Error detection and classification in patient-specific IMRT QA with dual neural networks

被引:27
|
作者
Potter, Nicholas J. [1 ]
Mund, Karl [1 ]
Andreozzi, Jacqueline M. [1 ]
Li, Jonathan G. [1 ]
Liu, Chihray [1 ]
Yan, Guanghua [1 ]
机构
[1] Univ Florida, Dept Radiat Oncol, Gainesville, FL 32611 USA
关键词
classification; error detection; IMRT QA; machine learning; QUALITY-ASSURANCE; QUANTITATIVE-EVALUATION; RADIOMIC ANALYSIS; DOSE CALCULATION; DOSIMETRY; DELIVERY;
D O I
10.1002/mp.14416
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Despite being the standard metric in patient-specific quality assurance (QA) for intensity-modulated radiotherapy (IMRT), gamma analysis has two shortcomings: (a) it lacks sensitivity to small but clinically relevant errors (b) it does not provide efficient means to classify the error sources. The purpose of this work is to propose a dual neural network method to achieve simultaneous error detection and classification in patient-specific IMRT QA. Methods For a pair of dose distributions, we extracted the dose difference histogram (DDH) for the low dose gradient region and two signed distance-to-agreement (sDTA) maps (one in x direction and one in y direction) for the high dose gradient region. An artificial neural network (ANN) and a convolutional neural network (CNN) were designed to analyze the DDH and the two sDTA maps, respectively. The ANN was trained to detect and classify six classes of dosimetric errors: incorrect multileaf collimator (MLC) transmission (+/- 1%) and four types of monitor unit (MU) scaling errors (+/- 1% and +/- 2%). The CNN was trained to detect and classify seven classes of spatial errors: incorrect effective source size, 1 mm MLC leaf bank overtravel or undertravel, 2 mm single MLC leaf overtravel or undertravel, and device misalignment errors (1 mm in x- or y direction). An in-house planar dose calculation software was used to simulate measurements with errors and noise introduced. Both networks were trained and validated with 13 IMRT plans (totaling 88 fields). A fivefold cross-validation technique was used to evaluate their accuracy. Results Distinct features were found in the DDH and the sDTA maps. The ANN perfectly identified all four types of MU scaling errors and the specific accuracies for the classes of no error, MLC transmission increase, MLC transmission decrease were 98.9%, 96.6%, and 94.3%, respectively. For the CNN, the largest confusion occurred between the 1-mm-MLC bank overtravel class and the 1-mm-device alignment error in x-direction class, which brought the specific accuracies down to 90.9% and 92.0%, respectively. The specific accuracy for the 2-mm-single MLC leaf undertravel class was 93.2% as it misclassified 5.7% of the class as being error free (false negative). Otherwise, the specific accuracy was above 95%. The overall accuracies across the fivefold were 98.3 +/- 0.7% and 95.6% +/- 1.5% for the ANN and the CNN, respectively. Conclusions Both the DDH and the sDTA maps are suitable features for error classification in IMRT QA. The proposed dual neural network method achieved simultaneous error detection and classification with excellent accuracy. It could be used in complement with the gamma analysis to potentially shift the IMRT QA paradigm from passive pass/fail analysis to active error detection and root cause identification.
引用
收藏
页码:4711 / 4720
页数:10
相关论文
共 50 条
  • [31] Virtual patient-specific QA with DVH-based metrics
    Lay, Lam M.
    Chuang, Kai-Cheng
    Wu, Yuyao
    Giles, William
    Adamson, Justus
    JOURNAL OF APPLIED CLINICAL MEDICAL PHYSICS, 2022, 23 (11):
  • [32] Monte Carlo based, patient-specific RapidArc QA using Linac log files
    Teke, Tony
    Bergman, Alanah M.
    Kwa, William
    Gill, Bradford
    Duzenli, Cheryl
    Popescu, I. Antoniu
    MEDICAL PHYSICS, 2010, 37 (01) : 116 - 123
  • [33] Survey of patient-specific quality assurance practice for IMRT and VMAT
    Chan, Gordon H.
    Chin, Lee C. L.
    Abdellatif, Ady
    Bissonnette, Jean-Pierre
    Buckley, Lesley
    Comsa, Daria
    Granville, Dal
    King, Jenna
    Rapley, Patrick L.
    Vandermeer, Aaron
    JOURNAL OF APPLIED CLINICAL MEDICAL PHYSICS, 2021, 22 (07): : 155 - 164
  • [34] GafChromic® EBT3 films for patient specific IMRT QA using amultichannel approach
    Marrazzo, Livia
    Zani, Margherita
    Pallotta, Stefania
    Arilli, Chiara
    Casati, Marta
    Compagnucci, Antonella
    Talamonti, Cinzia
    Bucciolini, Marta
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2015, 31 (08): : 1035 - 1042
  • [35] Image-based features in machine learning to identify delivery errors and predict error magnitude for patient-specific IMRT quality assurance
    Huang, Ying
    Pi, Yifei
    Ma, Kui
    Miao, Xiaojuan
    Fu, Sichao
    Chen, Hua
    Wang, Hao
    Gu, Hengle
    Shao, Yan
    Duan, Yanhua
    Feng, Aihui
    Zhuo, Weihai
    Xu, Zhiyong
    STRAHLENTHERAPIE UND ONKOLOGIE, 2023, 199 (05) : 498 - 510
  • [36] Machine learning model for patient-specific QA prediction in stereotactic radiosurgery
    Buzzi, Simone A.
    Bianchi, Monica
    Zaccone, Caterina
    Bresolin, Andrea
    Dei, Damiano
    Gallo, Pasqualina
    La Fauci, Francesco
    Lenardi, Cristina
    Lobefalo, Francesca
    Paganini, Lucia
    Parabicoli, Sara
    Pelizzoli, Marco
    Reggiori, Giacomo
    Tomatis, Stefano
    Scorsetti, Marta
    Mancosu, Pietro
    Lambri, Nicola
    RADIOTHERAPY AND ONCOLOGY, 2024, 194 : S4557 - S4559
  • [37] The effect of influence quantities and detector orientation on small-field patient-specific IMRT QA: comparison of measurements with various ionization chambers
    Godson H.F.
    Manickam R.
    Saminathan S.
    Ganesh K.M.
    Ponmalar R.
    Radiological Physics and Technology, 2017, 10 (2) : 195 - 203
  • [38] On the evaluation of edgeless diode detectors for patient-specific QA in high-dose stereotactic radiosurgery
    De Martin, Elena
    Alhujaili, Sultan
    Fumagalli, Maria Luisa
    Ghielmetti, Francesco
    Marchetti, Marcello
    Gallo, Pasqualina
    Aquino, Domenico
    Padelli, Francesco
    Davis, Jeremy
    Alnaghy, Saree
    Carrara, Mauro
    Fariselli, Laura
    Rosenfeld, Anatoly B.
    Petasecca, Marco
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2021, 89 : 20 - 28
  • [39] Correlation of phantom-based and log file patient-specific QA with complexity scores for VMAT
    Agnew, Christina E.
    Irvine, Denise M.
    McGarry, Conor K.
    JOURNAL OF APPLIED CLINICAL MEDICAL PHYSICS, 2014, 15 (06): : 204 - 216
  • [40] Patient-specific seizure onset detection
    Shoeb, A
    Edwards, H
    Connolly, J
    Bourgeois, B
    Treves, ST
    Guttag, J
    EPILEPSY & BEHAVIOR, 2004, 5 (04) : 483 - 498