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Fusing visual and clinical information for lung tissue classification in high-resolution computed tomography

机译:在高分辨率计算机断层扫描中融合视觉和临床信息以进行肺组织分类

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摘要

Objective: We investigate the influence of the clinical context of high-resolution computed tomography (HRCT) images of the chest on tissue classification.rnMethods and materials: 2D regions of interest in HRCT axial slices from patients affected with an interstitial lung disease are automatically classified into five classes of lung tissue. Relevance of the clinical parameters is studied before fusing them with visual attributes. Two multimedia fusion techniques are compared: early versus late fusion. Early fusion concatenates features in one single vector, yielding a true multimedia feature space. Late fusion consisting of the combination of the probability outputs of two support vector machines.rnResults and conclusion: The late fusion scheme allowed a maximum of 84% correct predictions of testing instances among the five classes of lung tissue. This represents a significant improvement of 10% compared to a pure visual-based classification. Moreover, the late fusion scheme showed high robustness to the number of clinical parameters used, which suggests that it is appropriate for mining clinical attributes with missing values in clinical routine.
机译:目的:我们研究胸部的高分辨率CT图像的临床情况对组织分类的影响。方法和材料:对患有间质性肺病的患者的HRCT轴向切片中的2D感兴趣区域进行自动分类分为五类肺组织。在将其与视觉属性融合之前,需要研究临床参数的相关性。比较了两种多媒体融合技术:早期融合与晚期融合。早期融合将特征合并在一个矢量中,从而产生了真正的多媒体特征空间。结果与结论:后期融合方案允许对五种肺组织中的测试实例进行最多84%的正确预测。与纯基于视觉的分类相比,这代表了10%的显着改进。此外,后期融合方案对所使用的临床参数数量显示出高度的鲁棒性,这表明它适合于在临床常规中挖掘具有缺失值的临床属性。

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