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Towards long-tailed, multi-label disease classification from chest X-ray: Overview of the CXR-LT challenge

24 October 2023
G. Holste
Yiliang Zhou
Song Wang
Ajay Jaiswal
Mingquan Lin
Sherry Zhuge
Yuzhe Yang
Dongkyun Kim
Trong-Hieu Nguyen-Mau
Minh-Triet Tran
Jaehyup Jeong
Wongi Park
Jongbin Ryu
Feng Hong
Arsh Verma
Yosuke Yamagishi
Changhyun Kim
Hyeryeong Seo
Myungjoo Kang
L. A. Celi
Zhiyong Lu
Ronald M. Summers
George Shih
Zhangyang Wang
Yifan Peng
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Abstract

Many real-world image recognition problems, such as diagnostic medical imaging exams, are "long-tailed" \unicodex2013\unicode{x2013}\unicodex2013 there are a few common findings followed by many more relatively rare conditions. In chest radiography, diagnosis is both a long-tailed and multi-label problem, as patients often present with multiple findings simultaneously. While researchers have begun to study the problem of long-tailed learning in medical image recognition, few have studied the interaction of label imbalance and label co-occurrence posed by long-tailed, multi-label disease classification. To engage with the research community on this emerging topic, we conducted an open challenge, CXR-LT, on long-tailed, multi-label thorax disease classification from chest X-rays (CXRs). We publicly release a large-scale benchmark dataset of over 350,000 CXRs, each labeled with at least one of 26 clinical findings following a long-tailed distribution. We synthesize common themes of top-performing solutions, providing practical recommendations for long-tailed, multi-label medical image classification. Finally, we use these insights to propose a path forward involving vision-language foundation models for few- and zero-shot disease classification.

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