3.9 Article

Multi-level 3D DenseNets for False-positive Reduction in Lung Nodule Detection Based on Chest Computed Tomography

Journal

CURRENT MEDICAL IMAGING
Volume 16, Issue 8, Pages 1004-1021

Publisher

BENTHAM SCIENCE PUBL LTD
DOI: 10.2174/1573405615666191113122840

Keywords

Lung nodule detection; false-positive reduction; multi-level 3D DenseNets; computer-aided detection; convolutional neural networks

Funding

  1. National Natural Science Foundation of China [61841204, 61962046, 61771266, 61663036, 81571753, 81460279, 81301281, 61261028, 61179019]
  2. Inner Mongolia Natural Science Foundation [2019MS06003, 2018LH08066, 2015MS0604, 2014MS0828]
  3. Inner Mongolia Outstanding Youth Cultivation Fund [2018JQ02, 2019JQ07]
  4. Inner Mongolia College Science and Technology Research Project [NJZY145, NJZZ14161]
  5. Inner Mongolia University of Science and Technology Innovation Fund [2016QDWS04, 2015QNGG03, 2014QNGG08, 2014QNG07]
  6. Chunhui Program of the Ministry of Education of the People's Republic of China

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Objective: False-positive nodule reduction is a crucial part of a computer-aided detection (CADe) system, which assists radiologists in accurate lung nodule detection. In this research, a novel scheme using multi-level 3D DenseNet framework is proposed to implement false-positive nodule reduction task. Methods: Multi-level 3D DenseNet models were extended to differentiate lung nodules from false-positive nodules. First, different models were fed with 3D cubes with different sizes for encoding multi-level contextual information to meet the challenges of the large variations of lung nodules. In addition, image rotation and flipping were utilized to upsample positive samples which consisted of a positive sample set. Furthermore, the 3D DenseNets were designed to keep low-level information of nodules, as densely connected structures in DenseNet can reuse features of lung nodules and then boost feature propagation. Finally, the optimal weighted linear combination of all model scores obtained the best classification result in this research. Results: The proposed method was evaluated with LUNA16 dataset which contained 888 thin-slice CT scans. The performance was validated via 10-fold cross-validation. Both the Free-response Receiver Operating Characteristic (FROC) curve and the Competition Performance Metric (CPM) score show that the proposed scheme can achieve a satisfactory detection performance in the false-positive reduction track of the LUNA16 challenge. Conclusion: The result shows that the proposed scheme can be significant for false-positive nodule reduction task.

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