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一种用于极早产儿运动异常早期预测的半监督图卷积网络。

A Semi-Supervised Graph Convolutional Network for Early Prediction of Motor Abnormalities in Very Preterm Infants.

作者信息

Li Hailong, Li Zhiyuan, Du Kevin, Zhu Yu, Parikh Nehal A, He Lili

机构信息

Imaging Research Center, Department of Radiology, Cincinnati Children's Hospital Medical Center, Cincinnati, OH 45229, USA.

Department of Radiology, University of Cincinnati College of Medicine, Cincinnati, OH 45229, USA.

出版信息

Diagnostics (Basel). 2023 Apr 21;13(8):1508. doi: 10.3390/diagnostics13081508.

Abstract

Approximately 32-42% of very preterm infants develop minor motor abnormalities. Earlier diagnosis soon after birth is urgently needed because the first two years of life represent a critical window of opportunity for early neuroplasticity in infants. In this study, we developed a semi-supervised graph convolutional network (GCN) model that is able to simultaneously learn the neuroimaging features of subjects and consider the pairwise similarity between them. The semi-supervised GCN model also allows us to combine labeled data with additional unlabeled data to facilitate model training. We conducted our experiments on a multisite regional cohort of 224 preterm infants (119 labeled subjects and 105 unlabeled subjects) who were born at 32 weeks or earlier from the Cincinnati Infant Neurodevelopment Early Prediction Study. A weighted loss function was applied to mitigate the impact of an imbalanced positive:negative (~1:2) subject ratio in our cohort. With only labeled data, our GCN model achieved an accuracy of 66.4% and an AUC of 0.67 in the early prediction of motor abnormalities, outperforming prior supervised learning models. By taking advantage of additional unlabeled data, the GCN model had significantly better accuracy (68.0%, = 0.016) and a higher AUC (0.69, = 0.029). This pilot work suggests that the semi-supervised GCN model can be utilized to aid early prediction of neurodevelopmental deficits in preterm infants.

摘要

约32%-42%的极早产儿会出现轻微运动异常。由于生命的头两年是婴儿早期神经可塑性的关键机会窗口,因此迫切需要在出生后尽早进行诊断。在本研究中,我们开发了一种半监督图卷积网络(GCN)模型,该模型能够同时学习受试者的神经影像特征并考虑它们之间的成对相似性。半监督GCN模型还使我们能够将标记数据与额外的未标记数据相结合,以促进模型训练。我们对来自辛辛那提婴儿神经发育早期预测研究的224名孕周32周及以下的早产儿(119名有标记受试者和105名无标记受试者)的多地点区域队列进行了实验。应用加权损失函数来减轻我们队列中阳性:阴性受试者比例失衡(约1:2)的影响。仅使用标记数据时,我们的GCN模型在运动异常的早期预测中准确率达到66.4%,AUC为0.67,优于先前的监督学习模型。通过利用额外的未标记数据,GCN模型的准确率显著提高(68.0%,P = 0.016),AUC更高(0.69,P = 0.029)。这项初步工作表明,半监督GCN模型可用于辅助早产儿神经发育缺陷的早期预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8031/10137879/781b8c2d08c9/diagnostics-13-01508-g001.jpg

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