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Towards a safe and efficient clinical implementation of machine learning in radiation oncology by exploring model interpretability, explainability and data-model dependency.
Barragán-Montero, Ana; Bibal, Adrien; Dastarac, Margerie Huet; Draguet, Camille; Valdés, Gilmer; Nguyen, Dan; Willems, Siri; Vandewinckele, Liesbeth; Holmström, Mats; Löfman, Fredrik; Souris, Kevin; Sterpin, Edmond; Lee, John A.
Afiliación
  • Barragán-Montero A; Molecular Imaging, Radiation and Oncology (MIRO) Laboratory, Institut de Recherche Expérimentale et Clinique (IREC), UCLouvain, Belgium.
  • Bibal A; PReCISE, NaDI Institute, Faculty of Computer Science, UNamur and CENTAL, ILC, UCLouvain, Belgium.
  • Dastarac MH; Molecular Imaging, Radiation and Oncology (MIRO) Laboratory, Institut de Recherche Expérimentale et Clinique (IREC), UCLouvain, Belgium.
  • Draguet C; Molecular Imaging, Radiation and Oncology (MIRO) Laboratory, Institut de Recherche Expérimentale et Clinique (IREC), UCLouvain, Belgium.
  • Valdés G; Department of Oncology, Laboratory of Experimental Radiotherapy, KU Leuven, Belgium.
  • Nguyen D; Department of Radiation Oncology, Department of Epidemiology and Biostatistics, University of California, San Francisco, United States of America.
  • Willems S; Medical Artificial Intelligence and Automation (MAIA) Laboratory, Department of Radiation Oncology, UT Southwestern Medical Center, United States of America.
  • Vandewinckele L; ESAT/PSI, KU Leuven Belgium & MIRC, UZ Leuven, Belgium.
  • Holmström M; Department of Oncology, Laboratory of Experimental Radiotherapy, KU Leuven, Belgium.
  • Löfman F; RaySearch Laboratories AB, Sweden.
  • Souris K; RaySearch Laboratories AB, Sweden.
  • Sterpin E; Molecular Imaging, Radiation and Oncology (MIRO) Laboratory, Institut de Recherche Expérimentale et Clinique (IREC), UCLouvain, Belgium.
  • Lee JA; Molecular Imaging, Radiation and Oncology (MIRO) Laboratory, Institut de Recherche Expérimentale et Clinique (IREC), UCLouvain, Belgium.
Phys Med Biol ; 67(11)2022 05 27.
Article en En | MEDLINE | ID: mdl-35421855
ABSTRACT
The interest in machine learning (ML) has grown tremendously in recent years, partly due to the performance leap that occurred with new techniques of deep learning, convolutional neural networks for images, increased computational power, and wider availability of large datasets. Most fields of medicine follow that popular trend and, notably, radiation oncology is one of those that are at the forefront, with already a long tradition in using digital images and fully computerized workflows. ML models are driven by data, and in contrast with many statistical or physical models, they can be very large and complex, with countless generic parameters. This inevitably raises two questions, namely, the tight dependence between the models and the datasets that feed them, and the interpretability of the models, which scales with its complexity. Any problems in the data used to train the model will be later reflected in their performance. This, together with the low interpretability of ML models, makes their implementation into the clinical workflow particularly difficult. Building tools for risk assessment and quality assurance of ML models must involve then two main points interpretability and data-model dependency. After a joint introduction of both radiation oncology and ML, this paper reviews the main risks and current solutions when applying the latter to workflows in the former. Risks associated with data and models, as well as their interaction, are detailed. Next, the core concepts of interpretability, explainability, and data-model dependency are formally defined and illustrated with examples. Afterwards, a broad discussion goes through key applications of ML in workflows of radiation oncology as well as vendors' perspectives for the clinical implementation of ML.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Oncología por Radiación Tipo de estudio: Risk_factors_studies Idioma: En Revista: Phys Med Biol Año: 2022 Tipo del documento: Article País de afiliación: Bélgica

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Oncología por Radiación Tipo de estudio: Risk_factors_studies Idioma: En Revista: Phys Med Biol Año: 2022 Tipo del documento: Article País de afiliación: Bélgica