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2D Dose Reconstruction by Artificial Neural Network for Pretreatment Verification of IMRT Fields
Authors
A.J. Arfaee
M. Bakhshandeh
S.R. Mahdavi
A. Rostami
Publication date
1 January 2018
Publisher
Abstract
The use of intensity-modulated radiation therapy (IMRT) is developing rapidly in clinical routines. Because of the high complexity and uniqueness of IMRT treatment plans, patient-specific pretreatment quality assurance is generally considered a necessary prerequisite for patient treatment. In this work, we proposed a modified methodology of electronic portal imaging device (EPID)�based dose validation for pretreatment verification of IMRT fields by applying artificial neural networks (ANNs). The ANN must be trained and validated before use for pretreatment dose verification. For this purpose, 20 EPID fluence maps of IMRT prostate anterior-posterior fields were used as an input for ANN (feed forward type) and a dose map of those fluence maps that were predicted by treatment planning system as an output for ANN. After the training and validation of the neural network, the analysis of 10 IMRT prostate anterior-posterior fields showed excellent agreement between ANN output and dose map predicted by the treatment planning system. The average overall fields pass rate was 96.0 ± 0.1 with 3 mm/3 criteria. The results indicated that the ANN can be used as a low-cost, fast, and powerful tool for pretreatment dose verification, based on an EPID fluence map. © 201
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eprints Iran University of Medical Sciences
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oai:eprints.iums.ac.ir:6257
Last time updated on 10/10/2019