Gong Weikang, Beckmann Christian F, Vedaldi Andrea, Smith Stephen M, Peng Han
Wellcome Centre for Integrative Neuroimaging (WIN Centre for Functional MRI of the Brain), University of Oxford, Oxford, United Kingdom.
Donders Institute for Brain, Cognition and Behaviour, Radboud University Nijmegen, Nijmegen, Netherlands.
Front Psychiatry. 2021 May 10;12:627996. doi: 10.3389/fpsyt.2021.627996. eCollection 2021.
Brain age prediction from brain MRI scans not only helps improve brain ageing modelling generally, but also provides benchmarks for predictive analysis methods. Brain-age delta, which is the difference between a subject's predicted age and true age, has become a meaningful biomarker for the health of the brain. Here, we report the details of our brain age prediction models and results in the Predictive Analysis Challenge 2019. The aim of the challenge was to use T1-weighted brain MRIs to predict a subject's age in multicentre datasets. We apply a lightweight deep convolutional neural network architecture, Simple Fully Convolutional Neural Network (SFCN), and combined several techniques including data augmentation, transfer learning, model ensemble, and bias correction for brain age prediction. The model achieved first place in both of the two objectives in the PAC 2019 brain age prediction challenge: Mean absolute error (MAE) = 2.90 years without bias removal (Second Place = 3.09 yrs; Third Place = 3.33 yrs), and MAE = 2.95 years with bias removal, leading by a large margin (Second Place = 3.80 yrs; Third Place = 3.92 yrs).
通过脑部磁共振成像(MRI)扫描预测脑龄不仅有助于总体上改进脑老化建模,还为预测分析方法提供了基准。脑龄差值,即受试者预测年龄与真实年龄之间的差异,已成为衡量大脑健康状况的一个有意义的生物标志物。在此,我们报告我们在2019年预测分析挑战赛中的脑龄预测模型及结果的详细情况。该挑战赛的目的是利用T1加权脑部MRI在多中心数据集中预测受试者的年龄。我们应用了一种轻量级深度卷积神经网络架构,即简单全卷积神经网络(SFCN),并结合了包括数据增强、迁移学习、模型集成和脑龄预测偏差校正在内的多种技术。该模型在2019年脑龄预测挑战赛的两个目标中均获得第一名:去除偏差前平均绝对误差(MAE)=2.90岁(第二名=3.09岁;第三名=3.33岁),去除偏差后MAE=2.95岁,大幅领先(第二名=3.80岁;第三名=3.92岁)。