Cardiac sarcoidosis classification with deep convolutional neural network-based features using polar maps

被引:32
|
作者
Togo, Ren [1 ,5 ]
Hirata, Kenji [2 ]
Manabe, Osamu [2 ]
Ohira, Hiroshi [3 ]
Tsujino, Ichizo [3 ]
Magota, Keiichi [4 ]
Ogawa, Takahiro [1 ]
Haseyama, Miki [1 ]
Shiga, Tohru [2 ]
机构
[1] Hokkaido Univ, Grad Sch Informat Sci & Technol, Sapporo, Hokkaido 0600814, Japan
[2] Hokkaido Univ, Grad Sch Med, Dept Nucl Med, Sapporo, Hokkaido 0608638, Japan
[3] Hokkaido Univ Hosp, Dept Med 1, Sapporo, Hokkaido 0608638, Japan
[4] Hokkaido Univ Hosp, Div Med Imaging & Technol, Sapporo, Hokkaido 0608638, Japan
[5] Hokkaido Univ, Grad Sch Informat Sci & Technol, Kita Ku, N-14,W-9, Sapporo, Hokkaido 0600814, Japan
基金
日本科学技术振兴机构;
关键词
Deep learning; Convolutional neural network (CNN); Cardiac sarcoidosis (CS); F-18-FDG PET; Computer-aided diagnosis; Radiology; Machine learning; Feature extraction; Feature selection; F-18-FDG PET; AGREEMENT; DIAGNOSIS; DISEASE;
D O I
10.1016/j.compbiomed.2018.11.008
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Aims: The aim of this study was to determine whether deep convolutional neural network (DCNN)-based features can represent the difference between cardiac sarcoidosis (CS) and non-CS using polar maps. Methods: A total of 85 patients (33 CS patients and 52 non-CS patients) were analyzed as our study subjects. One radiologist reviewed PET/CT images and defined the left ventricle region for the construction of polar maps. We extracted high-level features from the polar maps through the Inception-v3 network and evaluated their effectiveness by applying them to a CS classification task. Then we introduced the ReliefF algorithm in our method. The standardized uptake value (SUV)-based classification method and the coefficient of variance (CoV)-based classification method were used as comparative methods. Results: Sensitivity, specificity and the harmonic mean of sensitivity and specificity of our method with the ReliefF algorithm were 0.839, 0.870 and 0.854, respectively. Those of the SUVmax-based classification method were 0.468, 0.710 and 0.564, respectively, and those of the CoV-based classification method were 0.655, 0.750 and 0.699, respectively. Conclusion: The DCNN-based high-level features may be more effective than low-level features used in conventional quantitative analysis methods for CS classification.
引用
收藏
页码:81 / 86
页数:6
相关论文
共 50 条
  • [31] Convolutional Neural Network-Based Classification of Multiple Retinal Diseases Using Fundus Images
    Aslam, Aqsa
    Farhan, Saima
    Khaliq, Momina Abdul
    Anjum, Fatima
    Afzaal, Ayesha
    Kanwal, Faria
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2023, 36 (03): : 2607 - 2622
  • [32] Convolutional neural network-based classification of glaucoma using optic radiation tissue properties
    Kruper, John
    Richie-Halford, Adam
    Benson, Noah C.
    Caffarra, Sendy
    Owen, Julia
    Wu, Yue
    Egan, Catherine
    Lee, Aaron Y.
    Lee, Cecilia S.
    Yeatman, Jason D.
    Rokem, Ariel
    COMMUNICATIONS MEDICINE, 2024, 4 (01):
  • [33] Neural network-based cloud classification on satellite imagery using textural features
    Tian, B
    AzimiSadjadi, MR
    VonderHaar, TH
    Reinke, D
    INTERNATIONAL CONFERENCE ON IMAGE PROCESSING - PROCEEDINGS, VOL III, 1997, : 209 - 212
  • [34] Convolutional Neural Network-Based Parkinson Disease Classification Using SPECT Imaging Data
    Hathaliya, Jigna
    Parekh, Raj
    Patel, Nisarg
    Gupta, Rajesh
    Tanwar, Sudeep
    Alqahtani, Fayez
    Elghatwary, Magdy
    Ivanov, Ovidiu
    Raboaca, Maria Simona
    Neagu, Bogdan-Constantin
    MATHEMATICS, 2022, 10 (15)
  • [35] Features Fusion based Automatic Modulation Classification Using Convolutional Neural Network
    Lin, Chunsheng
    Huang, Juanjuan
    Huang, Sai
    Yao, Yuanyuan
    Guo, Xin
    IEEE INFOCOM 2020 - IEEE CONFERENCE ON COMPUTER COMMUNICATIONS WORKSHOPS (INFOCOM WKSHPS), 2020, : 1099 - 1104
  • [36] Neural network-based cloud detection/classification using textural and spectral features
    AzimiSadjadi, MR
    Shaikh, MA
    Tian, B
    Eis, KE
    Reinke, D
    IGARSS '96 - 1996 INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM: REMOTE SENSING FOR A SUSTAINABLE FUTURE, VOLS I - IV, 1996, : 1105 - 1107
  • [37] Neural Network-Based Classification of Anesthesia/Awareness Using Granger Causality Features
    Nicolaou, Nicoletta
    Georgiou, Julius
    CLINICAL EEG AND NEUROSCIENCE, 2014, 45 (02) : 77 - 88
  • [38] Visually Interpretable Fuzzy Neural Classification Network With Deep Convolutional Feature Maps
    Juang, Chia-Feng
    Cheng, Yun-Wei
    Lin, Yeh-Ming
    IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2024, 32 (03) : 1063 - 1077
  • [39] Intelligent constellation diagram analyzer using convolutional neural network-based deep learning
    Wang, Danshi
    Zhang, Min
    Li, Jin
    Li, Ze
    Li, Jianqiang
    Song, Chuang
    Chen, Xue
    OPTICS EXPRESS, 2017, 25 (15): : 17150 - 17166
  • [40] Air Signature Recognition using Deep Convolutional Neural Network-Based Sequential Model
    Behera, S. K.
    Dash, A. K.
    Dogra, D. P.
    Roy, P. P.
    2018 24TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2018, : 3525 - 3530