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A computer simulated phantom study of tomotherapy dose optimization based on probability density functions (PDF) and potential errors caused by low reproducibility of PDF

Med. Phys. Volume 33, Issue 9, pp. 3321-3326 (September 2006)

Published 25 August 2006
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KEYWORDS and PACS

Keywords
PACS
  • 87.53.Kn
    Conformal radiation treatment (ionizing radiation therapy)
  • 87.66.Xa
    Phantoms (radiation measurement in medical physics)
  • 87.61.-c
    Medical magnetic resonance imaging
  • 02.60.Pn
    Numerical optimization
  • YEAR: 2006

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PUBLICATION DATA

ISSN:
0094-2405 (print)  
Publisher:
AIP is a member of CrossRef AAPM
Ke Sheng
Department of Radiation Oncology, University of Virginia, Charlottesville, Virginia 22908

Jing Cai and James Brookeman
Department of Radiology, University of Virginia, Charlottesville, Virginia 22908

Janelle Molloy
Department of Radiation Oncology, University of Virginia, Charlottesville, Virginia 22908 and Department of Radiation Oncology, Mayo Clinic, Rochester, Minnesota 55905

John Christopher
Department of Radiology, University of Virginia, Charlottesville, Virginia 22908

Paul Read
Department of Radiation Oncology, University of Virginia, Charlottesville, Virginia 22908
Lung tumor motion trajectories measured by four-dimensional CT or dynamic MRI can be converted to a probability density function (PDF), which describes the probability of the tumor at a certain position, for PDF based treatment planning. Using this method in simulated sequential tomotherapy, we study the dose reduction of normal tissues and more important, the effect of PDF reproducibility on the accuracy of dosimetry. For these purposes, realistic PDFs were obtained from two dynamic MRI scans of a healthy volunteer within a 2 week interval. The first PDF was accumulated from a 300  s scan and the second PDF was calculated from variable scan times from 5  s (one breathing cycle) to 300  s. Optimized beam fluences based on the second PDF were delivered to the hypothetical gross target volume (GTV) of a lung phantom that moved following the first PDF. The reproducibility between two PDFs varied from low (78%) to high (94.8%) when the second scan time increased from 5  s to 300  s. When a highly reproducible PDF was used in optimization, the dose coverage of GTV was maintained; phantom lung receiving 10%–20% prescription dose was reduced by 40%–50% and the mean phantom lung dose was reduced by 9.6%. However, optimization based on PDF with low reproducibility resulted in a 50% underdosed GTV. The dosimetric error increased nearly exponentially as the PDF error increased. Therefore, although the dose of the tumor surrounding tissue can be theoretically reduced by PDF based treatment planning, the reliability and applicability of this method highly depend on if a reproducible PDF exists and is measurable. By correlating the dosimetric error and PDF error together, a useful guideline for PDF data acquisition and patient qualification for PDF based planning can be derived. ©2006 American Association of Physicists in Medicine
History: Received 1 February 2006; revised 15 June 2006; accepted 15 June 2006; published 25 August 2006
Permalink: http://dx.doi.org/10.1118/1.2222331

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