IEEE Trans Med Imaging. 2017 Jan;36(1):332-342. doi: 10.1109/TMI.2016.2597270.
Accurate localization of anatomical landmarks is an important step in medical imaging, as it provides useful prior information for subsequent image analysis and acquisition methods. It is particularly useful for initialization of automatic image analysis tools (e.g. segmentation and registration) and detection of scan planes for automated image acquisition. Landmark localization has been commonly performed using learning based approaches, such as classifier and/or regressor models. However, trained models may not generalize well in heterogeneous datasets when the images contain large differences due to size, pose and shape variations of organs. To learn more data-adaptive and patient specific models, we propose a novel stratification based training model, and demonstrate its use in a decision forest. The proposed approach does not require any additional training information compared to the standard model training procedure and can be easily integrated into any decision tree framework. The proposed method is evaluated on 1080 3D high-resolution and 90 multi-stack 2D cardiac cine MR images. The experiments show that the proposed method achieves state-of-the-art landmark localization accuracy and outperforms standard regression and classification based approaches. Additionally, the proposed method is used in a multi-atlas segmentation to create a fully automatic segmentation pipeline, and the results show that it achieves state-of-the-art segmentation accuracy.
解剖学标志的准确定位是医学成像中的一个重要步骤,因为它为后续的图像分析和获取方法提供了有用的先验信息。它对于自动图像分析工具(例如分割和配准)的初始化以及用于自动图像获取的扫描平面的检测特别有用。已经使用基于学习的方法(例如分类器和/或回归器模型)来执行地标定位。但是,当图像由于器官的大小,姿势和形状变化而存在较大差异时,经过训练的模型在异构数据集中可能无法很好地泛化。为了学习更多的数据自适应和特定于患者的模型,我们提出了一种新颖的基于分层的训练模型,并在决策林中证明了其用途。与标准模型训练过程相比,所提出的方法不需要任何其他培训信息,并且可以轻松集成到任何决策树框架中。在所提出的方法中,在 1080 个 3D 高分辨率和 90 个多堆叠 2D 心脏电影磁共振图像上进行了评估。实验表明,所提出的方法实现了最先进的地标定位精度,并优于标准回归和分类方法。此外,该方法用于多图谱分割以创建全自动分割管道,结果表明其达到了最先进的分割精度。