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Learning Invariant Feature Representation to Improve Generalization Across Chest X-Ray Datasets

Abstract

Chest radiography is the most common medical image examination for screening and diagnosis in hospitals. Automatic interpretation of chest X-rays at the level of an entry-level radiologist can greatly benefit work prioritization and assist in analyzing a larger population. Subsequently, several datasets and deep learning-based solutions have been proposed to identify diseases based on chest X-ray images. However, these methods are shown to be vulnerable to shift in the source of data: a deep learning model performing well when tested on the same dataset as training data, starts to perform poorly when it is tested on a dataset from a different source. In this work, we address this challenge of generalization to a new source by forcing the network to learn a source-invariant representation. By employing an adversarial training strategy, we show that a network can be forced to learn a source-invariant representation. Through pneumonia-classification experiments on multi-source chest X-ray datasets, we show that this algorithm helps in improving classification accuracy on a new source of X-ray dataset.

Authors

Ghimire S; Kashyap S; Wu JT; Karargyris A; Moradi M

Book title

Machine Learning in Medical Imaging

Series

Lecture Notes in Computer Science

Volume

12436

Pagination

pp. 644-653

Publisher

Springer Nature

Publication Date

January 1, 2020

DOI

10.1007/978-3-030-59861-7_65
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