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Works cited by this work

31 works

Work: Optimizing meningioma grading with radiomics and deep features integration, attention mechanisms, and reproducibility analysis

  1. A review on the attention mechanism of deep learning

    Zhaoyang Niu, Guoqiang Zhong, Hui Yu

    Review article20216 citations
    ABI
  2. Beyond imaging: The promise of radiomics

    Michele Avanzo, Joseph Stancanello, Issam El Naqa

    Review article20176 citations
    ABI
  3. A Survey of Convolutional Neural Networks: Analysis, Applications, and Prospects

    Zewen Li, Fan Liu, Wenjie Yang +2

    Review article20216 citations
    ABI
  4. Repeatability and Reproducibility of Radiomic Features: A Systematic Review

    Alberto Traverso, Leonard Wee, André Dekker +1

    Review article20183 citations
    ABI
  5. Attention mechanisms in computer vision: A survey

    Meng-Hao Guo, Tian-Xing Xu, Jiangjiang Liu +7

    Article20223 citations
    ABI
  6. A deep learning radiomics model for preoperative grading in meningioma

    Yongbei Zhu, Chuntao Man, Lixin Gong +8

    Article20192 citations
    ABI
  7. A General Survey on Attention Mechanisms in Deep Learning

    Gianni Brauwers, Flavius Frăsincar

    Article20212 citations
    ABI
  8. Convolutional Neural Networks

    Nikhil Ketkar, Jojo Moolayil

    Chapter20212 citations
    ABI
  9. An Overview of Meningiomas

    Robin Buerki, Craig Horbinski, Tim J. Kruser +3

    Review article20182 citations
    ABI
  10. Meningiomas

    Arie Perry

    Chapter20182 citations
    ABI
  11. Predicting meningioma grades and pathologic marker expression via deep learning

    Jiawei Chen, Yanping Xue, Leihao Ren +8

    Article20232 citations
    ABI
  12. Untitled

    Other1 citations
    ABI
  13. Untitled

    Other1 citations
    ABI
  14. Untitled

    Other1 citations
    ABI