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Chest x-ray generation and data augmentation for...
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Chest x-ray generation and data augmentation for cardiovascular abnormality classification

Abstract

Medical imaging datasets are limited in size due to privacy issues and the high cost of obtaining annotations. Augmentation is a widely used practice in deep learning to enrich the data in data-limited scenarios and to avoid overfitting. However, standard augmentation methods that produce new examples of data by varying lighting, field of view, and spatial rigid transformations do not capture the biological variance of medical imaging data and could result in unrealistic images. Generative adversarial networks (GANs) provide an avenue to understand the underlying structure of image data which can then be utilized to generate new realistic samples. In this work, we investigate the use of GANs for producing chest X-ray images to augment a dataset. This dataset is then used to train a convolutional neural network to classify images for cardiovascular abnormalities. We compare our augmentation strategy with traditional data augmentation and show higher accuracy for normal vs abnormal classification in chest X-rays.

Authors

Madani A; Moradi M; Karargyris A; Syeda-Mahmood T

Volume

10574

Publisher

SPIE, the international society for optics and photonics

Publication Date

March 2, 2018

DOI

10.1117/12.2293971

Name of conference

Medical Imaging 2018: Image Processing

Labels

Sustainable Development Goals (SDG)

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