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Automated Detection of Juvenile Myoclonic Epilepsy using CNN based Transfer Learning in Diffusion MRI*

机译:在扩散MRI中使用基于CNN的转移学习自动检测未成年人的肌阵挛性癫痫*

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Epilepsy is one of the largest neurological diseases in the world, and juvenile myoclonic epilepsy (JME) usually occurs in adolescents, giving patients tremendous burdens during growth, which really needs the early diagnosis. Advanced diffusion magnetic resonance imaging (MRI) could detect the subtle changes of the white matter, which could be a non-invasive early diagnosis biomarker for JME. Transfer learning can solve the problem of insufficient clinical samples, which could avoid overfitting and achieve a better detection effect. However, there is almost no research to detect JME combined with diffusion MRI and transfer learning. In this study, two advanced diffusion MRI methods, high angle resolved diffusion imaging (HARDI) and neurite orientation dispersion and density imaging (NODDI), were used to generate the connectivity matrix which can describe tiny changes in white matter. And three advanced convolutional neural networks (CNN) based transfer learning were applied to detect JME. A total of 30 participants (15 JME patients and 15 normal controls) were analyzed. Among the three CNN models, Inception_resnet_v2 based transfer learning is better at detecting JME than Inception_v3 and Inception_v4, indicating that the "short cut" connection can improve the ability to detect JME. Inception_resnet_v2 achieved to detect JME with the accuracy of 75.2% and the AUC of 0.839. The results support that diffusion MRI and CNN based transfer learning have the potential to improve the automated detection of JME.
机译:癫痫病是世界上最大的神经系统疾病之一,青少年肌阵挛性癫痫(JME)通常发生在青少年中,给患者的生长带来沉重负担,这确实需要早期诊断。先进的扩散磁共振成像(MRI)可以检测出白质的细微变化,这可能是JME的非侵入性早期诊断生物标志物。转移学习可以解决临床样本不足的问题,可以避免过度拟合,达到更好的检测效果。但是,几乎没有研究结合扩散MRI和转移学习来检测JME。在这项研究中,使用了两种先进的扩散MRI方法,即高角度分辨扩散成像(HARDI)和神经突取向弥散与密度成像(NODDI),来生成可描述白质微小变化的连通性矩阵。并基于三个高级卷积神经网络(CNN)的转移学习来检测JME。共分析了30名参与者(15名JME患者和15名正常对照)。在这三个CNN模型中,基于Inception_resnet_v2的转移学习比Inception_v3和Inception_v4更好地检测JME,这表明“快捷方式”连接可以提高检测JME的能力。 Inception_resnet_v2能够以75.2%的准确度和0.839的AUC来检测JME。结果表明,基于扩散MRI和CNN的转移学习具有改善JME自动检测的潜力。

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