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Patch-Based Abnormality Maps for Improved Deep Learning-Based Classification of Huntington's Disease

机译:基于补丁的异常图,用于改善亨廷顿疾病的深层学习分类

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Deep learning techniques have demonstrated state-of-the-art performances in many medical imaging applications. These methods can efficiently learn specific patterns. An alternative approach to deep learning is patch-based grading methods, which aim to detect local similarities and differences between groups of subjects. This latter approach usually requires less training data compared to deep learning techniques. In this work, we propose two major contributions: first, we combine patch-based and deep learning methods. Second, we propose to extend the patch-based grading method to a new patch-based abnormality metric. Our method enables us to detect localized structural abnormalities in a test image by comparison to a template library consisting of images from a variety of healthy controls. We evaluate our method by comparing classification performance using different sets of features and models. Our experiments show that our novel patch-based abnormality metric increases deep learning performance from 91.3% to 95.8% of accuracy compared to standard deep learning approaches based on the MRI intensity.
机译:深度学习技术在许多医学成像应用中表现出最先进的性能。这些方法可以有效地学习特定模式。深度学习的替代方法是基于补丁的分级方法,其目的是检测受试者组之间的局部相似性和差异。与深度学习技术相比,后一种方法通常需要较少的培训数据。在这项工作中,我们提出了两项​​重大贡献:首先,我们结合了基于补丁和深度学习的方法。其次,我们建议将基于补丁的分级方法扩展到基于补丁的异常度量。我们的方法使我们能够通过与来自各种健康控制的图像组成的模板库来检测测试图像中的局部结构异常。我们通过使用不同的特征和模型进行比较分类性能来评估我们的方法。我们的实验表明,与基于MRI强度的标准深度学习方法相比,我们的新型贴剂的异常度量从准确度的91.3%增加到95.8%。

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