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Deep Learning of Cortical Surface Features Using Graph-Convolution Predicts Neonatal Brain Age and Neurodevelopmental Outcome

机译:使用图卷积深度学习皮质表面特征可预测新生儿的大脑年龄和神经发育结局

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We investigated the ability of graph convolutional network (GCN) that takes into account the mesh topology as a sparse graph to predict brain age for preterm neonates using cortical surface morphometrics, i.e. cortical thickness and sulcal depth. Compared to machine learning and deep learning methods that did not use the surface topological information, the GCN better predicted the ages for preterm neonates with none/mild perinatal brain injuries (NMI). We then tested the GCN trained using NMI brains to predict the age of neonates with severe brain injuries (SI). Results also displayed good accuracy ($ext{MAE}=1.43$ weeks), while the analysis of the interaction term (true age × group) showed that the slope of the predicted brain age relative to the true age for the SI group was significantly less steep than the NMI group ($mathrm{p} < 0.0001$), indicating that SI can decelerate early postnatal growth. To understand regional contributions to age prediction, we applied GCNs separately to the vertices within each cortical parcellation. The middle cingulate cortex that is known to be one of the thickest cortical regions in the neonatal period showed the best accuracy in age prediction ($ext{MAE}=1.24$ weeks). Furthermore, we found that the regional brain ages computed using GCN models in several frontal cortices significantly correlated with cognitive abilities at 3 years of age. Furthermore, the brain predicted age in part of the superior temporal cortex, which is the auditory and language processing locus, was related to language functional scores at 3 years. Our results demonstrate the potential of the GCN models for predicting brain age as well as localizing brain regions contributing to the prediction of age and future cognitive outcome.
机译:我们研究了图卷积网络(GCN)的能力,该功能考虑了网格拓扑作为稀疏图,使用皮质表面形态计量学(即皮质厚度和沟深)来预测早产儿的大脑年龄。与不使用表面拓扑信息的机器学习和深度学习方法相比,GCN可以更好地预测没有/轻度围产期脑损伤(NMI)的早产儿的年龄。然后,我们测试了使用NMI大脑训练的GCN,以预测患有严重脑损伤(SI)的新生儿的年龄。结果也显示出良好的准确性( $ \ text {MAE} = 1.43 $ 周数),而对交互作用项(真实年龄×组)的分析表明,SI组的预测大脑年龄相对于真实年龄的斜率明显小于NMI组( $ \ mathrm {p} < 0.0001美元 ),表明SI可以减缓出生后的早期生长。为了了解区域对年龄预测的贡献,我们将GCN分别应用于每个皮质小隔内的顶点。已知是新生儿期最厚的皮层区之一的中间扣带回皮层在年龄预测中显示出最高的准确性( $ \ text {MAE} = 1.24美元 周)。此外,我们发现,使用GCN模型在几个额叶皮层中计算的区域脑年龄与3岁时的认知能力显着相关。此外,大脑上颞叶皮质的一部分(即听觉和语言加工的场所)的预测年龄与3岁时的语言功能评分有关。我们的结果证明了GCN模型在预测大脑年龄以及定位大脑区域方面的潜力,从而有助于预测年龄和未来的认知结果。

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