Improved unsupervised 3D lung lesion detection and localization by fusing global and local features: Validation in 3D low-dose computed tomography
  • Lee, Ju Hwan
  • Oh, Seong Je
  • Kim, Kyungsu
  • Lim, Chae Yeon
  • Choi, Seung Hong
  • ... Chung, Myung Jin
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초록

Unsupervised anomaly detection (UAD) is crucial in low-dose computed tomography (LDCT). Recent AI technologies, leveraging global features, have enabled effective UAD with minimal training data of normal patients. However, this approach, devoid of utilizing local features, exhibits vulnerability in detecting deep lesions within the lungs. In other words, while the conventional use of global features can achieve high specificity, it often comes with limited sensitivity. Developing a UAD AI model with high sensitivity is essential to prevent false negatives, especially in screening patients with diseases demonstrating high mortality rates. We have successfully pioneered a new LDCT UAD AI model that leverages local features, achieving a previously unattainable increase in sensitivity compared to global methods (17.5% improvement). Furthermore, by integrating this approach with conventional global-based techniques, we have successfully consolidated the advantages of each model – high sensitivity from the local model and high specificity from the global model – into a single, unified, trained model (17.6% and 33.5% improvement, respectively). Without the need for additional training, we anticipate achieving significant diagnostic efficacy in various LDCT applications, where both high sensitivity and specificity are essential, using our fixed model. Code is available at https://github.com/kskim-phd/Fusion-UADL. © 2025

키워드

Deep neural networkLow-dose computed tomographyUnsupervised anomaly detectionUnsupervised anomaly localizationCHEST-X-RAYHIGH-RESOLUTIONCTDIAGNOSISCLASSIFICATIONNODULES
제목
Improved unsupervised 3D lung lesion detection and localization by fusing global and local features: Validation in 3D low-dose computed tomography
저자
Lee, Ju HwanOh, Seong JeKim, KyungsuLim, Chae YeonChoi, Seung HongChung, Myung Jin
DOI
10.1016/j.media.2025.103559
발행일
2025-07
유형
Article
저널명
Medical Image Analysis
103