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An Integrated Segmentation and Classification Approach Applied to Multiple Sclerosis Analysis

机译:应用于多发性硬化分析的综合分割和分类方法

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We present a novel multiscale approach that combines segmentation with classification to detect abnormal brain structures in medical imagery, and demonstrate its utility in detecting multiple sclerosis lesions in 3D MRI data. Our method uses segmentation to obtain a hierarchical decomposition of a multi-channel, anisotropic MRI scan. It then produces a rich set of features describing the segments in terms of intensity, shape, location, and neighborhood relations. These features are then fed into a decision tree-based classifier, trained with data labeled by experts, enabling the detection of lesions in all scales. Unlike common approaches that use voxel-by-voxel analysis, our system can utilize regional properties that are often important for characterizing abnormal brain structures. We provide experiments showing successful detections of lesions in both simulated and real MR images.
机译:我们提出了一种新型多尺度方法,将分类与分类进行分类以检测医疗图像中的异常脑结构,并证明其在检测3D MRI数据中的多发性硬化病变的实用性。我们的方法使用分割来获得多通道的各向异性MRI扫描的分层分解。然后,它产生了一种丰富的特征,描述了强度,形状,位置和邻居关系方面的段。然后将这些特征馈入基于决策树的分类器,培训,该分类为由专家标记的数据训练,从而能够检测所有尺度中的病变。与使用Voxel-By-Voxel分析的常见方法不同,我们的系统可以利用通常对于表征异常脑结构来说的区域性质。我们提供了显示模拟和实际MR图像中的病变的成功检测的实验。

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