论文标题
纵向自学学习
Longitudinal Self-Supervised Learning
论文作者
论文摘要
纵向神经影像数据的机器学习分析通常基于有监督的学习,这需要大量的地面真相标签具有丰富的信息。由于在神经科学中经常缺少或昂贵的地面标签,因此我们通过将因素分解与自我监督的学习梳理,以识别每个人随着时间收获的多个MRI的变化和一致性,从而避免了它们。具体而言,我们通过制定与MRI和潜在图像表示相关的因素(例如脑年龄)之间的多元映射来提出一个新的分离定义。然后,跨纵向序列的收购发展的因素与自我监督学习的映射脱离了绘制,以使单个因素变化诱导表示空间中一个方向的变化。我们通过标准的自动编码结构实施了该模型,称为纵向自学学习(LSSL),其余弦损失了与图像表示的脑周期。我们将LSSL应用于两项纵向神经影像学研究,以突出其在从MRI中提取脑时代信息并揭示与神经退行性和神经心理学疾病相关的信息特征方面的强度。此外,与其他几种表示学习技术相比,LSSL学到的表示通过记录更快的收敛和更高(或类似)的预测准确性,从而有助于监督分类。
Machine learning analysis of longitudinal neuroimaging data is typically based on supervised learning, which requires a large number of ground-truth labels to be informative. As ground-truth labels are often missing or expensive to obtain in neuroscience, we avoid them in our analysis by combing factor disentanglement with self-supervised learning to identify changes and consistencies across the multiple MRIs acquired of each individual over time. Specifically, we propose a new definition of disentanglement by formulating a multivariate mapping between factors (e.g., brain age) associated with an MRI and a latent image representation. Then, factors that evolve across acquisitions of longitudinal sequences are disentangled from that mapping by self-supervised learning in such a way that changes in a single factor induce change along one direction in the representation space. We implement this model, named Longitudinal Self-Supervised Learning (LSSL), via a standard autoencoding structure with a cosine loss to disentangle brain age from the image representation. We apply LSSL to two longitudinal neuroimaging studies to highlight its strength in extracting the brain-age information from MRI and revealing informative characteristics associated with neurodegenerative and neuropsychological disorders. Moreover, the representations learned by LSSL facilitate supervised classification by recording faster convergence and higher (or similar) prediction accuracy compared to several other representation learning techniques.