Literature DB >> 32330812

Error detection using a convolutional neural network with dose difference maps in patient-specific quality assurance for volumetric modulated arc therapy.

Yuto Kimura1, Noriyuki Kadoya2, Seiji Tomori3, Yohei Oku4, Keiichi Jingu5.   

Abstract

The aim of this study was to evaluate the use of dose difference maps with a convolutional neural network (CNN) to detect multi-leaf collimator (MLC) positional errors in patient-specific quality assurance for volumetric modulated radiation therapy (VMAT). A cylindrical three-dimensional detector (Delta4, ScandiDos, Uppsala, Sweden) was used to measure 161 beams from 104 clinical prostate VMAT plans. For the simulation used error-free plans plus plans with two types of MLC error were introduced: systematic error and random error. A total of 483 dose distributions in a virtual cylindrical phantom were calculated with a treatment planning system. Dose difference maps were created from two planar dose distributions from the measured and calculated dose distributions, and these were used as the input for the CNN, with 375 datasets assigned for training and 108 datasets assigned for testing. The CNN model had three convolution layers and was trained with five-fold cross-validation. The CNN model classified the error types of the plans as "error-free," "systematic error," or "random error," with an overall accuracy of 0.944. The sensitivity values for the "error-free," "systematic error," and "random error" classifications were 0.889, 1.000, and 0.944, respectively, and the specificity values were 0.986, 0.986, and 0.944, respectively. This approach was superior to those based on gamma analysis. Using dose difference maps with a CNN model may provide an effective solution for detecting MLC errors for patient-specific VMAT quality assurance.
Copyright © 2020 Associazione Italiana di Fisica Medica. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Deep learning; Patient-specific QA; Prostate; Radiotherapy; Volumetric modulated radiation therapy

Year:  2020        PMID: 32330812     DOI: 10.1016/j.ejmp.2020.03.022

Source DB:  PubMed          Journal:  Phys Med        ISSN: 1120-1797            Impact factor:   2.685


  5 in total

1.  A deep learning-based radiomics approach to predict head and neck tumor regression for adaptive radiotherapy.

Authors:  Shohei Tanaka; Noriyuki Kadoya; Yuto Sugai; Mariko Umeda; Miyu Ishizawa; Yoshiyuki Katsuta; Kengo Ito; Ken Takeda; Keiichi Jingu
Journal:  Sci Rep       Date:  2022-05-27       Impact factor: 4.996

2.  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

3.  Analysis of EPID Transmission Fluence Maps Using Machine Learning Models and CNN for Identifying Position Errors in the Treatment of GO Patients.

Authors:  Guyu Dai; Xiangbin Zhang; Wenjie Liu; Zhibin Li; Guangyu Wang; Yaxin Liu; Qing Xiao; Lian Duan; Jing Li; Xinyu Song; Guangjun Li; Sen Bai
Journal:  Front Oncol       Date:  2021-09-14       Impact factor: 6.244

4.  What is the optimal input information for deep learning-based pre-treatment error identification in radiotherapy?

Authors:  Cecile J A Wolfs; Frank Verhaegen
Journal:  Phys Imaging Radiat Oncol       Date:  2022-08-27

5.  A deep learning method for translating 3DCT to SPECT ventilation imaging: First comparison with 81m Kr-gas SPECT ventilation imaging.

Authors:  Tomohiro Kajikawa; Noriyuki Kadoya; Yosuke Maehara; Hiroshi Miura; Yoshiyuki Katsuta; Shinsuke Nagasawa; Gen Suzuki; Hideya Yamazaki; Nagara Tamaki; Kei Yamada
Journal:  Med Phys       Date:  2022-05-17       Impact factor: 4.506

  5 in total

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