2.75D: Boosting learning by representing 3D Medical imaging to 2D features for small data

被引:6
|
作者
Wang, Xin [1 ]
Su, Ruisheng [2 ]
Xie, Weiyi [3 ]
Wang, Wenjin [4 ]
Xu, Yi [5 ]
Mann, Ritse [1 ]
Han, Jungong [6 ]
Tan, Tao [1 ,7 ]
机构
[1] Netherlands Canc Inst, Dept Radiol, Plesmanlaan 121, NL-1066 CX Amsterdam, Netherlands
[2] Erasmus MC, Doctor Molewaterpl 40, NL-3015 CD Rotterdam, Netherlands
[3] Radboud Univ Nijmegen, Med Ctr, Geert Grootepl Zuid 10, NL-6525 GA Nijmegen, Netherlands
[4] Southern Univ Sci & Technol, Biomed Engn Dept, Xueyuan Blvd 1088, Shenzhen 518055, Peoples R China
[5] Shanghai Jiao Tong Univ, Shanghai Key Lab Digital Media Proc & Transmiss, Dong Chuan Rd 800, Shanghai 200240, Peoples R China
[6] Univ Sheffield, Dept Comp Sci, Western Bank, Sheffield S10 2TN, England
[7] Macao Polytech Univ, Fac Appl Sci, Rua Luis Gonzaga Gomes, Macau, Peoples R China
关键词
Medical imaging; Spiral sampling; 2; 75D; Deep learning; MRI; CT; Luna cancer; Breast cancer; Prostate cancer; CONVOLUTIONAL NEURAL-NETWORK; PULMONARY NODULE DETECTION; FALSE-POSITIVE REDUCTION; COMPUTER-AIDED DETECTION; AUTOMATIC DETECTION; CT IMAGES; BREAST-CANCER; CLASSIFICATION; CNNS;
D O I
10.1016/j.bspc.2023.104858
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
In medical-data driven learning, 3D convolutional neural networks (CNNs) have started to show superior performance to 2D CNNs in numerous deep learning tasks, proving the added value of 3D spatial information in feature representation. However, the difficulty in collecting more training samples to converge, more computational resources and longer execution time make this approach less applied. Also, applying transfer learning on 3D CNN is challenging due to a lack of publicly available pre-trained 3D models. To tackle these issues, we proposed a novel 2D strategical representation of volumetric data, namely 2.75D. In this work, the spatial information of 3D images is captured in a single 2D view by a spiral-spinning technique. As a result, 2D CNN networks can also be used to learn volumetric information. Besides, we can fully leverage pre-trained 2D CNNs for downstream vision problems. We also explore a multi-view 2.75D strategy, 2.75D 3 channels (2.75D x 3), to boost the advantage of 2.75D. We evaluated the proposed methods on three public datasets with different modalities or organs (Lung CT, Breast MRI, and Prostate MRI), against their 2D, 2.5D, and 3D counterparts in classification tasks. Results show that the proposed methods significantly outperform other counterparts when all methods were trained from scratch on the lung dataset. Such performance gain is more pronounced with transfer learning or in the case of limited training data. Our methods also achieved comparable performance on other datasets. In addition, our methods achieved a substantial reduction in time consumption of training and inference compared with the 2.5D or 3D method.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] 2D and 3D imaging of fatigue failure mechanisms of 3D woven composites
    Yu, B.
    Bradley, R. S.
    Soutis, C.
    Hogg, P. J.
    Withers, P. J.
    COMPOSITES PART A-APPLIED SCIENCE AND MANUFACTURING, 2015, 77 : 37 - 49
  • [32] Fetal dacryocystocele: comparing 2D and 3D imaging
    Boris M. Petrikovsky
    Gary P. Kaplan
    Pediatric Radiology, 2003, 33 : 582 - 583
  • [33] 2D and 3D Convolutional and Correlation SAR Imaging
    Pepin, Matthew
    ALGORITHMS FOR SYNTHETIC APERTURE RADAR IMAGERY XXVII, 2020, 11393
  • [34] Guidance of the MitraClip® procedure by 2D and 3D imaging
    Labrousse, Louis
    Dijos, Marina
    Leroux, Lionel
    Oses, Pierre
    Seguy, Benjamin
    Markof, Muriel
    Lafitte, Stephane
    ARCHIVES OF CARDIOVASCULAR DISEASES, 2018, 111 (6-7) : 432 - 440
  • [35] COMPRESSED 3D ULTRASOUND IMAGING WITH 2D ARRAYS
    Birk, Michael
    Burshtein, Amir
    Chernyakova, Tanya
    Eilam, Alon
    Choe, Jung Woo
    Nikoozadeh, Amin
    Khuri-Yakub, Pierre
    Eldar, Yonina C.
    2014 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2014,
  • [36] A spiral 2D phased array for 3D imaging
    Sumanaweera, TS
    Schwartz, J
    Napolitano, D
    1999 IEEE ULTRASONICS SYMPOSIUM PROCEEDINGS, VOLS 1 AND 2, 1999, : 1271 - 1274
  • [37] 2D/3D-MGR: A 2D/3D Medical Image Registration Framework Based on DRR
    Li, Zhuoyuan
    Ji, Xuquan
    Wang, Chuantao
    Liu, Wenyong
    Zhu, Feiyu
    Zhai, Jiliang
    IEEE ACCESS, 2024, 12 : 124365 - 124374
  • [38] 2D or not 2D That is the Question, but 3D is the, answer
    Cronin, Paul
    ACADEMIC RADIOLOGY, 2007, 14 (07) : 769 - 771
  • [39] Robust autonomous model learning from 2D and 3D data sets
    Langs, Georg
    Donner, Rene
    Peloschek, Philipp
    Bischof, Horst
    MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION - MICCAI 2007, PT 1, PROCEEDINGS, 2007, 4791 : 968 - +
  • [40] Progressive Learning of 3D Reconstruction Network From 2D GAN Data
    Dundar, Aysegul
    Gao, Jun
    Tao, Andrew
    Catanzaro, Bryan
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2024, 46 (02) : 793 - 804