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大间隔局部估计及其在医学图像分类中的应用。

Large Margin Local Estimate With Applications to Medical Image Classification.

出版信息

IEEE Trans Med Imaging. 2015 Jun;34(6):1362-77. doi: 10.1109/TMI.2015.2393954. Epub 2015 Jan 19.

Abstract

Medical images usually exhibit large intra-class variation and inter-class ambiguity in the feature space, which could affect classification accuracy. To tackle this issue, we propose a new Large Margin Local Estimate (LMLE) classification model with sub-categorization based sparse representation. We first sub-categorize the reference sets of different classes into multiple clusters, to reduce feature variation within each subcategory compared to the entire reference set. Local estimates are generated for the test image using sparse representation with reference subcategories as the dictionaries. The similarity between the test image and each class is then computed by fusing the distances with the local estimates in a learning-based large margin aggregation construct to alleviate the problem of inter-class ambiguity. The derived similarities are finally used to determine the class label. We demonstrate that our LMLE model is generally applicable to different imaging modalities, and applied it to three tasks: interstitial lung disease (ILD) classification on high-resolution computed tomography (HRCT) images, phenotype binary classification and continuous regression on brain magnetic resonance (MR) imaging. Our experimental results show statistically significant performance improvements over existing popular classifiers.

摘要

医学图像在特征空间中通常表现出较大的类内变化和类间歧义,这可能会影响分类准确性。针对这个问题,我们提出了一种新的基于子分类稀疏表示的大间隔局部估计 (LMLE) 分类模型。我们首先将不同类别的参考集细分为多个簇,以减小每个子类别内的特征变化,与整个参考集相比。然后,使用稀疏表示生成测试图像的局部估计,参考子类别作为字典。通过在基于学习的大间隔聚合构建中融合与局部估计的距离,计算测试图像与每个类别的相似性,以减轻类间歧义的问题。最后,使用得出的相似性来确定类别标签。我们证明,我们的 LMLE 模型通常适用于不同的成像模式,并将其应用于三个任务:高分辨率计算机断层扫描 (HRCT) 图像上的间质性肺疾病 (ILD) 分类、大脑磁共振成像 (MR) 上的表型二进制分类和连续回归。我们的实验结果表明,与现有的流行分类器相比,我们的模型在性能上有显著提高。

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