Literature DB >> 30066388

A deep learning-based prediction model for gamma evaluation in patient-specific quality assurance.

Seiji Tomori1,2, Noriyuki Kadoya2, Yoshiki Takayama2, Tomohiro Kajikawa2, Katsumi Shima3, Kakutarou Narazaki1, Keiichi Jingu2.   

Abstract

PURPOSE: Patient-specific quality assurance (QA) measurement is conducted to confirm the accuracy of dose delivery. However, measurement is time-consuming and places a heavy workload on the medical physicists and radiological technologists. In this study, we proposed a prediction model for gamma evaluation, based on deep learning. We applied the model to a QA measurement dataset of prostate cancer cases to evaluate its practicality.
METHODS: Sixty pretreatment verification plans from prostate cancer patients treated using intensity modulated radiation therapy were collected. Fifteen-layer convolutional neural networks (CNN) were developed to learn the sagittal planar dose distributions from a RT-3000 QA phantom (R-TECH.INC., Tokyo, Japan). The percentage gamma passing rate (GPR) was measured using GAFCHROMIC EBT3 film (Ashland Specialty Ingredients, Covington, USA). The input training data also included the volume of the PTV (planning target volume), rectum, and overlapping region, measured in cm3 , and the monitor unit values for each field. The network produced predicted GPR values at four criteria: 2%(global)/2 mm, 3%(global)/2 mm, 2%(global)/3 mm, and 3%(global)/3 mm. Adam, an algorithm for first-order gradient-based optimization of stochastic objective functions, was used for learning and for optimizing the CNN-based model. Fivefold cross-validation was applied to validate the performance of the proposed method. Forty cases were used for training and validation set in fivefold cross-validation, and the remaining 20 cases were used for the test set. The predicted and measured GPR values were compared.
RESULTS: A linear relationship was found between the measured and predicted values, for each of the four criteria. Spearman rank correlation coefficients in validation set between measured and predicted GPR values at four criteria were 0.73 at 2%/2 mm, 0.72 at 3%/2 mm, 0.74 at 2%/3 mm, and 0.65 at 3%/3 mm, respectively (P < 0.01). The Spearman rank correlation coefficients in the test set were 0.62 (P < 0.01) at 2%/2 mm, 0.56 (P < 0.01) at 3%/2 mm, 0.51 (P = 0.02) at 2%/3 mm, and 0.32 (P = 0.16) at 3%/3 mm. These results demonstrated a strong or moderate correlation between the predicted and measured values.
CONCLUSIONS: We developed a CNN-based prediction model for patient-specific QA of dose distribution in prostate treatment. Our results suggest that deep learning may provide a useful prediction model for gamma evaluation of patient-specific QA in prostate treatment planning.
© 2018 American Association of Physicists in Medicine.

Entities:  

Keywords:  convolutional neural network; deep learning; gamma evaluation; patient QA; radiotherapy

Year:  2018        PMID: 30066388     DOI: 10.1002/mp.13112

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  15 in total

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3.  Improving robustness of a deep learning-based lung-nodule classification model of CT images with respect to image noise.

Authors:  Yin Gao; Jennifer Xiong; Chenyang Shen; Xun Jia
Journal:  Phys Med Biol       Date:  2021-12-07       Impact factor: 3.609

4.  Predicting gamma evaluation results of patient-specific head and neck volumetric-modulated arc therapy quality assurance based on multileaf collimator patterns and fluence map features: A feasibility study.

Authors:  Sangutid Thongsawad; Somyot Srisatit; Todsaporn Fuangrod
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5.  Deep Learning for Patient-Specific Quality Assurance: Predicting Gamma Passing Rates for IMRT Based on Delivery Fluence Informed by log Files.

Authors:  Ying Huang; Yifei Pi; Kui Ma; Xiaojuan Miao; Sichao Fu; Zhen Zhu; Yifan Cheng; Zhepei Zhang; Hua Chen; Hao Wang; Hengle Gu; Yan Shao; Yanhua Duan; Aihui Feng; Weihai Zhuo; Zhiyong Xu
Journal:  Technol Cancer Res Treat       Date:  2022 Jan-Dec

6.  Dose Super-Resolution in Prostate Volumetric Modulated Arc Therapy Using Cascaded Deep Learning Networks.

Authors:  Dong-Seok Shin; Kyeong-Hyeon Kim; Sang-Won Kang; Seong-Hee Kang; Jae-Sung Kim; Tae-Ho Kim; Dong-Su Kim; Woong Cho; Tae Suk Suh; Jin-Beom Chung
Journal:  Front Oncol       Date:  2020-11-16       Impact factor: 6.244

Review 7.  An introduction to deep learning in medical physics: advantages, potential, and challenges.

Authors:  Chenyang Shen; Dan Nguyen; Zhiguo Zhou; Steve B Jiang; Bin Dong; Xun Jia
Journal:  Phys Med Biol       Date:  2020-03-03       Impact factor: 3.609

8.  Commissioning and clinical implementation of an Autoencoder based Classification-Regression model for VMAT patient-specific QA in a multi-institution scenario.

Authors:  Ruijie Yang; Xueying Yang; Le Wang; Dingjie Li; Yuexin Guo; Ying Li; Yumin Guan; Xiangyang Wu; Shouping Xu; Shuming Zhang; Maria F Chan; Lisheng Geng; Jing Sui
Journal:  Radiother Oncol       Date:  2021-06-21       Impact factor: 6.901

9.  A convolutional neural network approach for IMRT dose distribution prediction in prostate cancer patients.

Authors:  Tomohiro Kajikawa; Noriyuki Kadoya; Kengo Ito; Yoshiki Takayama; Takahito Chiba; Seiji Tomori; Hikaru Nemoto; Suguru Dobashi; Ken Takeda; Keiichi Jingu
Journal:  J Radiat Res       Date:  2019-10-23       Impact factor: 2.724

10.  Impact of delivery characteristics on dose delivery accuracy of volumetric modulated arc therapy for different treatment sites.

Authors:  Jiaqi Li; Xile Zhang; Jun Li; Rongtao Jiang; Jing Sui; Maria F Chan; Ruijie Yang
Journal:  J Radiat Res       Date:  2019-10-23       Impact factor: 2.724

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