use of an image processing pipeline on Magnetic Resonance Imaging (MRI) to identify features of Focal Cortical Dysplasia (FCD) in children who were suspected to have FCD on MRI (MRI-positive) and those with MRI-negative epilepsy. We aim to use a computer-aided diagnosis system to identify epileptogenic lesions with a combination of established morphometric features and textural analysis using Gray-Level Co-occurrence Matrices (GLCM) on MRI sequences. We implemented a modified version of the 2-Step Bayesian classifier method to a paediatric cohort with medically intractable epilepsy with MRI-positive and MRI-negative epilepsy, and evaluated the performance of the algorithm trained on textural features derived from T1-weighted (T1-w), T2-weighted (T2-w), and FLAIR (Fluid Attenuated Inversion Recovery) sequences. For MRI-positive cases, T1-w has the highest subjectwise sensitivity relative to T2-w and FLAIR (94% vs. 90% vs. 71% respectively), and also the highest lesional sensitivity (63% vs. 60% vs. 42% respectively), but the lowest lesional specificity (75% vs. 80% vs. 89% respectively). Combination of all three sequences improved the performance of the algorithm, with 97% subjectwise sensitivity. For MRI-negative cases, T1-w has the highest subjectwise sensitivity relative to T2-w and FLAIR (48% vs. 30% vs. 39% respectively), and also the highest lesional sensitivity (31% vs. 22% vs. 28% respectively). However, T2-w has the highest lesional specificity relative to T1-w and FLAIR (95% vs. 94% vs. 92% respectively) for MRI-negative cases. Combination of all three sequences improved the performance of the algorithm, with 70% subjectwise sensitivity. The 2-Step Naïve Bayes classifier correctly rejected 100% of the healthy subjects for all three sequences. Using combined morphometric and textural analysis in a 2-Step Bayesian classifier, applied to multiple MRI sequences, can assist with lesion detection in children with intractable epilepsy.
机译:我们力求研究在磁共振成像(MRI)上使用图像处理管道来确定疑似患有MRI FCD(MRI阳性)和MRI阴性癫痫的儿童的局灶性皮质发育不良(FCD)的特征。我们的目标是使用计算机辅助诊断系统,结合已建立的形态特征和使用MRI序列上的灰度共生矩阵(GLCM)进行纹理分析,来识别癫痫性病变。我们对患有医学顽固性癫痫并伴有MRI阳性和MRI阴性癫痫病的小儿队列实施了两步贝叶斯分类器方法的改进版本,并评估了从T1加权(T1- w),T2加权(T2-w)和FLAIR(流体衰减反转恢复)序列。对于MRI阳性病例,相对于T2-w和FLAIR,T1-w具有最高的主题敏感性(分别为94%vs. 90%vs. 71%),以及最高的病变敏感性(63%vs. 60%vs。分别为42%),但病灶特异性最低(分别为75%和80%和89%)。所有三个序列的组合提高了算法的性能,主观敏感性为97%。对于MRI阴性病例,相对于T2-w和FLAIR,T1-w具有最高的主题敏感性(分别为48%vs. 30%vs. 39%),以及最高的病灶敏感性(31%vs. 22%vs。分别为28%)。但是,对于MRI阴性病例,相对于T1-w和FLAIR,T2-w具有最高的病灶特异性(分别为95%对94%对92%)。所有三个序列的组合提高了算法的性能,主观敏感性为70%。两步朴素贝叶斯分类器正确地拒绝了所有三个序列的100%的健康受试者。在适用于多个MRI序列的两步贝叶斯分类器中使用形态分析和纹理分析相结合,可以帮助顽固性癫痫患儿进行病变检测。

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