Deep‐neural network approaches for predicting 3D dose distribution in intensity‐modulated radiotherapy of the brain tumors

Author:

Irannejad Maziar1,Abedi Iraj2ORCID,Lonbani Vida Darbaghi3,Hassanvand Maryam3

Affiliation:

1. Department of Electrical Engineering, Najafabad Branch Islamic Azad University Najafabad Iran

2. Medical Physics Department, School of Medicine Isfahan University of Medical Sciences Isfahan Iran

3. Department of Physics Isfahan University of Technology Isfahan Iran

Abstract

AbstractPurposeThe aim of this study is to reduce treatment planning time by predicting the intensity‐modulated radiotherapy 3D dose distribution using deep learning for brain cancer patients. “For this purpose, two different approaches in dose prediction, i.e., first only planning target volume (PTV) and second PTV with organs at risk (OARs) as input of the U‐net model, are employed and their results are compared.”Methods and MaterialsThe data of 99 patients with glioma tumors referred for IMRT treatment were used so that the images of 90 patients were regarded as training datasets and the others were for the test. All patients were manually planned and treated with sixth‐field IMRT; the photon energy was 6MV. The treatment plans were done with the Collapsed Cone Convolution algorithm to deliver 60 Gy in 30 fractions.ResultsThe obtained accuracy and similarity for the proposed methods in dose prediction when compared to the clinical dose distributions on test patients according to MSE, dice metric and SSIM for the Only‐PTV and PTV‐OARs methods are on average (0.05, 0.851, 0.83) and (0.056, 0.842, 0.82) respectively. Also, dose prediction is done in an extremely short time.ConclusionThe same results of the two proposed methods prove that the presence of OARs in addition to PTV does not provide new knowledge to the network and only by defining the PTV and its location in the imaging slices, does the dose distribution become predictable. Therefore, the Only‐PTV method by eliminating the process of introducing OARs can reduce the overall designing time of treatment by IMRT in patients with glioma tumors.

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging,Instrumentation,Radiation

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