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A Supervised Learning Approach for Crohns Disease Detection Using Higher-Order Image Statistics and a Novel Shape Asymmetry Measure

机译:使用高阶图像统计和新颖的形状不对称测度的克罗恩病检测的监督学习方法

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摘要

Increasing incidence of Crohn’s disease (CD) in the Western world has made its accurate diagnosis an important medical challenge. The current reference standard for diagnosis, colonoscopy, is time-consuming and invasive while magnetic resonance imaging (MRI) has emerged as the preferred noninvasive procedure over colonoscopy. Current MRI approaches assess rate of contrast enhancement and bowel wall thickness, and rely on extensive manual segmentation for accurate analysis. We propose a supervised learning method for the identification and localization of regions in abdominal magnetic resonance images that have been affected by CD. Low-level features like intensity and texture are used with shape asymmetry information to distinguish between diseased and normal regions. Particular emphasis is laid on a novel entropy-based shape asymmetry method and higher-order statistics like skewness and kurtosis. Multi-scale feature extraction renders the method robust. Experiments on real patient data show that our features achieve a high level of accuracy and perform better than two competing methods.
机译:在西方世界,克罗恩病(CD)的发病率不断增加,使其准确诊断成为一项重要的医学挑战。当前的诊断,结肠镜检查参考标准是耗时且有创性的,而磁共振成像(MRI)已成为优于结肠镜检查的首选无创性检查方法。当前的MRI方法评估造影剂增强率和肠壁厚度,并依靠广泛的手动分割来进行精确分析。我们提出了一种监督学习方法,用于识别和定位受CD影响的腹部磁共振图像中的区域。诸如强度和纹理之类的低级特征与形状不对称信息一起使用,以区分患病区域和正常区域。特别强调基于新颖的基于熵的形状不对称方法和偏度和峰度之类的高阶统计量。多尺度特征提取使该方法具有鲁棒性。对真实患者数据进行的实验表明,我们的功能可以实现较高的准确性,并且比两种竞争方法具有更好的性能。

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