A recurrent neural network for rapid detection of delivery errors during real-time portal dosimetry

被引:9
作者
Bedford, James L. [1 ,2 ]
Hanson, Ian M. [3 ]
机构
[1] Inst Canc Res, Joint Dept Phys, London SM2 5PT, England
[2] Royal Marsden NHS Fdn Trust, London SM2 5PT, England
[3] Auckland Radiat Oncol, Auckland, New Zealand
关键词
In vivo dosimetry; Electronic portal imaging device; Artificial neural network; Volumetric modulated arc therapy; IN-VIVO DOSIMETRY; DOSE VERIFICATION; EPID IMAGES; RADIOTHERAPY; PROSTATE; OPTIMIZATION; EXPERIENCE; THERAPY; IMRT;
D O I
10.1016/j.phro.2022.03.004
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background and purpose: Real-time portal dosimetry compares measured images with predicted images to detect delivery errors as the radiotherapy treatment proceeds. This work aimed to investigate the performance of a recurrent neural network for processing image metrics so as to detect delivery errors as early as possible in the treatment.Materials and methods: Volumetric modulated arc therapy (VMAT) plans of six prostate patients were used to generate sequences of predicted portal images. Errors were introduced into the treatment plans and the modified plans were delivered to a water-equivalent phantom. Four different metrics were used to detect errors. These metrics were applied to a threshold-based method to detect the errors as soon as possible during the delivery, and also to a recurrent neural network consisting of four layers. A leave-two-out approach was used to set thresholds and train the neural network then test the resulting systems.Results: When using a combination of metrics in conjunction with optimal thresholds, the median segment index at which the errors were detected was 107 out of 180. When using the neural network, the median segment index for error detection was 66 out of 180, with no false positives. The neural network reduced the rate of false negative results from 0.36 to 0.24.Conclusions: The recurrent neural network allowed the detection of errors around 30% earlier than when using conventional threshold techniques. By appropriate training of the network, false positive alerts could be prevented, thereby avoiding unnecessary disruption to the patient workflow.
引用
收藏
页码:36 / 43
页数:8
相关论文
共 52 条
[11]   Model-based prediction of portal dose images during patient treatment [J].
Chytyk-Praznik, K. ;
VanUytven, E. ;
vanBeek, T. A. ;
Greer, P. B. ;
McCurdy, B. M. C. .
MEDICAL PHYSICS, 2013, 40 (03)
[12]   A novel method for sub-arc VMAT dose delivery verification based on portal dosimetry with an EPID [J].
Cools, Ruud A. M. ;
Dirkx, Maarten L. P. ;
Heijmen, Ben J. M. .
MEDICAL PHYSICS, 2017, 44 (11) :5556-5562
[13]   3D radiotherapy dose prediction on head and neck cancer patients with a hierarchically densely connected U-net deep learning architecture [J].
Dan Nguyen ;
Jia, Xun ;
Sher, David ;
Lin, Mu-Han ;
Iqbal, Zohaib ;
Liu, Hui ;
Jiang, Steve .
PHYSICS IN MEDICINE AND BIOLOGY, 2019, 64 (06)
[14]   Conventional versus hypofractionated high-dose intensity-modulated radiotherapy for prostate cancer: preliminary safety results from the CHHiP randomised controlled trial [J].
Dearnaley, David ;
Syndikus, Isabel ;
Sumo, Georges ;
Bidmead, Margaret ;
Bloomfield, David ;
Clark, Catharine ;
Gao, Annie ;
Hassan, Shama ;
Horwich, Alan ;
Huddart, Robert ;
Khoo, Vincent ;
Kirkbride, Peter ;
Mayles, Helen ;
Mayles, Philip ;
Naismith, Olivia ;
Parker, Chris ;
Patterson, Helen ;
Russell, Martin ;
Scrase, Christopher ;
South, Chris ;
Staffurth, John ;
Hall, Emma .
LANCET ONCOLOGY, 2012, 13 (01) :43-54
[15]   Estimating dose delivery accuracy in stereotactic body radiation therapy: A review of in-vivo measurement methods [J].
Esposito, Marco ;
Villaggi, Elena ;
Bresciani, Sara ;
Cilla, Savino ;
Falco, Maria Daniela ;
Garibaldi, Cristina ;
Russo, Serenella ;
Talamonti, Cinzia ;
Stasi, Michele ;
Mancosu, Pietro .
RADIOTHERAPY AND ONCOLOGY, 2020, 149 :158-167
[16]   Quasi real time in vivo dosimetry for VMAT [J].
Fidanzio, A. ;
Porcelli, A. ;
Azario, L. ;
Greco, F. ;
Cilla, S. ;
Grusio, M. ;
Balducci, M. ;
Valentini, V. ;
Piermattei, A. .
MEDICAL PHYSICS, 2014, 41 (06)
[17]  
Friedman J., 2009, ELEMENTS STAT LEARNI, DOI DOI 10.1007/978-0-387-84858-7
[18]   Investigation of a real-time EPID-based patient dose monitoring safety system using site-specific control limits [J].
Fuangrod, Todsaporn ;
Greer, Peter B. ;
Woodruff, Henry C. ;
Simpson, John ;
Bhatia, Shashank ;
Zwan, Benjamin ;
vanBeek, Timothy A. ;
McCurdy, Boyd M. C. ;
Middleton, Richard H. .
RADIATION ONCOLOGY, 2016, 11
[19]   Use of artificial neural networks to predict biological outcomes for patients receiving radical radiotherapy of the prostate [J].
Gulliford, SL ;
Webb, S ;
Rowbottom, CG ;
Corne, DW ;
Dearnaley, DP .
RADIOTHERAPY AND ONCOLOGY, 2004, 71 (01) :3-12
[20]   Clinical implementation and rapid commissioning of an EPID based in-vivo dosimetry system [J].
Hanson, Ian M. ;
Hansen, Vibeke N. ;
Olaciregui-Ruiz, Igor ;
van Herk, Marcel .
PHYSICS IN MEDICINE AND BIOLOGY, 2014, 59 (19) :N171-N179