TL;DR
This paper introduces a weakly supervised 3D chest CT classification method that leverages multi-resolution segmentation features and explores feature aggregation strategies to improve disease detection accuracy.
Contribution
It proposes a novel approach connecting segmentation and classification models with feature aggregation, enhancing weakly supervised disease classification in chest CT scans.
Findings
Connected architecture improves AUC from 0.791 to 0.851.
Two feature aggregation strategies outperform baseline.
Method enables multi-disease detection with weak supervision.
Abstract
Weakly supervised disease classification of CT imaging suffers from poor localization owing to case-level annotations, where even a positive scan can hold hundreds to thousands of negative slices along multiple planes. Furthermore, although deep learning segmentation and classification models extract distinctly unique combinations of anatomical features from the same target class(es), they are typically seen as two independent processes in a computer-aided diagnosis (CAD) pipeline, with little to no feature reuse. In this research, we propose a medical classifier that leverages the semantic structural concepts learned via multi-resolution segmentation feature maps, to guide weakly supervised 3D classification of chest CT volumes. Additionally, a comparative analysis is drawn across two different types of feature aggregation to explore the vast possibilities surrounding feature fusion.…
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