Infant Brain Age Classification: 2D CNN Outperforms 3D CNN in Small Dataset

被引:0
|
作者
Shabanian, Mahdieh [1 ]
Wenzel, Markus [2 ]
DeVincenzo, John P. [3 ]
机构
[1] Univ Tennessee, Ctr Hlth Sci, Dept Biomed Engn, Memphis, TN 38163 USA
[2] Fraunhofer Inst Digital Med MEVIS, Bremen, Germany
[3] Enanta Pharmaceut, Watertown, MA USA
来源
关键词
Deep learning; CNN; neurodevelopmental; age estimation; infant diseases; MACHINE; MRI;
D O I
10.1117/12.2612887
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Determining if the brain is developing normally is a key component of pediatric neuroradiology and neurology. Brain magnetic resonance imaging (MRI) of infants demonstrates a specific pattern of development beyond simply myelination. While radiologists have used myelination patterns, brain morphology and size characteristics to determine age-adequate brain maturity, this requires years of experience in pediatric neuroradiology. With no standardized criteria, visual estimation of the structural maturity of the brain from MRI before three years of age remains dominated by inter-observer and intra-observer variability. A more objective estimation of brain developmental age could help physicians identify many neurodevelopmental conditions and diseases earlier and more reliably. Such data, however, is naturally hard to obtain, and the observer ground truth not much of a gold standard due to subjectivity of assessment. In this light, we explore the general feasibility to tackle this task, and the utility of different approaches, including two- and three-dimensional convolutional neural networks (CNN) that were trained on a fusion of T1-weighted, T2-weighted, and proton density (PD) weighted sequences from 84 individual subjects divided into four age groups from birth to 3 years of age. In the best performing approach, we achieved an accuracy of 0.90 [95% CI:0.86-0.94] using a 2D CNN on a central axial thick slab. We discuss the comparison to 3D networks and show how the performance compares to the use of only one sequence (T1w). In conclusion, despite the theoretical superiority of 3D CNN approaches, in limited-data situations, such approaches are inferior to simpler architectures. The code can be found in https://github.com/shabanian2018/Age_MRI-Classification
引用
收藏
页数:8
相关论文
共 50 条
  • [41] Deep Collaborative Attention Network for Hyperspectral Image Classification by Combining 2-D CNN and 3-D CNN
    Guo, Hao
    Liu, Jianjun
    Yang, Jinlong
    Xiao, Zhiyong
    Wu, Zebin
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2020, 13 : 4789 - 4802
  • [42] Conformal mapping of a 3D face representation onto a 2D image for CNN based face recognitionnn
    Kittler, Josef
    Koppen, Paul
    Kopp, Philipp
    Huber, Patrik
    Ratsch, Matthias
    2018 INTERNATIONAL CONFERENCE ON BIOMETRICS (ICB), 2018, : 124 - 131
  • [43] Ensemble 3D CNN and U-Net-based brain tumour classification with MKKMC segmentation
    Venkatachalam, Arul
    Palanisamy, Santhi
    Chinnasamy, Poongodi
    AUTOMATIKA, 2024, 65 (03) : 691 - 705
  • [44] Deep CNN for 3D Face Recognition
    Olivetti, Elena Carlotta
    Ferretti, Jacopo
    Cirrincione, Giansalvo
    Nonis, Francesca
    Tornincasa, Stefano
    Marcolin, Federica
    DESIGN TOOLS AND METHODS IN INDUSTRIAL ENGINEERING, ADM 2019, 2020, : 665 - 674
  • [45] 3D CNN for Human Action Recognition
    Boualia, Sameh Neili
    Ben Amara, Najoua Essoukri
    2021 18TH INTERNATIONAL MULTI-CONFERENCE ON SYSTEMS, SIGNALS & DEVICES (SSD), 2021, : 276 - 282
  • [46] A Multichannel Hybrid 2D-3D-CNN for Hyperspectral Image Classification With Small Training Sample Sizes
    Chen, Shih-Yu
    Chu, Po-Yu
    Liu, Kuan-Liang
    Wu, Yu-Cheng
    IEEE Transactions on Geoscience and Remote Sensing, 2024, 62
  • [47] ViSt3D: Video Stylization with 3D CNN
    Pande, Ayush
    Sharma, Gaurav
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [48] 3D feature recognition base on CNN
    Tao, P
    Zhang, B
    Ye, Z
    PROCEEDINGS OF THE 4TH WORLD CONGRESS ON INTELLIGENT CONTROL AND AUTOMATION, VOLS 1-4, 2002, : 3044 - 3047
  • [49] An Enhanced Spectral Fusion 3D CNN Model for Hyperspectral Image Classification
    Zhou, Junbo
    Zeng, Shan
    Xiao, Zuyin
    Zhou, Jinbo
    Li, Hao
    Kang, Zhen
    REMOTE SENSING, 2022, 14 (21)
  • [50] NormalNet: A voxel-based CNN for 3D object classification and retrieval
    Wang, Cheng
    Cheng, Ming
    Sohel, Ferdous
    Bennamoun, Mohammed
    Li, Jonathan
    NEUROCOMPUTING, 2019, 323 : 139 - 147