首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention;MICCAI 2008 >Improving Parenchyma Segmentation by SimultaneousEstimation of Tissue Property T_1 Map and Group-Wise Registration of Inversion Recovery MR Breast Images
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Improving Parenchyma Segmentation by SimultaneousEstimation of Tissue Property T_1 Map and Group-Wise Registration of Inversion Recovery MR Breast Images

机译:通过同时估计组织性质T_1图和反转恢复MR乳腺图像的Group-Wise配准来改善实质分割

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The parenchyma tissue in the breast has a strong relation with predictive biomarkers of breast cancer. To better segment parenchyma, we perform segmentation on estimated tissue property T_1 map. To improve the estimation of tissue property (T_1) which is the basis for parenchyma segmentation, we present an integrated algorithm for simultaneous T_1 map estimation, T_1 map based parenchyma segmentation and group-wise registration on series of inversion recovery magnetic resonance (MR) breast images. The advantage of using this integrated algorithm is that the simultaneous T_1 map estimation (E-step) and group-wise registration (R-step) could benefit each other and jointly improve parenchyma segmentation. In particular, in E-step, T_1 map based segmentation could help perform an edge-preserving smoothing on the tentatively estimated noisy T_1 map, and could also help provide tissue probability maps to be robustly registered in R-step. Meanwhile, the improved estimation of T_1 map could help segment parenchyma in a more accurate way. In R-step, for robust registration, the group-wise registration is performed on the tissue probability maps produced in E-step, rather than the original inversion recovery MR images, since tissue probability maps are the intrinsic tissue property which is invariant to the use of different imaging parameters. The better alignment of images achieved in R-step can help improve T_1 map estimation and indirectly the T_1 map based parenchyma segmentation. By iteratively performing E-step and R-step, we can simultaneously obtain better results for T_1 map estimation, T_1 map based segmentation, group-wise registration, and finally parenchyma segmentation.
机译:乳房中的薄壁组织与乳腺癌的预测生物标志物有很强的关系。为了更好地分割实质,我们在估计的组织性质T_1图上执行分割。为了改善作为薄壁组织分割基础的组织特性(T_1)的估计,我们提出了一种集成算法,用于同时进行T_1图估计,基于T_1图的薄壁组织分割和对一系列反转恢复磁共振(MR)乳房进行逐组配准图片。使用这种集成算法的优势在于,同时进行的T_1图估计(E步)和逐组配准(R步)可以互惠互利,并共同改善实质分割。特别地,在E步中,基于T_1图的分割可以帮助对暂定估计的有噪T_1图执行边缘保留平滑,并且还可以帮助提供要在R步中稳健注册的组织概率图。同时,改进的T_1图估计可以帮助以更准确的方式分割实质。在R步中,为了进行鲁棒配准,对E步中生成的组织概率图(而不是原始的反演恢复MR图像)执行逐组配准,因为组织概率图是固有的组织特性,而固有的组织特性对于使用不同的成像参数。在R步中实现的图像更好的对齐方式可以帮助改善T_1地图的估计,并间接地基于T_1地图的实质分割。通过迭代执行E步骤和R步骤,我们可以同时获得更好的结果,以进行T_1地图估计,基于T_1地图的分割,逐组配准以及最终进行实质分割。

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