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      DCGANs for Realistic Breast Mass Augmentation in X-ray Mammography

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          Abstract

          Early detection of breast cancer has a major contribution to curability, and using mammographic images, this can be achieved non-invasively. Supervised deep learning, the dominant CADe tool currently, has played a great role in object detection in computer vision, but it suffers from a limiting property: the need of a large amount of labelled data. This becomes stricter when it comes to medical datasets which require high-cost and time-consuming annotations. Furthermore, medical datasets are usually imbalanced, a condition that often hinders classifiers performance. The aim of this paper is to learn the distribution of the minority class to synthesise new samples in order to improve lesion detection in mammography. Deep Convolutional Generative Adversarial Networks (DCGANs) can efficiently generate breast masses. They are trained on increasing-size subsets of one mammographic dataset and used to generate diverse and realistic breast masses. The effect of including the generated images and/or applying horizontal and vertical flipping is tested in an environment where a 1:10 imbalanced dataset of masses and normal tissue patches is classified by a fully-convolutional network. A maximum of ~ 0:09 improvement of F1 score is reported by using DCGANs along with flipping augmentation over using the original images. We show that DCGANs can be used for synthesising photo-realistic breast mass patches with considerable diversity. It is demonstrated that appending synthetic images in this environment, along with flipping, outperforms the traditional augmentation method of flipping solely, offering faster improvements as a function of the training set size.

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          GAN-based Synthetic Medical Image Augmentation for increased CNN Performance in Liver Lesion Classification

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            Author and article information

            Journal
            04 September 2019
            Article
            1909.02062
            fb47b4f3-2b16-4d8d-bd22-e1320b1fe003

            http://arxiv.org/licenses/nonexclusive-distrib/1.0/

            History
            Custom metadata
            68U10 (Primary) 68U20 (Secondary)
            4 pages, 4 figures, SPIE Medical Imaging 2020 Conference
            eess.IV cs.CV cs.LG stat.ML

            Computer vision & Pattern recognition,Machine learning,Artificial intelligence,Electrical engineering

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