FMRIB Centre, Department of Clinical Neurology, University of Oxford, Oxford, UK.
Neuroimage. 2011 Jun 1;56(3):907-22. doi: 10.1016/j.neuroimage.2011.02.046. Epub 2011 Feb 23.
Automatic segmentation of subcortical structures in human brain MR images is an important but difficult task due to poor and variable intensity contrast. Clear, well-defined intensity features are absent in many places along typical structure boundaries and so extra information is required to achieve successful segmentation. A method is proposed here that uses manually labelled image data to provide anatomical training information. It utilises the principles of the Active Shape and Appearance Models but places them within a Bayesian framework, allowing probabilistic relationships between shape and intensity to be fully exploited. The model is trained for 15 different subcortical structures using 336 manually-labelled T1-weighted MR images. Using the Bayesian approach, conditional probabilities can be calculated easily and efficiently, avoiding technical problems of ill-conditioned covariance matrices, even with weak priors, and eliminating the need for fitting extra empirical scaling parameters, as is required in standard Active Appearance Models. Furthermore, differences in boundary vertex locations provide a direct, purely local measure of geometric change in structure between groups that, unlike voxel-based morphometry, is not dependent on tissue classification methods or arbitrary smoothing. In this paper the fully-automated segmentation method is presented and assessed both quantitatively, using Leave-One-Out testing on the 336 training images, and qualitatively, using an independent clinical dataset involving Alzheimer's disease. Median Dice overlaps between 0.7 and 0.9 are obtained with this method, which is comparable or better than other automated methods. An implementation of this method, called FIRST, is currently distributed with the freely-available FSL package.
人脑磁共振图像的皮质下结构自动分割是一项重要但困难的任务,因为其强度对比度较差且变化较大。在典型结构边界的许多地方,都缺乏清晰、明确的强度特征,因此需要额外的信息才能实现成功的分割。本文提出了一种使用手动标记的图像数据来提供解剖学训练信息的方法。它利用了主动形状和外观模型的原理,但将其置于贝叶斯框架内,从而可以充分利用形状和强度之间的概率关系。该模型使用 336 张手动标记的 T1 加权磁共振图像对 15 种不同的皮质下结构进行了训练。使用贝叶斯方法,可以轻松有效地计算条件概率,避免了协方差矩阵条件不良的技术问题,即使在弱先验的情况下,也无需拟合额外的经验缩放参数,这是标准主动外观模型所必需的。此外,边界顶点位置的差异提供了一种直接的、纯粹的局部度量,用于衡量组间结构的几何变化,与基于体素的形态计量学不同,它不依赖于组织分类方法或任意平滑。本文提出了一种全自动分割方法,并使用 336 个训练图像的“留一法”测试进行了定量评估,同时使用包含阿尔茨海默病的独立临床数据集进行了定性评估。使用这种方法可以获得 0.7 到 0.9 之间的中位数 Dice 重叠率,与其他自动方法相当或更好。这种方法的一个实现,称为 FIRST,目前与免费的 FSL 包一起分发。