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Regional Manifold Learning for Disease Classification

机译:疾病分类的区域流形学习

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摘要

While manifold learning from images itself has become widely used in medical image analysis, the accuracy of existing implementations suffers from viewing each image as a single data point. To address this issue, we parcellate images into regions and then separately learn the manifold for each region. We use the regional manifolds as low-dimensional descriptors of high-dimensional morphological image features, which are then fed into a classifier to identify regions affected by disease. We produce a single ensemble decision for each scan by the weighted combination of these regional classification results. Each weight is determined by the regional accuracy of detecting the disease. When applied to cardiac magnetic resonance imaging of 50 normal controls and 50 patients with reconstructive surgery of Tetralogy of Fallot, our method achieves significantly better classification accuracy than approaches learning a single manifold across the entire image domain.
机译:尽管从图像本身进行多种学习已经广泛用于医学图像分析中,但是现有实现方式的准确性受到将每个图像视为单个数据点的困扰。为了解决这个问题,我们将图像分成多个区域,然后分别学习每个区域的流形。我们使用区域流形作为高维形态图像特征的低维描述符,然后将其输入分类器中以识别受疾病影响的区域。通过这些区域分类结果的加权组合,我们为每次扫描生成单个整体决策。每个权重由检测疾病的区域准确性决定。当将其应用于50名正常对照和50名法洛四联症重建手术的患者的心脏磁共振成像时,与学习整个图像域中单个流形的方法相比,我们的方法可实现更好的分类精度。

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