论文标题
表面不可知的指标用于皮质体积分割和回归
Surface Agnostic Metrics for Cortical Volume Segmentation and Regression
论文作者
论文摘要
大脑皮层执行高阶脑功能,因此与一系列认知疾病有关。当前对皮质变异的分析通常是通过将表面网格模型拟合到内部和外皮层边界的,并研究了表面积和皮质曲率或厚度等指标。但是,这些需要很长时间才能运行,并且对运动,图像和表面分辨率敏感,这可以禁止它们在临床环境中使用。在本文中,我们提出了一种机器学习解决方案,训练一种新型的体系结构,以预测T2 MRI图像的皮质厚度和曲率指标,同时还返回预测不确定性的指标。我们提出的模型在临床队列(唐氏综合症)上进行了测试,该模型通常会导致表面建模失败。结果表明,深层卷积神经网络是预测一系列大脑发育阶段和病理学的皮质指标的可行选择。
The cerebral cortex performs higher-order brain functions and is thus implicated in a range of cognitive disorders. Current analysis of cortical variation is typically performed by fitting surface mesh models to inner and outer cortical boundaries and investigating metrics such as surface area and cortical curvature or thickness. These, however, take a long time to run, and are sensitive to motion and image and surface resolution, which can prohibit their use in clinical settings. In this paper, we instead propose a machine learning solution, training a novel architecture to predict cortical thickness and curvature metrics from T2 MRI images, while additionally returning metrics of prediction uncertainty. Our proposed model is tested on a clinical cohort (Down Syndrome) for which surface-based modelling often fails. Results suggest that deep convolutional neural networks are a viable option to predict cortical metrics across a range of brain development stages and pathologies.