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Fuzzy Multi-channel Clustering with Individualized Spatial Priors for Segmenting Brain Lesions and Infarcts

机译:具有个性化空间先验的模糊多通道聚类,用于分割脑部病变和梗塞

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Quantitative analysis of brain lesions and ischemic infarcts is becoming very important due to their association with cardiovascular disease and normal aging. In this paper, we present a semi-supervised segmentation methodology that detects and classifies cerebrovascular disease in multi-channel magnetic resonance (MR) images. The method combines intensity based fuzzy c-means (FCM) segmentation with spatial probability maps calculated from a normative set of images from healthy individuals. Unlike common FCM-based methods which segment only healthy tissue, we have extended the fuzzy segmentation to include patient-specific spatial priors for both pathological conditions (lesions and infarcts). These priors are calculated by estimating the statistical voxel-wise variation of the healthy anatomy, and identifying abnormalities as deviations from normality. False detection is reduced by knowledge-based rules. Assessment on a population of 47 patients from different imaging sites illustrates the potential of the proposed method in segmenting both hyperintense lesions and necrotic infarcts.
机译:由于脑病变和缺血性梗死与心血管疾病和正常衰老有关,因此定量分析变得非常重要。在本文中,我们提出了一种在多通道磁共振(MR)图像中检测并分类脑血管疾病的半监督分割方法。该方法将基于强度的模糊c均值(FCM)分割与从健康个体的一组标准化图像中计算出的空间概率图结合在一起。与仅对健康组织进行分割的基于普通FCM的方法不同,我们将模糊分割扩展为包括针对两种病理状况(病变和梗塞)的患者特定的空间先验。这些先验值是通过估算健康解剖结构的统计体素方向变化,并将异常识别为偏离正常值来计算的。基于知识的规则可减少错误检测。对来自不同成像部位的47位患者进行的评估表明,该方法在分割高强度病变和坏死性梗塞方面具有潜力。

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