Literature DB >> 30548601

Deep learning for patient-specific quality assurance: Identifying errors in radiotherapy delivery by radiomic analysis of gamma images with convolutional neural networks.

Matthew J Nyflot1,2, Phawis Thammasorn3, Landon S Wootton1, Eric C Ford1, W Art Chaovalitwongse2,3.   

Abstract

PURPOSE: Patient-specific quality assurance (QA) for intensity-modulated radiation therapy (IMRT) is a ubiquitous clinical procedure, but conventional methods have often been criticized as being insensitive to errors or less effective than other common physics checks. Recently, there has been interest in the application of radiomics, quantitative extraction of image features, to radiotherapy QA. In this work, we investigate a deep learning approach to classify the presence or absence of introduced radiotherapy treatment delivery errors from patient-specific QA.
METHODS: Planar dose maps from 186 IMRT beams from 23 IMRT plans were evaluated. Each plan was transferred to a cylindrical phantom CT geometry. Three sets of planar doses were exported from each plan corresponding to (a) the error-free case, (b) a random multileaf collimator (MLC) error case, and (c) a systematic MLC error case. Each plan was delivered to the electronic portal imaging device (EPID), and planned and measured doses were used to calculate gamma images in an EPID dosimetry software package (for a total of 558 gamma images). Two radiomic approaches were used. In the first, a convolutional neural network with triplet learning was used to extract image features from the gamma images. In the second, a handcrafted approach using texture features was used. The resulting metrics from both approaches were input into four machine learning classifiers (support vector machines, multilayer perceptrons, decision trees, and k-nearest-neighbors) in order to determine whether images contained the introduced errors. Two experiments were considered: the two-class experiment classified images as error-free or containing any MLC error, and the three-class experiment classified images as error-free, containing a random MLC error, or containing a systematic MLC error. Additionally, threshold-based passing criteria were calculated for comparison.
RESULTS: In total, 303 gamma images were used for model training and 255 images were used for model testing. The highest classification accuracy was achieved with the deep learning approach, with a maximum accuracy of 77.3% in the two-class experiment and 64.3% in the three-class experiment. The performance of the handcrafted approach with texture features was lower, with a maximum accuracy of 66.3% in the two-class experiment and 53.7% in the three-class experiment. Variability between the results of the four machine learning classifiers was lower for the deep learning approach vs the texture feature approach. Both radiomic approaches were superior to threshold-based passing criteria.
CONCLUSIONS: Deep learning with convolutional neural networks can be used to classify the presence or absence of introduced radiotherapy treatment delivery errors from patient-specific gamma images. The performance of the deep learning network was superior to a handcrafted approach with texture features, and both radiomic approaches were better than threshold-based passing criteria. The results suggest that radiomic QA is a promising direction for clinical radiotherapy.
© 2018 American Association of Physicists in Medicine.

Entities:  

Keywords:  zzm321990IMRT QAzzm321990; deep learning; quality assurance; radiomics; texture features

Mesh:

Year:  2018        PMID: 30548601     DOI: 10.1002/mp.13338

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


  14 in total

1.  Auto-Trending daily quality assurance program for a pencil beam scanning proton system aligned with TG 224.

Authors:  Chengyu Shi; Qing Chen; Francis Yu; Jingqiao Zhang; Minglei Kang; Shikui Tang; Chang Chang; Haibo Lin
Journal:  J Appl Clin Med Phys       Date:  2020-12-18       Impact factor: 2.102

2.  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

Review 3.  A Survey on Deep Learning for Precision Oncology.

Authors:  Ching-Wei Wang; Muhammad-Adil Khalil; Nabila Puspita Firdi
Journal:  Diagnostics (Basel)       Date:  2022-06-17

Review 4.  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

5.  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

Review 6.  Radiomics in radiation oncology for gynecological malignancies: a review of literature.

Authors:  Morgan Michalet; David Azria; Marion Tardieu; Hichem Tibermacine; Stéphanie Nougaret
Journal:  Br J Radiol       Date:  2021-05-07       Impact factor: 3.629

7.  Adapting training for medical physicists to match future trends in radiation oncology.

Authors:  Catharine H Clark; Giovanna Gagliardi; Ben Heijmen; Julian Malicki; Daniela Thorwarth; Dirk Verellen; Ludvig P Muren
Journal:  Phys Imaging Radiat Oncol       Date:  2019-09-19

Review 8.  Integration of AI and Machine Learning in Radiotherapy QA.

Authors:  Maria F Chan; Alon Witztum; Gilmer Valdes
Journal:  Front Artif Intell       Date:  2020-09-29

Review 9.  Machine learning applications in radiation oncology.

Authors:  Matthew Field; Nicholas Hardcastle; Michael Jameson; Noel Aherne; Lois Holloway
Journal:  Phys Imaging Radiat Oncol       Date:  2021-06-24

Review 10.  Radiomics for radiation oncologists: are we ready to go?

Authors:  Loïg Vaugier; Ludovic Ferrer; Laurence Mengue; Emmanuel Jouglar
Journal:  BJR Open       Date:  2020-03-25
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