Litcius/Paper detail

Automated Tumor Segmentation in Radiotherapy

Ricky R. Savjani, Michael Lauria, Supratik Bose, Jie Deng, Ye Yuan, Vincent Andrearczyk

2022Seminars in Radiation Oncology35 citationsDOIOpen Access PDF

Abstract

Autosegmentation of gross tumor volumes holds promise to decrease clinical demand and to provide consistency across clinicians and institutions for radiation treatment planning. Additionally, autosegmentation can enable imaging analyses such as radiomics to construct and deploy large studies with thousands of patients. Here, we review modern results that utilize deep learning approaches to segment tumors in 5 major clinical sites: brain, head and neck, thorax, abdomen, and pelvis. We focus on approaches that inch closer to clinical adoption, highlighting winning entries in international competitions, unique network architectures, and novel ways of overcoming specific challenges. We also broadly discuss the future of gross tumor volumes autosegmentation and the remaining barriers that must be overcome before widespread replacement or augmentation of manual contouring.

Topics & Concepts

MedicineContouringMedical physicsPelvisRadiation therapySegmentationConsistency (knowledge bases)RadiologyFocus (optics)Head and neckArtificial intelligenceSurgeryComputer sciencePhysicsComputer graphics (images)OpticsAdvanced Radiotherapy TechniquesRadiomics and Machine Learning in Medical ImagingMedical Imaging Techniques and Applications