4.7 Article

Radiomics for precision medicine: Current challenges, future prospects, and the proposal of a new framework

期刊

METHODS
卷 188, 期 -, 页码 20-29

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.ymeth.2020.05.022

关键词

Radiomics; Clinical decision support systems; Medical image analysis

资金

  1. ERC [694812, 81320]
  2. Maastricht-Liege imaging valley grant
  3. Dutch technology Foundation STW, applied science division of NWO, and the Technology Programme of the Ministry of Economic Affairs [P14-19]
  4. SME Phase 2 (RAIL) [673780]
  5. EUROSTARS (DART, DECIDE)
  6. European Program [H2020-2015-17, BD2Decide - PHC30-689715, 733008, 766276]
  7. TRANSCAN Joint Transnational Call 2016 (JTC2016 'CLEARLY') [UM 2017-8295]
  8. Interreg V-A Euregio Meuse-Rhine ('Euradiomics')
  9. Dutch Cancer Society (KWF Kankerbestrijding) [12085/2018-2]

向作者/读者索取更多资源

The advancement of artificial intelligence and medical imaging techniques presents a unique opportunity for the quantitative and mineable analysis of medical images. However, challenges such as explainability of models, reproducibility of imaging features, and sensitivity to variations in image acquisition need to be addressed before clinical translation.
The advancement of artificial intelligence concurrent with the development of medical imaging techniques provided a unique opportunity to turn medical imaging from mostly qualitative, to further quantitative and mineable data that can be explored for the development of clinical decision support systems (cDSS). Radiomics, a method for the high throughput extraction of hand-crafted features from medical images, and deep learning-the data driven modeling techniques based on the principles of simplified brain neuron interactions, are the most researched quantitative imaging techniques. Many studies reported on the potential of such techniques in the context of cDSS. Such techniques could be highly appealing due to the reuse of existing data, automation of clinical workflows, minimal invasiveness, three-dimensional volumetric characterization, and the promise of high accuracy and reproducibility of results and cost-effectiveness. Nevertheless, there are several challenges that quantitative imaging techniques face, and need to be addressed before the translation to clinical use. These challenges include, but are not limited to, the explainability of the models, the reproducibility of the quantitative imaging features, and their sensitivity to variations in image acquisition and reconstruction parameters. In this narrative review, we report on the status of quantitative medical image analysis using radiomics and deep learning, the challenges the field is facing, propose a framework for robust radiomics analysis, and discuss future prospects.

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