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A Supervised Breast Lesion Images Classification from Tomosynthesis Technique

机译:层析合成技术对乳腺病变影像进行分类

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In this paper, we propose a deep learning approach for breast lesions classification, by processing breast images obtained using an innovative acquisition system, the Tomosynthesis, a medical instrument able to acquire high-resolution images using a lower radiographic dose than normal Computed Tomography (CT). The acquired images were processed to obtain Regions Of Interest (ROIs) containing lesions of different categories. Subsequently, several pre-trained Convo-lutional Neural Network (CNN) models were evaluated as feature extractors and coupled with non-neural classifiers for discriminate among the different categories of lesions. Results showed that the use of CNNs as feature extractor and the subsequent classification using a non-neural classifier reaches high values of Accuracy, Sensitivity and Specificity.
机译:在本文中,我们通过处理使用创新性采集系统Tomosynthesis获得的乳房图像,提出了一种用于乳腺病变分类的深度学习方法,Tomosynthesis是一种能够以比通常的X线断层摄影术(CT)更低的放射线剂量获取高分辨率图像的医疗仪器)。对获取的图像进行处理,以获得包含不同类别病变的“关注区域”(ROI)。随后,将几个经过训练的卷积神经网络(CNN)模型作为特征提取器进行评估,并与非神经分类器结合使用,以区分不同类别的病变。结果表明,使用CNN作为特征提取器以及随后使用非神经分类器进行分类的准确性,敏感性和特异性都很高。

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