You've Got Two Teachers: Co-evolutionary Image and Report Distillation for Semi-supervised Anatomical Abnormality Detection in Chest X-ray
Jinghan Sun, Dong Wei, Zhe Xu, Donghuan Lu, Hong Liu, Liansheng Wang,, Yefeng Zheng

TL;DR
This paper introduces a co-evolutionary framework that leverages paired radiology reports and chest X-ray images to improve semi-supervised abnormality detection, reducing the need for extensive annotations.
Contribution
It proposes a novel co-evolutionary approach combining report and image models with pseudo label refinement for semi-supervised detection.
Findings
Outperforms existing weakly and semi-supervised methods on MIMIC-CXR.
Effectively incorporates report information into the detection pipeline.
Demonstrates improved localization and classification accuracy.
Abstract
Chest X-ray (CXR) anatomical abnormality detection aims at localizing and characterising cardiopulmonary radiological findings in the radiographs, which can expedite clinical workflow and reduce observational oversights. Most existing methods attempted this task in either fully supervised settings which demanded costly mass per-abnormality annotations, or weakly supervised settings which still lagged badly behind fully supervised methods in performance. In this work, we propose a co-evolutionary image and report distillation (CEIRD) framework, which approaches semi-supervised abnormality detection in CXR by grounding the visual detection results with text-classified abnormalities from paired radiology reports, and vice versa. Concretely, based on the classical teacher-student pseudo label distillation (TSD) paradigm, we additionally introduce an auxiliary report classification model,…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Lung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging
