Over the years, Machine Learning models have been successfully employed on neuroimaging data for accurately predicting brain age. Deviations from the healthy brain aging pattern are associated to the accelerated brain aging and brain abnormalities. Hence, efficient and accurate diagnosis techniques are required for eliciting accurate brain age estimations. Several contributions have been reported in the past for this purpose, resorting to different data-driven modeling methods. Recently, deep neural networks (also referred to as deep learning) have become prevalent in manifold neuroimaging studies, including brain age estimation. In this review, we offer a comprehensive analysis of the literature related to the adoption of deep learning for brain age estimation with neuroimaging data. We detail and analyze different deep learning architectures used for this application, pausing at research works published to date quantitatively exploring their application. We also examine different brain age estimation frameworks, comparatively exposing their advantages and weaknesses. Finally, the review concludes with an outlook towards future directions that should be followed by prospective studies. The ultimate goal of this paper is to establish a common and informed reference for newcomers and experienced researchers willing to approach brain age estimation by using deep learning models
翻译:多年来,在准确预测大脑年龄的神经成像数据方面,机械学习模型成功地应用了神经成像数据;健康大脑发育模式的偏差与大脑加速老龄化和大脑异常有关;因此,要得出准确的大脑年龄估计,需要高效和准确的诊断技术;过去曾报告过为此而采用不同数据驱动模型方法的若干贡献;最近,深神经网络(也称为深学习)在多重神经成像研究中变得十分普遍,包括大脑年龄估计;在本次审查中,我们全面分析与采用神经成像数据来进行大脑年龄估计的深学习有关的文献;我们详细分析用于这一应用的不同深学习结构,在出版的研究著作中进行详细分析,以便从数量上探讨其应用。我们还研究了不同的大脑年龄估计框架,比较了这些框架的优点和弱点。最后,审查结论是展望未来方向,未来研究应该遵循这些方向。本文的最终目标是,为愿意利用深学习模型进行大脑年龄估计的熟人和经验研究人员建立一个共同和知情的参考。