| Literature DB >> 34045769 |
Heather M Whitney1, Hui Li2, Yu Ji3, Peifang Liu3, Maryellen L Giger2.
Abstract
Digital image-based signatures of breast tumors may ultimately contribute to the design of patient-specific breast cancer diagnostics and treatments. Beyond traditional human-engineered computer vision methods, tumor classification methods using transfer learning from deep convolutional neural networks (CNNs) are actively under development. This article will first discuss our progress in using CNN-based transfer learning to characterize breast tumors for various diagnostic, prognostic, or predictive image-based tasks across multiple imaging modalities, including mammography, digital breast tomosynthesis, ultrasound (US), and magnetic resonance imaging (MRI), compared to both human-engineered feature-based radiomics and fusion classifiers created through combination of such features. Second, a new study is presented that reports on a comprehensive comparison of the classification performances of features derived from human-engineered radiomic features, CNN transfer learning, and fusion classifiers for breast lesions imaged with MRI. These studies demonstrate the utility of transfer learning for computer-aided diagnosis and highlight the synergistic improvement in classification performance using fusion classifiers.Entities:
Keywords: Breast cancer; computer-aided diagnosis (CADx); deep learning; dynamic contrast-enhanced (DCE)-magnetic resonance imaging (MRI); radiomics; transfer learning
Year: 2019 PMID: 34045769 PMCID: PMC8152568 DOI: 10.1109/jproc.2019.2950187
Source DB: PubMed Journal: Proc IEEE Inst Electr Electron Eng ISSN: 0018-9219 Impact factor: 10.961