Puzniak Robert J, Prabhakaran Gokulraj T, Hoffmann Michael B
Visual Processing Lab, Department of Ophthalmology, Otto-von-Guericke-University, Magdeburg, Germany.
Center for Behavioral Brain Sciences, Otto-von-Guericke-University, Magdeburg, Germany.
Front Neurosci. 2021 Oct 25;15:755785. doi: 10.3389/fnins.2021.755785. eCollection 2021.
Convolutional neural network (CNN) models are of great promise to aid the segmentation and analysis of brain structures. Here, we tested whether CNN trained to segment normal optic chiasms from the T1w magnetic resonance imaging (MRI) image can be also applied to abnormal chiasms, specifically with optic nerve misrouting as typical for human albinism. We performed supervised training of the CNN on the T1w images of control participants ( = 1049) from the Human Connectome Project (HCP) repository and automatically generated algorithm-based optic chiasm masks. The trained CNN was subsequently tested on data of persons with albinism (PWA; = 9) and controls ( = 8) from the CHIASM repository. The quality of outcome segmentation was assessed the comparison to manually defined optic chiasm masks using the Dice similarity coefficient (DSC). The results revealed contrasting quality of masks obtained for control (mean DSC ± SEM = 0.75 ± 0.03) and PWA data (0.43 ± 0.8, few-corrected = 0.04). The fact that the CNN recognition of the optic chiasm fails for chiasm abnormalities in PWA underlines the fundamental differences in their spatial features. This finding provides proof of concept for a novel deep-learning-based diagnostics approach of chiasmal misrouting from T1w images, as well as further analyses on chiasmal misrouting and their impact on the structure and function of the visual system.
卷积神经网络(CNN)模型在辅助脑结构的分割和分析方面具有很大的潜力。在此,我们测试了经过训练从T1加权磁共振成像(MRI)图像中分割正常视交叉的CNN是否也可应用于异常视交叉,特别是针对人类白化病典型的视神经错路情况。我们在来自人类连接体项目(HCP)存储库的对照参与者(n = 1049)的T1w图像上对CNN进行了监督训练,并自动生成基于算法的视交叉掩码。随后,在来自CHIASM存储库的白化病患者(PWA;n = 9)和对照(n = 8)的数据上对训练好的CNN进行了测试。使用Dice相似系数(DSC)与手动定义的视交叉掩码进行比较,评估分割结果的质量。结果显示,对照数据(平均DSC±SEM = 0.75±0.03)和PWA数据(0.43±0.08,少量校正p = 0.04)获得的掩码质量形成对比。CNN对视交叉的识别在PWA的视交叉异常中失败这一事实突出了它们空间特征的根本差异。这一发现为基于深度学习的从T1w图像诊断视交叉错路的新方法以及对视交叉错路及其对视觉系统结构和功能的影响的进一步分析提供了概念验证。