Chen Ming, Li Hailong, Wang Jinghua, Yuan Weihong, Altaye Mekbib, Parikh Nehal A, He Lili
The Perinatal Institute, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, United States.
Department of Electronic Engineering and Computing Systems, University of Cincinnati, Cincinnati, OH, United States.
Front Neurosci. 2020 Sep 18;14:858. doi: 10.3389/fnins.2020.00858. eCollection 2020.
Up to 40% of very preterm infants (≤32 weeks' gestational age) were identified with a cognitive deficit at 2 years of age. Yet, accurate clinical diagnosis of cognitive deficit cannot be made until early childhood around 3-5 years of age. Recently, brain structural connectome that was constructed by advanced diffusion tensor imaging (DTI) technique has been playing an important role in understanding human cognitive functions. However, available annotated neuroimaging datasets with clinical and outcome information are usually limited and expensive to enlarge in the very preterm infants' studies. These challenges hinder the development of neonatal prognostic tools for early prediction of cognitive deficit in very preterm infants. In this study, we considered the brain structural connectome as a 2D image and applied established deep convolutional neural networks to learn the spatial and topological information of the brain connectome. Furthermore, the transfer learning technique was utilized to mitigate the issue of insufficient training data. As such, we developed a transfer learning enhanced convolutional neural network (TL-CNN) model for early prediction of cognitive assessment at 2 years of age in very preterm infants using brain structural connectome. A total of 110 very preterm infants were enrolled in this work. Brain structural connectome was constructed using DTI images scanned at term-equivalent age. Bayley III cognitive assessments were conducted at 2 years of corrected age. We applied the proposed model to both cognitive deficit classification and continuous cognitive score prediction tasks. The results demonstrated that TL-CNN achieved improved performance compared to multiple peer models. Finally, we identified the brain regions most discriminative to the cognitive deficit. The results suggest that deep learning models may facilitate early prediction of later neurodevelopmental outcomes in very preterm infants at term-equivalent age.
高达40%的极早产儿(胎龄≤32周)在2岁时被发现存在认知缺陷。然而,在3至5岁左右的幼儿期之前,无法对认知缺陷进行准确的临床诊断。最近,通过先进的扩散张量成像(DTI)技术构建的脑结构连接组在理解人类认知功能方面发挥了重要作用。然而,在极早产儿的研究中,包含临床和结局信息的带注释神经影像数据集通常有限,且扩充成本高昂。这些挑战阻碍了用于早期预测极早产儿认知缺陷的新生儿预后工具的开发。在本研究中,我们将脑结构连接组视为二维图像,并应用成熟的深度卷积神经网络来学习脑连接组的空间和拓扑信息。此外,利用迁移学习技术来缓解训练数据不足的问题。因此,我们开发了一种迁移学习增强卷积神经网络(TL-CNN)模型,用于使用脑结构连接组对极早产儿2岁时的认知评估进行早期预测。本研究共纳入了110名极早产儿。使用在足月等效年龄扫描的DTI图像构建脑结构连接组。在矫正年龄2岁时进行贝利III认知评估。我们将所提出的模型应用于认知缺陷分类和连续认知分数预测任务。结果表明,与多个同类模型相比,TL-CNN的性能有所提高。最后,我们确定了对认知缺陷最具区分性的脑区。结果表明,深度学习模型可能有助于在足月等效年龄时对极早产儿后期神经发育结局进行早期预测。