Vision 20/20: Perspectives on automated image segmentation for radiotherapy Journal Article


Authors: Sharp, G.; Fritscher, K. D.; Pekar, V.; Peroni, M.; Shusharina, N.; Veeraraghavan, H.; Yang, J.
Article Title: Vision 20/20: Perspectives on automated image segmentation for radiotherapy
Abstract: Due to rapid advances in radiation therapy (RT), especially image guidance and treatment adaptation, a fast and accurate segmentation of medical images is a very important part of the treatment. Manual delineation of target volumes and organs at risk is still the standard routine for most clinics, even though it is time consuming and prone to intra- and interobserver variations. Automated segmentation methods seek to reduce delineation workload and unify the organ boundary definition. In this paper, the authors review the current autosegmentation methods particularly relevant for applications in RT. The authors outline the methodsstrengths and limitations and propose strategies that could lead to wider acceptance of autosegmentation in routine clinical practice. The authors conclude that currently, autosegmentation technology in RT planning is an efficient tool for the clinicians to provide them with a good starting point for review and adjustment. Modern hardware platforms including GPUs allow most of the autosegmentation tasks to be done in a range of a few minutes. In the nearest future, improvements in CT-based autosegmentation tools will be achieved through standardization of imaging and contouring protocols. In the longer term, the authors expect a wider use of multimodality approaches and better understanding of correlation of imaging with biology and pathology. © 2014 American Association of Physicists in Medicine.
Keywords: treatment planning; cancer radiotherapy; nuclear magnetic resonance imaging; clinical practice; computer assisted tomography; image analysis; clinical protocol; standardization; algorithm; radiation therapy; feedback system; segmentation; image processing; statistical model; anatomical concepts; machine learning; human; article; automated image segmentation
Journal Title: Medical Physics
Volume: 41
Issue: 5
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2014-05-01
Start Page: 050902
Language: English
DOI: 10.1118/1.4871620
PROVIDER: scopus
PMCID: PMC4000389
PUBMED: 24784366
DOI/URL:
Notes: Med. Phys. -- Export Date: 2 June 2014 -- CODEN: MPHYA -- Source: Scopus
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