Long-Tailed Classification of Thorax Diseases on Chest X-Ray: A New Benchmark Study
Gregory Holste, Song Wang, Ziyu Jiang, Thomas C. Shen, George Shih,, Ronald M. Summers, Yifan Peng, Zhangyang Wang

TL;DR
This paper introduces a new benchmark for long-tailed classification of thorax diseases in chest X-rays, evaluating various methods to improve accuracy across both common and rare disease classes.
Contribution
It presents a comprehensive long-tailed chest X-ray benchmark with datasets, models, and analysis of existing methods for medical image classification.
Findings
Standard methods struggle with rare classes
State-of-the-art methods improve tail class accuracy
Insights guide future algorithm development
Abstract
Imaging exams, such as chest radiography, will yield a small set of common findings and a much larger set of uncommon findings. While a trained radiologist can learn the visual presentation of rare conditions by studying a few representative examples, teaching a machine to learn from such a "long-tailed" distribution is much more difficult, as standard methods would be easily biased toward the most frequent classes. In this paper, we present a comprehensive benchmark study of the long-tailed learning problem in the specific domain of thorax diseases on chest X-rays. We focus on learning from naturally distributed chest X-ray data, optimizing classification accuracy over not only the common "head" classes, but also the rare yet critical "tail" classes. To accomplish this, we introduce a challenging new long-tailed chest X-ray benchmark to facilitate research on developing long-tailed…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment
