Pulmonary Nodule Detection Based on Faster R-CNN With Adaptive Anchor Box

被引:28
作者
Nguyen, Chi Cuong [1 ]
Tran, Giang Son [1 ]
Nguyen, Van Thi [2 ]
Burie, Jean-Christophe [3 ]
Nghiem, Thi Phuong [1 ]
机构
[1] Univ Sci & Technol Hanoi, Vietnam Acad Sci & Technol, ICTLab, Hanoi 100000, Vietnam
[2] Vietnam Natl Canc Hosp, Dept Radiol, Hanoi 110000, Vietnam
[3] La Rochelle Univ, L3i Lab, F-17000 La Rochelle, France
关键词
Lung; Sensitivity; Computed tomography; Three-dimensional displays; Feature extraction; Lung cancer; Proposals; Pulmonary nodules; CT~images; deep learning; faster R-CNN; anchor box; FALSE-POSITIVE REDUCTION; AUTOMATIC DETECTION; LUNG NODULES; MEAN SHIFT; IMAGES; VALIDATION; ENSEMBLE;
D O I
10.1109/ACCESS.2021.3128942
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Early pulmonary nodule detection is very important in lung cancer diagnosis and screening. Most state-of-the-art lung nodule detection models are based on Faster Region-based Convolutional Neural Network (Faster R-CNN) due to its superior performance. However, this object detection approach faces difficulties with the variety of nodule sizes in training datasets. In this paper, we propose a novel Computer-Aided Detection (CAD) system based on Faster R-CNN model with adaptive anchor box for lung nodule detection. Our method employs ground-truth nodule sizes in the training dataset to generate adaptive anchor box sizes of Faster R-CNN. Learned anchors are used as hyper-parameter to boost Faster R-CNN's detection performance. A residual convolutional neural network is proposed to reduce false positives from Faster R-CNN's output. Our method is trained and tested on the largest publicly available LUNA16 dataset. Experiments show that our proposed system achieves a high sensitivity of 95.64% at 1.72 false positives per scan, and a Competition Performance Metric (CPM) score of 88.2%, which outperforms other recent state-of-the-art detection methods. The false positive reduction network achieves a sensitivity of 93.8%, specificity of 97.6% and accuracy of 95.7%. An additional evaluation on a completely independent SPIE-AAPM dataset demonstrates the generalization of our proposed model with 89.3% sensitivity.
引用
收藏
页码:154740 / 154751
页数:12
相关论文
共 50 条
[1]   Pulmonary Nodules Detection and Classification Using Hybrid Features from Computerized Tomographic Images [J].
Akram, Sheeraz ;
Javed, Muhammad Younus ;
Akram, M. Usman ;
Qamar, Usman ;
Hassan, Ali .
JOURNAL OF MEDICAL IMAGING AND HEALTH INFORMATICS, 2016, 6 (01) :252-259
[2]  
[Anonymous], Key Statistics of Lung Cancer
[3]   LUNGx Challenge for computerized lung nodule classification [J].
Armato, Samuel G., III ;
Drukker, Karen ;
Li, Feng ;
Hadjiiski, Lubomir ;
Tourassi, Georgia D. ;
Engelmann, Roger M. ;
Giger, Maryellen L. ;
Redmond, George ;
Farahani, Keyvan ;
Kirby, Justin S. ;
Clarke, Laurence P. .
JOURNAL OF MEDICAL IMAGING, 2016, 3 (04)
[4]   The Lung Image Database Consortium, (LIDC) and Image Database Resource Initiative (IDRI): A Completed Reference Database of Lung Nodules on CT Scans [J].
Armato, Samuel G., III ;
McLennan, Geoffrey ;
Bidaut, Luc ;
McNitt-Gray, Michael F. ;
Meyer, Charles R. ;
Reeves, Anthony P. ;
Zhao, Binsheng ;
Aberle, Denise R. ;
Henschke, Claudia I. ;
Hoffman, Eric A. ;
Kazerooni, Ella A. ;
MacMahon, Heber ;
van Beek, Edwin J. R. ;
Yankelevitz, David ;
Biancardi, Alberto M. ;
Bland, Peyton H. ;
Brown, Matthew S. ;
Engelmann, Roger M. ;
Laderach, Gary E. ;
Max, Daniel ;
Pais, Richard C. ;
Qing, David P-Y ;
Roberts, Rachael Y. ;
Smith, Amanda R. ;
Starkey, Adam ;
Batra, Poonam ;
Caligiuri, Philip ;
Farooqi, Ali ;
Gladish, Gregory W. ;
Jude, C. Matilda ;
Munden, Reginald F. ;
Petkovska, Iva ;
Quint, Leslie E. ;
Schwartz, Lawrence H. ;
Sundaram, Baskaran ;
Dodd, Lori E. ;
Fenimore, Charles ;
Gur, David ;
Petrick, Nicholas ;
Freymann, John ;
Kirby, Justin ;
Hughes, Brian ;
Casteele, Alessi Vande ;
Gupte, Sangeeta ;
Sallam, Maha ;
Heath, Michael D. ;
Kuhn, Michael H. ;
Dharaiya, Ekta ;
Burns, Richard ;
Fryd, David S. .
MEDICAL PHYSICS, 2011, 38 (02) :915-931
[5]   Mask R-CNN-Based Detection and Segmentation for Pulmonary Nodule 3D Visualization Diagnosis [J].
Cai, Linqin ;
Long, Tao ;
Dai, Yuhan ;
Huang, Yuting .
IEEE ACCESS, 2020, 8 :44400-44409
[6]  
Cao GT, 2018, IEEE INT C BIOINFORM, P973, DOI 10.1109/BIBM.2018.8621468
[7]   MEAN SHIFT, MODE SEEKING, AND CLUSTERING [J].
CHENG, YZ .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 1995, 17 (08) :790-799
[8]   Mean shift: A robust approach toward feature space analysis [J].
Comaniciu, D ;
Meer, P .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2002, 24 (05) :603-619
[9]   Multilevel Contextual 3-D CNNs for False Positive Reduction in Pulmonary Nodule Detection [J].
Dou, Qi ;
Chen, Hao ;
Yu, Lequan ;
Qin, Jing ;
Heng, Pheng-Ann .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2017, 64 (07) :1558-1567
[10]   Multi-view Convolutional Neural Network for lung nodule false positive reduction [J].
El-Regaily, Salsabil Amin ;
Salem, Mohammed Abdel Megeed ;
Aziz, Mohamed Hassan Abdel ;
Roushdy, Mohamed Ismail .
EXPERT SYSTEMS WITH APPLICATIONS, 2020, 162