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基于变迁移率的迁移深度卷积神经网络的脑白质结构连接作为青少年肌阵挛性癫痫检测的生物标志物

White matter structural connectivity as a biomarker for detecting juvenile myoclonic epilepsy by transferred deep convolutional neural networks with varying transfer rates.

机构信息

Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, People's Republic of China.

Tianjin Key Laboratory of Brain Science and Neural Engineering, Tianjin University, Tianjin 300072, People's Republic of China.

出版信息

J Neural Eng. 2021 Oct 11;18(5). doi: 10.1088/1741-2552/ac25d8.

Abstract

. By detecting abnormal white matter changes, diffusion magnetic resonance imaging (MRI) contributes to the detection of juvenile myoclonic epilepsy (JME). In addition, deep learning has greatly improved the detection performance of various brain disorders. However, there is almost no previous study effectively detecting JME by a deep learning approach with diffusion MRI.. In this study, the white matter structural connectivity was generated by tracking the white matter fibers in detail based on Q-ball imaging and neurite orientation dispersion and density imaging. Four advanced deep convolutional neural networks (CNNs) were deployed by using the transfer learning approach, in which the transfer rate searching strategy was proposed to achieve the best detection performance.. Our results showed: (a) Compared to normal control, the white matter' neurite density of JME was significantly decreased. The most significantly abnormal fiber tracts between the two groups were found to be cortico-cortical connection tracts. (b) The proposed transfer rate searching approach contributed to find each CNN's best performance, in which the best JME detection accuracy of 92.2% was achieved by using the Inception_resnet_v2 network with a 16% transfer rate.. The results revealed: (a) Through detection of the abnormal white matter changes, the white matter structural connectivity can be used as a useful biomarker for detecting JME, which helps to characterize the pathophysiology of epilepsy. (b) The proposed transfer rate, as a new hyperparameter, promotes the CNNs transfer learning performance in detecting JME.

摘要

弥散磁共振成像(diffusion MRI)通过检测异常的白质变化,有助于发现青少年肌阵挛性癫痫(juvenile myoclonic epilepsy,JME)。此外,深度学习极大地提高了各种脑疾病的检测性能。然而,几乎没有以前的研究通过深度学习方法结合弥散 MRI 来有效地检测 JME。在这项研究中,基于 Q-ball 成像和神经丝取向分散和密度成像,通过详细跟踪白质纤维生成白质结构连接。通过使用迁移学习方法部署了四个先进的深度卷积神经网络(convolutional neural networks,CNNs),提出了迁移率搜索策略以达到最佳检测性能。研究结果表明:(a)与正常对照组相比,JME 的白质神经丝密度显著降低。两组之间差异最显著的纤维束被发现是皮质-皮质连接束。(b)所提出的迁移率搜索方法有助于找到每个 CNN 的最佳性能,其中使用迁移率为 16%的 Inception_resnet_v2 网络实现了 92.2%的最佳 JME 检测准确率。研究结果揭示:(a)通过检测异常的白质变化,可以将白质结构连接用作检测 JME 的有用生物标志物,有助于表征癫痫的病理生理学。(b)所提出的迁移率作为一个新的超参数,促进了 CNN 在检测 JME 中的迁移学习性能。

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