Software and IT Department, École de Technologie Supérieure, Montreal, QC, H3C 1K3, Canada.
Department of Pediatrics, CHU Sainte-Justine, University of Montreal, Montreal, QC, H3T 1C5, Canada.
Sci Rep. 2023 Aug 15;13(1):13259. doi: 10.1038/s41598-023-40244-z.
Neonatal MRIs are used increasingly in preterm infants. However, it is not always feasible to analyze this data. Having a tool that assesses brain maturation during this period of extraordinary changes would be immensely helpful. Approaches based on deep learning approaches could solve this task since, once properly trained and validated, they can be used in practically any system and provide holistic quantitative information in a matter of minutes. However, one major deterrent for radiologists is that these tools are not easily interpretable. Indeed, it is important that structures driving the results be detailed and survive comparison to the available literature. To solve these challenges, we propose an interpretable pipeline based on deep learning to predict postmenstrual age at scan, a key measure for assessing neonatal brain development. For this purpose, we train a state-of-the-art deep neural network to segment the brain into 87 different regions using normal preterm and term infants from the dHCP study. We then extract informative features for brain age estimation using the segmented MRIs and predict the brain age at scan with a regression model. The proposed framework achieves a mean absolute error of 0.46 weeks to predict postmenstrual age at scan. While our model is based solely on structural T2-weighted images, the results are superior to recent, arguably more complex approaches. Furthermore, based on the extracted knowledge from the trained models, we found that frontal and parietal lobes are among the most important structures for neonatal brain age estimation.
新生儿磁共振成像(MRI)在早产儿中越来越多地被应用。然而,对这些数据进行分析并不总是可行的。如果有一种工具可以评估这段时期大脑的成熟度,那将是非常有帮助的。基于深度学习的方法可以解决这个任务,因为一旦经过适当的训练和验证,它们可以在几乎任何系统中使用,并在几分钟内提供整体定量信息。然而,对于放射科医生来说,一个主要的障碍是这些工具不容易解释。实际上,重要的是,驱动结果的结构需要详细,并经得起与现有文献的比较。为了解决这些挑战,我们提出了一种基于深度学习的可解释性管道,用于预测扫描时的胎龄,这是评估新生儿大脑发育的关键指标。为此,我们使用 dHCP 研究中的正常早产儿和足月儿来训练一个最先进的深度神经网络,以将大脑分割成 87 个不同的区域。然后,我们使用分割后的 MRI 提取大脑年龄估计的信息特征,并使用回归模型预测扫描时的大脑年龄。所提出的框架预测扫描时的胎龄平均绝对误差为 0.46 周。虽然我们的模型仅基于结构 T2 加权图像,但结果优于最近提出的、可以说是更复杂的方法。此外,基于训练模型中提取的知识,我们发现额叶和顶叶是用于新生儿大脑年龄估计的最重要的结构之一。