TIMC IMAG Laboratory, University Joseph Fourier, CNRS UMR5525, Grenoble, 38710 La Tronche, France.
Med Phys. 2010 Apr;37(4):1579-90. doi: 10.1118/1.3315367.
The authors present a fully automatic algorithm for the segmentation of the prostate in three-dimensional magnetic resonance (MR) images.
The approach requires the use of an anatomical atlas which is built by computing transformation fields mapping a set of manually segmented images to a common reference. These transformation fields are then applied to the manually segmented structures of the training set in order to get a probabilistic map on the atlas. The segmentation is then realized through a two stage procedure. In the first stage, the processed image is registered to the probabilistic atlas. Subsequently, a probabilistic segmentation is obtained by mapping the probabilistic map of the atlas to the patient's anatomy. In the second stage, a deformable surface evolves toward the prostate boundaries by merging information coming from the probabilistic segmentation, an image feature model and a statistical shape model. During the evolution of the surface, the probabilistic segmentation allows the introduction of a spatial constraint that prevents the deformable surface from leaking in an unlikely configuration.
The proposed method is evaluated on 36 exams that were manually segmented by a single expert. A median Dice similarity coefficient of 0.86 and an average surface error of 2.41 mm are achieved.
By merging prior knowledge, the presented method achieves a robust and completely automatic segmentation of the prostate in MR images. Results show that the use of a spatial constraint is useful to increase the robustness of the deformable model comparatively to a deformable surface that is only driven by an image appearance model.
作者提出了一种用于三维磁共振(MR)图像中前列腺分割的全自动算法。
该方法需要使用解剖图谱,该图谱通过计算将一组手动分割图像映射到公共参考的变换场来构建。然后,将这些变换场应用于训练集中的手动分割结构,以在图谱上获得概率图。然后通过两阶段过程进行分割。在第一阶段,处理后的图像被注册到概率图谱。随后,通过将图谱的概率图映射到患者的解剖结构来获得概率分割。在第二阶段,通过合并来自概率分割、图像特征模型和统计形状模型的信息,使可变形表面向前列腺边界演变。在表面的演化过程中,概率分割允许引入空间约束,以防止可变形表面在不太可能的配置中泄漏。
该方法在 36 次由单个专家手动分割的检查中进行了评估。获得了中位数为 0.86 的 Dice 相似系数和平均表面误差为 2.41 毫米。
通过合并先验知识,所提出的方法实现了磁共振图像中前列腺的稳健且全自动分割。结果表明,与仅由图像外观模型驱动的可变形模型相比,使用空间约束可提高可变形模型的稳健性。