Galimzianova Alfiia, Pernuš Franjo, Likar Boštjan, Špiclin Žiga
University of Ljubljana, Faculty of Electrical Engineering, Tržaška 25, 1000 Ljubljana, Slovenia.
University of Ljubljana, Faculty of Electrical Engineering, Tržaška 25, 1000 Ljubljana, Slovenia.
Neuroimage. 2016 Jan 1;124(Pt A):1031-1043. doi: 10.1016/j.neuroimage.2015.09.047. Epub 2015 Sep 30.
Accurate characterization of white-matter lesions from magnetic resonance (MR) images has increasing importance for diagnosis and management of treatment of certain neurological diseases, and can be performed in an objective and effective way by automated lesion segmentation. This usually involves modeling the whole-brain MR intensity distribution, however, capturing various sources of MR intensity variability and lesion heterogeneity results in highly complex whole-brain MR intensity models, thus their robust estimation on a large set of MR images presents a huge challenge. We propose a novel approach employing stratified mixture modeling, where the main premise is that the otherwise complex whole-brain model can be reduced to a tractable parametric form in small brain subregions. We show on MR images of multiple sclerosis (MS) patients with different lesion loads that robust estimators enable accurate mixture modeling of MR intensity in small brain subregions even in the presence of lesions. Recombination of the mixture models across strata provided an accurate whole-brain MR intensity model. Increasing the number of subregions and, thereby, the model complexity, consistently improved the accuracy of whole-brain MR intensity modeling and segmentation of normal structures. The proposed approach was incorporated into three unsupervised lesion segmentation methods and, compared to original and three other state-of-the-art methods, the proposed modeling approach significantly improved lesion segmentation according to increased Dice similarity indices and lower number of false positives on real MR images of 30 patients with MS.
从磁共振(MR)图像中准确表征白质病变对于某些神经系统疾病的诊断和治疗管理愈发重要,并且可以通过自动病变分割以客观有效的方式来完成。这通常涉及对全脑MR强度分布进行建模,然而,捕捉MR强度变异性和病变异质性的各种来源会导致全脑MR强度模型高度复杂,因此在大量MR图像上对其进行稳健估计面临巨大挑战。我们提出一种采用分层混合建模的新方法,其主要前提是原本复杂的全脑模型可以在小脑亚区域简化为易于处理的参数形式。我们在具有不同病变负荷的多发性硬化症(MS)患者的MR图像上表明,即使存在病变,稳健估计器也能在小脑亚区域对MR强度进行准确的混合建模。跨层混合模型的重组提供了准确的全脑MR强度模型。增加亚区域数量,进而增加模型复杂性,持续提高了全脑MR强度建模和正常结构分割的准确性。所提出的方法被纳入三种无监督病变分割方法中,并且与原始方法和其他三种最先进的方法相比,根据30例MS患者真实MR图像上增加的Dice相似性指数和更低的假阳性数量,所提出的建模方法显著改善了病变分割。