Alzheimer’s disease Classification from Brain MRI based on transfer learning from CNN

Bijen Khagi, Chung-Ghiu Lee, G. Kwon
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引用次数: 41

Abstract

Various Convolutional Neural Network (CNN) architecture has been proposed for image classification and Object recognition. For the image based classification, it is a complex task for CNN to deal with hundreds of MRI Image slices, each of almost identical nature in a single patient. So, classifying a number of patients as an AD, MCI or NC based on 3D MRI becomes vague technique using 2D CNN architecture. Hence, to address this issue, we have simplified the idea of classifying patients on basis of 3D MRI but acknowledging the 2D features generated from the CNN framework. We present our idea regarding how to obtain 2D features from MRI and transform it to be applicable to classify using machine learning algorithm. Our experiment shows the result of classifying 3 class subjects patients. We employed scratched trained CNN or pretrained Alexnet CNN as generic feature extractor of 2D image which dimensions were reduced using PCA+TSNE, and finally classifying using simple Machine learning algorithm like KNN, Navies Bayes Classifier. Although the result is not so impressive but it definitely shows that this can be better than scratch trained CNN softmax classification based on probability score. The generated feature can be well manipulated and refined for better accuracy, sensitivity, and specificity.
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基于CNN迁移学习的脑MRI阿尔茨海默病分类
各种卷积神经网络(CNN)架构被提出用于图像分类和目标识别。对于基于图像的分类,CNN处理数百个MRI图像切片是一项复杂的任务,每个切片在单个患者中几乎具有相同的性质。因此,使用2D CNN架构,基于3D MRI对大量患者进行AD、MCI或NC的分类就变得模糊了。因此,为了解决这个问题,我们简化了基于3D MRI对患者进行分类的想法,同时承认了CNN框架生成的2D特征。我们提出了如何利用机器学习算法从MRI中获取二维特征并将其转化为适用于分类的想法。我们的实验显示了对3类受试者患者进行分类的结果。我们使用刮痕训练的CNN或预训练的Alexnet CNN作为二维图像的通用特征提取器,使用PCA+TSNE降维,最后使用KNN、naves Bayes Classifier等简单的机器学习算法进行分类。虽然结果不是那么令人印象深刻,但它绝对表明这可以比基于概率分数的scratch训练CNN softmax分类更好。生成的特征可以很好地操作和细化,以获得更好的准确性、灵敏度和特异性。
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