首页> 外文会议>International conference on medical image computing and computer assisted intervention;International workshop on machine learning in medical imaging >Context-Aware Anatomical Landmark Detection: Application to Deformable Model Initialization in Prostate CT Images
【24h】

Context-Aware Anatomical Landmark Detection: Application to Deformable Model Initialization in Prostate CT Images

机译:上下文感知的解剖地标检测:在前列腺CT图像中可变形模型初始化中的应用

获取原文

摘要

Anatomical landmark detection plays an important role in medical image analysis, e.g., for landmark-guided image registration, and deformable model initialization. Among various existing methods, regression-based landmark detection method has recently drawn much attention due to its robustness and efficiency. In this method, a regression model is often trained for each landmark to predict the location of this landmark from any image voxel based on local patch appearance, e.g., also the 3D displacement vector from any image voxel to this landmark. During the application stage, the predicted displacement vectors from all image voxels form a displacement field, which is then utilized for final landmark detection with a regression voting process. Accordingly, the quality of predicted displacement field largely determines the accuracy of final landmark detection. However, the displacement fields predicted by previous methods are often spatially inconsistent 1) within each displacement field of same landmark and 2) also across the displacement fields of all different landmarks, thus limiting the final landmark detection accuracy. The main reason is that for each landmark, the 3D displacement of each image voxel is predicted independently, and also for all different landmarks their displacement fields are estimated independently. To address these issues, we propose a two-layer regression model for context-aware landmark detection. Specifically, the first layer is designed to separately provide the initial displacement fields for different landmarks, and the second layer is designed to refine them jointly by using the context features extracted from results of the first layer to impose spatial consistency 1) within the displacement field of each landmark and 2) across the displacement fields of all different landmarks. Experimental results on a CT prostate dataset show that our proposed method significantly outperforms the traditional classification-based and regression-based methods in both landmark detection and deformable model initialization.
机译:解剖界标检测在医学图像分析中起着重要作用,例如对于界标引导的图像配准和可变形模型初始化。在各种现有方法中,基于回归的界标检测方法由于其鲁棒性和效率最近受到了很多关注。在这种方法中,通常针对每个界标训练回归模型,以基于局部补丁外观,例如从任何图像体素到该界标的3D位移矢量,从任何图像体素预测该界标的位置。在应用阶段,来自所有图像体素的预测位移向量形成位移场,然后将其用于回归投票过程中的最终地标检测。因此,预测位移场的质量在很大程度上决定了最终地标检测的准确性。然而,通过先前方法预测的位移场在空间上通常是不一致的:1)在同一界标的每个位移场内; 2)在所有不同界标的位移场之间也是如此,从而限制了最终界标的检测精度。主要原因是,对于每个地标,每个图像体素的3D位移是独立预测的,并且对于所有不同的地标,其位移场也是独立估计的。为了解决这些问题,我们提出了一个两层回归模型用于上下文感知地标检测。具体而言,第一层设计为单独提供不同地标的初始位移场,第二层设计为通过使用从第一层结果中提取的上下文特征来共同完善它们,以在位移场中施加空间一致性1)。 2)跨越所有不同地标的位移场。在CT前列腺数据集上的实验结果表明,我们提出的方法在界标检测和可变形模型初始化方面明显优于传统的基于分类和基于回归的方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号