Bioengineering Department, University of Louisville, Louisville, KY, United States of America.
Department of Electronics and Communications Engineering, Mansoura University, Mansoura, Egypt.
PLoS One. 2018 Jul 13;13(7):e0200082. doi: 10.1371/journal.pone.0200082. eCollection 2018.
A new technique for more accurate automatic segmentation of the kidney from its surrounding abdominal structures in diffusion-weighted magnetic resonance imaging (DW-MRI) is presented. This approach combines a new 3D probabilistic shape model of the kidney with a first-order appearance model and fourth-order spatial model of the diffusion-weighted signal intensity to guide the evolution of a 3D geometric deformable model. The probabilistic shape model was built from labeled training datasets to produce a spatially variant, independent random field of region labels. A Markov-Gibbs random field spatial model with up to fourth-order interactions was adequate to capture the inhomogeneity of renal tissues in the DW-MRI signal. A new analytical approach estimated the Gibbs potentials directly from the DW-MRI data to be segmented, in order that the segmentation procedure would be fully automatic. Finally, to better distinguish the kidney object from the surrounding tissues, marginal gray level distributions inside and outside of the deformable boundary were modeled with adaptive linear combinations of discrete Gaussians (first-order appearance model). The approach was tested on a cohort of 64 DW-MRI datasets with b-values ranging from 50 to 1000 s/mm2. The performance of the presented approach was evaluated using leave-one-subject-out cross validation and compared against three other well-known segmentation methods applied to the same DW-MRI data using the following evaluation metrics: 1) the Dice similarity coefficient (DSC); 2) the 95-percentile modified Hausdorff distance (MHD); and 3) the percentage kidney volume difference (PKVD). High performance of the new approach was confirmed by the high DSC (0.95±0.01), low MHD (3.9±0.76) mm, and low PKVD (9.5±2.2)% relative to manual segmentation by an MR expert (a board certified radiologist).
提出了一种新的技术,用于在扩散加权磁共振成像(DW-MRI)中更准确地自动分割肾脏与其周围腹部结构。该方法将肾脏的新的 3D 概率形状模型与一阶外观模型和四阶扩散加权信号强度的空间模型相结合,以指导 3D 几何变形模型的演化。概率形状模型是从标记的训练数据集构建的,以产生空间变化的、独立的区域标签随机场。具有四阶相互作用的马尔可夫-吉布斯随机场空间模型足以捕获 DW-MRI 信号中肾脏组织的非均匀性。一种新的分析方法直接从要分割的 DW-MRI 数据估计 Gibbs 势,以便分割过程完全自动化。最后,为了更好地将肾脏对象与周围组织区分开来,用离散高斯函数的自适应线性组合(一阶外观模型)对变形边界内外的边缘灰度分布进行建模。该方法在 64 个 DW-MRI 数据集上进行了测试,b 值范围从 50 到 1000 s/mm2。使用以下评估指标,通过留一受试者外交叉验证评估所提出方法的性能,并将其与应用于相同 DW-MRI 数据的其他三种知名分割方法进行比较:1)骰子相似系数(DSC);2)95%的修正 Hausdorff 距离(MHD);3)肾脏体积差异百分比(PKVD)。与由磁共振专家(经过委员会认证的放射科医生)手动分割相比,新方法的高 DSC(0.95±0.01)、低 MHD(3.9±0.76)mm 和低 PKVD(9.5±2.2)%,证实了其具有较高的性能。