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Probabilistic Multiple Sclerosis Lesion Classification Based on Modeling Regional Intensity Variability and Local Neighborhood Information

机译:基于区域强度变化和局部邻域信息建模的概率性多发性硬化病变分类

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Goal: In this paper, a fully automatic probabilistic method for multiple sclerosis (MS) lesion classification is presented, whereby the posterior probability density function over healthy tissues and two types of lesions (T1-hypointense and T2-hyperintense) is generated at every voxel. During training, the system explicitly models the spatial variability of the intensity distributions throughout the brain by first segmenting it into distinct anatomical regions and then building regional likelihood distributions for each tissue class based on multimodal magnetic resonance image (MRI) intensities. Local class smoothness is ensured by incorporating neighboring voxel information in the prior probability through Markov random fields. The system is tested on two datasets from real multisite clinical trials consisting of multimodal MRIs from a total of 100 patients with MS. Lesion classification results based on the framework are compared with and without the regional information, as well as with other state-of-the-art methods against the labels from expert manual raters. The metrics for comparison include Dice overlap, sensitivity, and positive predictive rates for both voxel and lesion classifications. Statistically significant improvements in Dice values (), for voxel-based and lesion-based sensitivity values (), and positive predictive rates ( and respectively) are shown when the proposed method is compared to the method without regional information, and to a widely used method . This holds particularly true in the posterior fossa, an ar- a where classification is very challenging. Significance: The proposed method allows us to provide clinicians with accurate tissue labels for T1-hypointense and T2-hyperintense lesions, two types of lesions that differ in appearance and clinical ramifications, and with a confidence level in the classification, which helps clinicians assess the classification results.
机译:目标:本文提出了一种用于多发性硬化症(MS)病变分类的全自动概率方法,从而在每个体素上生成了健康组织和两种类型的病变(T1-hypointense和T2-hyperintense)的后验概率密度函数。在训练过程中,该系统通过首先将其分割成不同的解剖区域,然后基于多峰磁共振图像(MRI)强度为每个组织类别建立区域似然性分布,来明确建模整个大脑的强度分布的空间变异性。通过使用马尔可夫随机场将相邻体素信息纳入先验概率中,可以确保局部类别的平滑度。该系统在来自真正的多站点临床试验的两个数据集上进行了测试,这些数据包括来自总共100例MS患者的多峰MRI。根据框架的病变分类结果在有无区域信息的情况下进行了比较,并与其他最新方法进行了比较(根据专家评分者的标签)。比较的指标包括骰子重叠,敏感性以及对体素和病变分类的阳性预测率。将拟议的方法与没有区域信息并广泛使用的方法进行比较时,显示出Dice值(),基于体素和基于病变的敏感性值()和阳性预测率(和)的统计显着改善。方法 。这在后颅窝尤其如此,这是一个分类非常困难的领域。意义:所提出的方法使我们能够为临床医生提供准确的组织标签,以标记T1高蛋白和T2高蛋白病灶,两种外观和临床后果不同的病灶,并具有分类的置信度,从而有助于临床医生评估分类结果。

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