论文标题
使用脑MRI数据和深卷积神经网络对阿尔茨海默氏病自动分类
Automatic Classification of Alzheimer's Disease using brain MRI data and deep Convolutional Neural Networks
论文作者
论文摘要
阿尔茨海默氏病(AD)是当今世界面临的最常见的公共卫生问题之一。这种疾病的患病率很高,主要是在老年人的记忆力丧失和认知能力下降中。广告检测是一项具有挑战性的任务,许多作者利用神经成像和其他临床数据开发了许多计算机化的自动诊断系统。 MRI扫描提供高强度可见特征,使这些扫描成为最广泛使用的大脑成像技术。近年来,深度学习在医学图像分析方面取得了领先的成功。但是,对大脑MRI分类应用深度学习技术的研究相对较少。本文探讨了在脑MRI图像和分割图像上评估的几个深度学习体系结构的构建。分段图像背后的想法研究了图像分割步骤对深度学习分类的影响。图像处理提出了一条管道,该管道包括预处理,以增强MRI扫描和后处理,该过程包括用于分割脑组织的分割方法。结果表明,处理后的图像在四个不同的架构上的AD与CN与CN(认知正常)的二进制分类方面达到了更好的准确性。重新结构体系结构在其他体系结构之间的预测准确性最高(原始大脑图像为90.83%,处理后的图像为93.50%)。
Alzheimer's disease (AD) is one of the most common public health issues the world is facing today. This disease has a high prevalence primarily in the elderly accompanying memory loss and cognitive decline. AD detection is a challenging task which many authors have developed numerous computerized automatic diagnosis systems utilizing neuroimaging and other clinical data. MRI scans provide high-intensity visible features, making these scans the most widely used brain imaging technique. In recent years deep learning has achieved leading success in medical image analysis. But a relatively little investigation has been done to apply deep learning techniques for the brain MRI classification. This paper explores the construction of several deep learning architectures evaluated on brain MRI images and segmented images. The idea behind segmented images investigates the influence of image segmentation step on deep learning classification. The image processing presented a pipeline consisting of pre-processing to enhance the MRI scans and post-processing consisting of a segmentation method for segmenting the brain tissues. The results show that the processed images achieved a better accuracy in the binary classification of AD vs. CN (Cognitively Normal) across four different architectures. ResNet architecture resulted in the highest prediction accuracy amongst the other architectures (90.83% for the original brain images and 93.50% for the processed images).