Presentation + Paper
3 April 2024 Using artificial intelligence for chest radiograph interpretation: a retrospective multi-reader-multi-case (MRMC) study of the automatic detection of multiple abnormalities and generation of diagnostic report system
Author Affiliations +
Abstract
In the study, we first introduce a novel AI-based system (MOM-ClaSeg) for multiple abnormality/disease detection and diagnostic report generation on PA/AP CXR images, which was recently developed by applying augmented Mask RCNN deep learning and Decision Fusion Networks. We then evaluate performance of MOM-ClaSeg system in assisting radiologists in image interpretation and diagnostic report generation through a multi-reader-multi-case (MRMC) study. A total of 33,439 PA/AP CXR images were retrospectively collected from 15 hospitals, which were divided into an experimental group of 25,840 images and a control group of 7,599 images with and without processed by MOM-ClaSeg system, respectively. In this MRMC study, 6 junior radiologists (5~10yr experience) first read these images and generated initial diagnostic reports with/without viewing MOM-ClaSeg-generated results. Next, the initial reports were reviewed by 2 senior radiologists (>15yr experience) to generate final reports. Additionally, 3 consensus expert radiologists (>25yr experience) reconciled the potential difference between initial and final reports. Comparison results showed that usingMOM-ClaSeg, diagnostic sensitivity of junior radiologists increased significantly by 18.67% (from 70.76% to 89.43%, P<0.001), while specificity decreased by 3.36% (from 99.49% to 96.13%, P<0.001). Average reading/diagnostic time in experimental group with MOM-ClaSeg reduced by 27.07% (P<0.001), with a particularly significant reduction of 66.48% (P<0.001) on abnormal images, indicating that MOM-ClaSeg system has potential for fast lung abnormality/disease triaging. This study demonstrates feasibility of applying the first AI-based system to assist radiologists in image interpretation and diagnostic report generation, which is a promising step toward improved diagnostic performance and productivity in future clinical practice.
Conference Presentation
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Lin Guo, Guanxun Cheng, Lifei Wang, Bin Zheng, Stefan Jaeger, Maryellen L. Giger, Jordan Fuhrman, Hui Li, Ajay Divekar, Qian Xiao, Lingjun Qian, Li Xia, Hongjun Li, and Fleming Y. M. Lure "Using artificial intelligence for chest radiograph interpretation: a retrospective multi-reader-multi-case (MRMC) study of the automatic detection of multiple abnormalities and generation of diagnostic report system", Proc. SPIE 12927, Medical Imaging 2024: Computer-Aided Diagnosis, 129270Y (3 April 2024); https://doi.org/10.1117/12.3005136
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KEYWORDS
Chest imaging

Diagnostics

Artificial intelligence

Clinical practice

Deep learning

Diseases and disorders

Image fusion

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