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Classifying medical images using deep convolution neural network (CNN) architecture

机译:使用深度卷积神经网络(CNN)架构对医学图像进行分类

摘要

Embodiments of the present systems and methods may provide the capability to classify medical images, such as mammograms, in an automated manner using existing annotation information. In embodiments, only the global, image level tag may be needed to classify a mammogram into certain types, without fine annotation of the findings in the image. In an embodiment, a computer-implemented method for classifying medical images may comprise receiving a plurality of image tiles, each image tile including a portion of a whole view, processed by a trained or a pre-trained model and outputting a one-dimensional feature vector for each tile to generate a three-dimensional feature volume and classifying the larger image by a trained model based on the generated three-dimensional feature volume to form a classification of the image.
机译:本系统和方法的实施例可以提供使用现有注释信息以自动方式对医学图像(诸如乳房X线照片)进行分类的能力。在实施例中,可能仅需要全局图像级别标签来将乳房X线照片分类为某些类型,而无需对图像中的发现进行精细注释。在一个实施例中,一种用于对医学图像进行分类的计算机实现的方法可以包括:接收多个图像图块,每个图像图块包括整个视图的一部分,由训练后的模型或预训练后的模型进行处理,并输出一维特征用于每个图块的向量以生成三维特征量,并基于生成的三维特征量通过训练模型对较大图像进行分类,以形成图像分类。

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