Chronological age of healthy brain is able to be predicted using deep neural networks from T1-weighted magnetic resonance images (T1 MRIs), and the predicted brain age could serve as an effective biomarker for detecting aging-related diseases or disorders. In this paper, we propose an end-to-end neural network architecture, referred to as optimal transport based feature pyramid fusion (OTFPF) network, for the brain age estimation with T1 MRIs. The OTFPF consists of three types of modules: Optimal Transport based Feature Pyramid Fusion (OTFPF) module, 3D overlapped ConvNeXt (3D OL-ConvNeXt) module and fusion module. These modules strengthen the OTFPF network's understanding of each brain's semi-multimodal and multi-level feature pyramid information, and significantly improve its estimation performances. Comparing with recent state-of-the-art models, the proposed OTFPF converges faster and performs better. The experiments with 11,728 MRIs aged 3-97 years show that OTFPF network could provide accurate brain age estimation, yielding mean absolute error (MAE) of 2.097, Pearson's correlation coefficient (PCC) of 0.993 and Spearman's rank correlation coefficient (SRCC) of 0.989, between the estimated and chronological ages. Widespread quantitative experiments and ablation experiments demonstrate the superiority and rationality of OTFPF network. The codes and implement details will be released on GitHub: https://github.com/ZJU-Brain/OTFPF after final decision.
翻译:健康大脑的慢性年龄可以通过T1加权磁共振图像(T1 MMIs)的深度神经网络预测出,而预测的大脑年龄可以作为检测与老龄化有关的疾病或疾病的有效生物标志。在本文中,我们提议了一个端到端神经网络结构,称为基于交通的最佳特征的金字塔聚合(OTFPF)网络,用于与T1 MIMs进行大脑年龄估计。OTFFF由三类模块组成:优化运输基于地貌质优劣质Pyramid Fusional(OTFPF)模块,3D重叠的ConNeXt(3D OL-ConvNeXt)模块和聚合模块。这些模块可以加强OTFFF网络对每个大脑半多式和多级特征金字塔信息的理解,并大大改进其估计性能。与最新状态的模型相比,拟议的OTFFFFFS将更快并进行更好的结合。与11,728MIMS-3-97年的Silentrialalalalalalalalalalalalalal ASal(OFServ) SS AS AS AS AS AS AS ASionality-dealizalizal-dealizalum URal AS AS AS AS ASalbal AS AS AS AS AS AS) 和OBI.