MLND-IU: A multi-stage detection model of subcentimeter lung nodule with improved U-Net++
Huilan Wen,
Xiaoqing Luo,
Bin Zhong,
Yang Xiao,
Dengfeng Chen and
Lianmin Zhu
PLOS ONE, 2026, vol. 21, issue 2, 1-31
Abstract:
To address the challenges of high miss rates in subcentimeter nodules, false positives caused by vascular adhesion, and insufficient multi-scale feature fusion in lung CT analysis, a multi-stage detection model named MLND-IU, which incorporates an improved U-Net++ architecture, is proposed. The three-stage framework begins with an enhanced RetinaNet optimized by a dynamic focal loss to generate candidate regions with high sensitivity while mitigating class imbalance. The second stage introduces AG-UNet++ with a novel Dense Attention Bridging Module (DABM), which employs a tensor product fusion of channel and deformable spatial attention across densely connected skip pathways to amplify feature representation for 3–5 mm nodules. The final stage employs a 3D Contextual Pyramid Module (3D-CPM) to integrate multi-slice morphological and contextual features, thereby reducing vascular false positives. Ablation studies indicated that the second stage improved the Dice coefficient by 21.1% compared with the first stage (paired t-test, p
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0341750
DOI: 10.1371/journal.pone.0341750
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