Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning

Abstract Purpose In this study, we employed a gated recurrent unit (GRU)-based recurrent neural network (RNN) using dosimetric information induced by individual beam to predict the dose-volume histogram (DVH) and investigated the feasibility and usefulness of this method in biologically related mode...

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Main Authors: Wufei Cao, Yongdong Zhuang, Lixin Chen, Xiaowei Liu
Format: Article
Language:English
Published: BMC 2020-09-01
Series:Radiation Oncology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13014-020-01623-2
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spelling doaj-5a56f7ba01af4aa9913fa9af94ad62ab2020-11-25T03:13:31ZengBMCRadiation Oncology1748-717X2020-09-011511910.1186/s13014-020-01623-2Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planningWufei Cao0Yongdong Zhuang1Lixin Chen2Xiaowei Liu3School of Physics, Sun Yat-sen UniversityNational Cancer Center, Cancer Hospital & Shenzhen Hospital, Chinese Academy of Medical Sciences and Peking Union Medical CollegeState Key Laboratory of Oncology in South China, Sun Yat-sen University Cancer CenterSchool of Physics, Sun Yat-sen UniversityAbstract Purpose In this study, we employed a gated recurrent unit (GRU)-based recurrent neural network (RNN) using dosimetric information induced by individual beam to predict the dose-volume histogram (DVH) and investigated the feasibility and usefulness of this method in biologically related models for nasopharyngeal carcinomas (NPC) treatment planning. Methods and materials One hundred patients with NPC undergoing volumetric modulated arc therapy (VMAT) between 2018 and 2019 were randomly selected for this study. All the VMAT plans were created using the Monaco treatment planning system (Elekta, Sweden) and clinically approved: > 98% of PGTVnx received the prescribed doses of 70 Gy, > 98% of PGTVnd received the prescribed doses of 66 Gy and > 98% of PCTV received 60 Gy. Of these, the data from 80 patients were used to train the GRU-RNN, and the data from the other 20 patients were used for testing. For each NPC patient, the DVHs of different organs at risk were predicted by a trained GRU-based RNN using the information given by individual conformal beams. Based on the predicted DVHs, the equivalent uniform doses (EUD) were calculated and applied as dose constraints during treatment planning optimization. The regenerated VMAT experimental plans (EPs) were evaluated by comparing them with the clinical plans (CPs). Results For the 20 test patients, the regenerated EPs guided by the GRU-RNN predictive model achieved good consistency relative to the CPs. The EPs showed better consistency in PTV dose distribution and better dose sparing for many organs at risk, and significant differences were found in the maximum/mean doses to the brainstem, brainstem PRV, spinal cord, lenses, temporal lobes, parotid glands and larynx with P-values < 0.05. On average, compared with the CPs, the maximum/mean doses to these OARs were altered by − 3.44 Gy, − 1.94 Gy, − 1.88 Gy, 0.44 Gy, 1.98 Gy, − 1.82 Gy and 2.27 Gy, respectively. In addition, significant differences were also found in brainstem and spinal cord for the dose received by 1 cc volume with 4.11 and 1.67 Gy dose reduction in EPs on average. Conclusion The GRU-RNN-based DVH prediction method was capable of accurate DVH prediction. The regenerated plans guided by the predicted EUDs were not inferior to the manual plans, had better consistency in PTVs and better dose sparing in critical OARs, indicating the usefulness and effectiveness of biologically related model in knowledge-based planning.http://link.springer.com/article/10.1186/s13014-020-01623-2DVH predictionBiologically related modelsNasopharyngeal carcinoma
collection DOAJ
language English
format Article
sources DOAJ
author Wufei Cao
Yongdong Zhuang
Lixin Chen
Xiaowei Liu
spellingShingle Wufei Cao
Yongdong Zhuang
Lixin Chen
Xiaowei Liu
Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
Radiation Oncology
DVH prediction
Biologically related models
Nasopharyngeal carcinoma
author_facet Wufei Cao
Yongdong Zhuang
Lixin Chen
Xiaowei Liu
author_sort Wufei Cao
title Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
title_short Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
title_full Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
title_fullStr Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
title_full_unstemmed Application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
title_sort application of dose-volume histogram prediction in biologically related models for nasopharyngeal carcinomas treatment planning
publisher BMC
series Radiation Oncology
issn 1748-717X
publishDate 2020-09-01
description Abstract Purpose In this study, we employed a gated recurrent unit (GRU)-based recurrent neural network (RNN) using dosimetric information induced by individual beam to predict the dose-volume histogram (DVH) and investigated the feasibility and usefulness of this method in biologically related models for nasopharyngeal carcinomas (NPC) treatment planning. Methods and materials One hundred patients with NPC undergoing volumetric modulated arc therapy (VMAT) between 2018 and 2019 were randomly selected for this study. All the VMAT plans were created using the Monaco treatment planning system (Elekta, Sweden) and clinically approved: > 98% of PGTVnx received the prescribed doses of 70 Gy, > 98% of PGTVnd received the prescribed doses of 66 Gy and > 98% of PCTV received 60 Gy. Of these, the data from 80 patients were used to train the GRU-RNN, and the data from the other 20 patients were used for testing. For each NPC patient, the DVHs of different organs at risk were predicted by a trained GRU-based RNN using the information given by individual conformal beams. Based on the predicted DVHs, the equivalent uniform doses (EUD) were calculated and applied as dose constraints during treatment planning optimization. The regenerated VMAT experimental plans (EPs) were evaluated by comparing them with the clinical plans (CPs). Results For the 20 test patients, the regenerated EPs guided by the GRU-RNN predictive model achieved good consistency relative to the CPs. The EPs showed better consistency in PTV dose distribution and better dose sparing for many organs at risk, and significant differences were found in the maximum/mean doses to the brainstem, brainstem PRV, spinal cord, lenses, temporal lobes, parotid glands and larynx with P-values < 0.05. On average, compared with the CPs, the maximum/mean doses to these OARs were altered by − 3.44 Gy, − 1.94 Gy, − 1.88 Gy, 0.44 Gy, 1.98 Gy, − 1.82 Gy and 2.27 Gy, respectively. In addition, significant differences were also found in brainstem and spinal cord for the dose received by 1 cc volume with 4.11 and 1.67 Gy dose reduction in EPs on average. Conclusion The GRU-RNN-based DVH prediction method was capable of accurate DVH prediction. The regenerated plans guided by the predicted EUDs were not inferior to the manual plans, had better consistency in PTVs and better dose sparing in critical OARs, indicating the usefulness and effectiveness of biologically related model in knowledge-based planning.
topic DVH prediction
Biologically related models
Nasopharyngeal carcinoma
url http://link.springer.com/article/10.1186/s13014-020-01623-2
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