Litcius/Paper detail

Overview of artificial intelligence-based applications in radiotherapy: Recommendations for implementation and quality assurance

Liesbeth Vandewinckele, Michaël Claessens, Anna M. Dinkla, Charlotte L. Brouwer, Wouter Crijns, Dirk Verellen, Wouter van Elmpt

2020Radiotherapy and Oncology309 citationsDOIOpen Access PDF

Abstract

Artificial Intelligence (AI) is currently being introduced into different domains, including medicine. Specifically in radiation oncology, machine learning models allow automation and optimization of the workflow. A lack of knowledge and interpretation of these AI models can hold back wide-spread and full deployment into clinical practice. To facilitate the integration of AI models in the radiotherapy workflow, generally applicable recommendations on implementation and quality assurance (QA) of AI models are presented. For commonly used applications in radiotherapy such as auto-segmentation, automated treatment planning and synthetic computed tomography (sCT) the basic concepts are discussed in depth. Emphasis is put on the commissioning, implementation and case-specific and routine QA of AI models needed for a methodical introduction in clinical practice.

Topics & Concepts

WorkflowQuality assuranceComputer scienceAutomationSoftware deploymentSoftware engineeringArtificial intelligenceApplications of artificial intelligenceMedical physicsMedicineEngineeringPathologyDatabaseExternal quality assessmentMechanical engineeringAdvanced Radiotherapy TechniquesRadiomics and Machine Learning in Medical ImagingAdvanced X-ray and CT Imaging