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Classification of Brain MRI with Big Data and deep 3D Convolutional Neural Networks

机译:具有大数据和深度3D卷积神经网络的脑MRI分类

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Our ever-aging society faces the growing problem of neurodegenerative diseases, in particular dementia. Magnetic Resonance Imaging provides a unique tool for non-invasive investigation of these brain diseases. However, it is extremely difficult for neurologists to identify complex disease patterns from large amounts of three-dimensional images. In contrast, machine learning excels at automatic pattern recognition from large amounts of data. In particular, deep learning has achieved impressive results in image classification. Unfortunately, its application to medical image classification remains difficult. We consider two reasons for this difficulty: First, volumetric medical image data is considerably scarcer than natural images. Second, the complexity of 3D medical images is much higher compared to common 2D images. To address the problem of small data set size, we assemble the largest dataset ever used for training a deep 3D convolutional neural network to classify brain images as healthy (HC). mild cognitive impairment (MCI) or Alzheimers disease (AD). We use more than 20.000 images from subjects of these three classes, which is almost 9x the size of the previously largest data set. The problem of high dimensionality is addressed by using a deep 3D convolutional neural network, which is state-of-the-art in large-scale image classification. We exploit its ability to process the images directly, only with standard preprocessing, but without the need for elaborate feature engineering. Compared to other work, our workflow is considerably simpler, which increases clinical applicability. Accuracy is measured on the ADNI+AIBL data sets, and the independent CADDementia benchmark.
机译:我们这个不断老龄化的社会面临着越来越多的神经退行性疾病,尤其是痴呆症。磁共振成像为这些脑部疾病的非侵入性研究提供了独特的工具。但是,神经科医生很难从大量的三维图像中识别出复杂的疾病模式。相反,机器学习擅长于从大量数据进行自动模式识别。特别是,深度学习在图像分类方面取得了令人印象深刻的结果。不幸的是,其在医学图像分类中的应用仍然很困难。我们考虑造成这种困难的两个原因:首先,体医学图像数据比自然图像要稀缺得多。其次,与普通2D图像相比,3D医学图像的复杂度要高得多。为了解决数据集规模小的问题,我们组装了用于训练深度3D卷积神经网络以将大脑图像分类为健康(HC)的最大数据集。轻度认知障碍(MCI)或阿尔茨海默氏病(AD)。我们使用来自这三类对象的20.000张图像,几乎是以前最大数据集的9倍。高维问题是通过使用深度3D卷积神经网络解决的,这是大规模图像分类中的最新技术。我们利用其直接处理图像的能力,仅需使用标准的预处理程序即可,而无需进行复杂的特征工程设计。与其他工作相比,我们的工作流程非常简单,从而提高了临床适用性。精度是根据ADNI + AIBL数据集和独立的CADDementia基准进行测量的。

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