An Efficiency Studying of an Ion Chamber Simulation Using Vriance Reduction Techniques with EGSnrc
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2019
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Abstract
Background: Radiotherapy is an important technique of cancer treatment using ionizing radiation. The determination of total dose in reference conditions is
an important contribution to uncertainty that could achieve 2%. The source of this
uncertainty comes from cavity theory that relates the in-air cavity dose and the dose
to water. These correction factors are determined from Monte Carlo calculations of
ionization chambers. The main problem of this type of calculation is the extremely
long computation time to achieve reasonable statistics.
Objective: The main purpose of this work is to present a combination with variance reduction techniques for the case of an ionization chamber in water.
Methods: The egs_chamber code allows for very efficient computation of ionization chamber doses and dose ratios by using various variance reduction techniques,
and also permits realistic simulations of the experimental setup due to the use of
EGSnrc C++ library. Russian roulette and Photon Cross Section Enhancement were
used with egs_chamber code. Tests were performed to obtain the parameters of variance reduction techniques resulting in a maximum efficiency.
Results: It can be seen that the parameters which result in improved Monte Carlo
calculation of the efficiency values are XCSE 64 and Russian Roulette (RR) 128.
Conclusion: This study determines the parameters of variance reduction techniques that result in an optimal computational efficiency.
Citation: Campos L. T, Magalhães L. A, de Almeida C. E. V. An Efficiency Studying of an Ion Chamber Simulation Using Vriance Reduction
Techniques with EGSnrc. J Biomed Phys Eng. 2019;9(3):259-266. https://doi.org/10.22086/jbpe.v0i0.682.
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| Authors | T., Campos L.;A., Magalhães L.;V., de Almeida C. E.; |
| Journal | journal of biomedical physics and engineering |
| Year | 2019 |
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