Tustison Nicholas J, Shrinidhi K L, Wintermark Max, Durst Christopher R, Kandel Benjamin M, Gee James C, Grossman Murray C, Avants Brian B
Department of Radiology and Medical Imaging, University of Virginia, Charlottesville, VA, USA,
Neuroinformatics. 2015 Apr;13(2):209-25. doi: 10.1007/s12021-014-9245-2.
Segmenting and quantifying gliomas from MRI is an important task for diagnosis, planning intervention, and for tracking tumor changes over time. However, this task is complicated by the lack of prior knowledge concerning tumor location, spatial extent, shape, possible displacement of normal tissue, and intensity signature. To accommodate such complications, we introduce a framework for supervised segmentation based on multiple modality intensity, geometry, and asymmetry feature sets. These features drive a supervised whole-brain and tumor segmentation approach based on random forest-derived probabilities. The asymmetry-related features (based on optimal symmetric multimodal templates) demonstrate excellent discriminative properties within this framework. We also gain performance by generating probability maps from random forest models and using these maps for a refining Markov random field regularized probabilistic segmentation. This strategy allows us to interface the supervised learning capabilities of the random forest model with regularized probabilistic segmentation using the recently developed ANTsR package--a comprehensive statistical and visualization interface between the popular Advanced Normalization Tools (ANTs) and the R statistical project. The reported algorithmic framework was the top-performing entry in the MICCAI 2013 Multimodal Brain Tumor Segmentation challenge. The challenge data were widely varying consisting of both high-grade and low-grade glioma tumor four-modality MRI from five different institutions. Average Dice overlap measures for the final algorithmic assessment were 0.87, 0.78, and 0.74 for "complete", "core", and "enhanced" tumor components, respectively.
从磁共振成像(MRI)中分割并量化神经胶质瘤,对于诊断、规划干预措施以及追踪肿瘤随时间的变化而言,是一项重要任务。然而,由于缺乏关于肿瘤位置、空间范围、形状、正常组织可能的移位以及强度特征等先验知识,这项任务变得复杂起来。为了应对这些复杂情况,我们引入了一个基于多模态强度、几何形状和不对称特征集的监督分割框架。这些特征推动了一种基于随机森林衍生概率的全脑和肿瘤监督分割方法。在这个框架内,与不对称相关的特征(基于最优对称多模态模板)展现出了出色的判别特性。我们还通过从随机森林模型生成概率图,并将这些图用于改进马尔可夫随机场正则化概率分割,从而提高了性能。这种策略使我们能够将随机森林模型的监督学习能力与使用最近开发的ANTsR软件包进行的正则化概率分割相衔接,ANTsR软件包是流行的高级归一化工具(ANTs)与R统计项目之间的一个全面的统计和可视化接口。所报告的算法框架在2013年医学图像计算与计算机辅助干预国际会议(MICCAI)多模态脑肿瘤分割挑战赛中表现最佳。挑战赛数据差异很大,包括来自五个不同机构的高级别和低级别神经胶质瘤肿瘤的四模态MRI。最终算法评估中,“完整”、“核心”和“强化”肿瘤成分的平均骰子重叠度量分别为0.87、0.78和0.74。