Semi-supervised multi-task learning for lung cancer diagnosis
Naji Khosravan, Ulas Bagci

TL;DR
This paper introduces a semi-supervised multi-task deep learning model that jointly improves lung nodule segmentation and false positive reduction, enhancing early lung cancer diagnosis accuracy.
Contribution
It proposes a novel 3D multi-task CNN that simultaneously addresses nodule segmentation and false positive reduction, demonstrating improved performance over baselines.
Findings
Achieved 91% dice similarity coefficient for segmentation
Nearly 92% accuracy in false positive reduction
Semi-supervised approach mitigates limited labeled data challenge
Abstract
Early detection of lung nodules is of great importance in lung cancer screening. Existing research recognizes the critical role played by CAD systems in early detection and diagnosis of lung nodules. However, many CAD systems, which are used as cancer detection tools, produce a lot of false positives (FP) and require a further FP reduction step. Furthermore, guidelines for early diagnosis and treatment of lung cancer are consist of different shape and volume measurements of abnormalities. Segmentation is at the heart of our understanding of nodules morphology making it a major area of interest within the field of computer aided diagnosis systems. This study set out to test the hypothesis that joint learning of false positive (FP) nodule reduction and nodule segmentation can improve the computer aided diagnosis (CAD) systems' performance on both tasks. To support this hypothesis we…
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