Literature DB >> 23231294

Predicting dose-volume histograms for organs-at-risk in IMRT planning.

Lindsey M Appenzoller1, Jeff M Michalski, Wade L Thorstad, Sasa Mutic, Kevin L Moore.   

Abstract

PURPOSE: The objective of this work was to develop a quality control (QC) tool to reduce intensity modulated radiotherapy (IMRT) planning variability and improve treatment plan quality using mathematical models that predict achievable organ-at-risk (OAR) dose-volume histograms (DVHs) based on individual patient anatomy.
METHODS: A mathematical framework to predict achievable OAR DVHs was derived based on the correlation of expected dose to the minimum distance from a voxel to the PTV surface. OAR voxels sharing a range of minimum distances were computed as subvolumes. A three-parameter, skew-normal probability distribution was used to fit subvolume dose distributions, and DVH prediction models were developed by fitting the evolution of the skew-normal parameters as a function of distance with polynomials. Cohorts of 20 prostate and 24 head-and-neck IMRT plans with identical clinical objectives were used to train organ-specific average models for rectum, bladder, and parotids. A sum of residuals analysis quantifying the integrated difference between the clinically approved DVH and predicted DVH evaluated similarity between DVHs. The ability of the average models to prospectively predict DVHs was evaluated on an independent validation cohort of 20 prostate plans. Statistical comparison of the sums of residuals between training and validation cohorts quantified the accuracy of the average model. Restricted sums of residuals (RSR) were used to identify potential outliers, where large values of RSR indicate a clinical DVH that exceeds the predicted DVH by a considerable amount. A refined model was obtained for each organ by excluding outliers with large RSR values from the training cohort. The refined model was applied to the original training cohort and restricted sums of residuals were utilized to estimate potential DVH improvements. All cases were replanned and evaluated by the physician that approved the original plan. The ability of the refined models to correctly identify outliers was assessed using the residual sum between the original and replanned DVHs to quantify dosimetric gains realized under replanning.
RESULTS: Statistical analysis of average sum of residuals for rectum (SR(rectum)=0.003±0.037), bladder (SR(bladder)=-0.008±0.037), and parotid (SR(parotid)=-0.003±0.060) training cohorts yielded mean values near zero and small with respect to the standard deviations, indicating that the average models are capturing the essential behavior of the training cohorts. The predictive abilities of the average rectum and bladder models were statistically indistinguishable between the training and validation sets, with SR(rectum)=0.002±0.044 and SR(bladder)=-0.018±0.058 for the validation set. The refined models' ability to detect outliers and predict achievable OAR DVHs was demonstrated by a strong correlation between predicted gains (RSR) and realized gains after replanning with sample correlation coefficients of r = 0.92 for the rectum, r = 0.88 for the bladder, and r = 0.84 for the parotid glands.
CONCLUSIONS: The results demonstrate that our mathematical framework and modest training cohorts successfully predict achievable OAR DVHs based on individual patient anatomy. The models correctly identified suboptimal plans that demonstrated further OAR sparing after replanning. This modeling technique requires no manual intervention except for appropriate selection of a training set with identical evaluation criteria. Clinical implementation is in progress to evaluate impact on real-time IMRT QC.

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Mesh:

Year:  2012        PMID: 23231294     DOI: 10.1118/1.4761864

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


  117 in total

1.  Evaluating inter-campus plan consistency using a knowledge based planning model.

Authors:  Sean L Berry; Rongtao Ma; Amanda Boczkowski; Andrew Jackson; Pengpeng Zhang; Margie Hunt
Journal:  Radiother Oncol       Date:  2016-07-06       Impact factor: 6.280

2.  Automating proton treatment planning with beam angle selection using Bayesian optimization.

Authors:  Vicki T Taasti; Linda Hong; Jin Sup Andy Shim; Joseph O Deasy; Masoud Zarepisheh
Journal:  Med Phys       Date:  2020-05-27       Impact factor: 4.071

3.  Radiotherapy dose distribution prediction for breast cancer using deformable image registration.

Authors:  Xue Bai; Binbing Wang; Shengye Wang; Zhangwen Wu; Chengjun Gou; Qing Hou
Journal:  Biomed Eng Online       Date:  2020-05-29       Impact factor: 2.819

4.  Knowledge-Based Tradeoff Hyperplanes for Head and Neck Treatment Planning.

Authors:  Jiahan Zhang; Yaorong Ge; Yang Sheng; Chunhao Wang; Jiang Zhang; Yuan Wu; Qiuwen Wu; Fang-Fang Yin; Q Jackie Wu
Journal:  Int J Radiat Oncol Biol Phys       Date:  2020-01-24       Impact factor: 7.038

5.  Functional-guided radiotherapy using knowledge-based planning.

Authors:  Austin M Faught; Lindsey Olsen; Leah Schubert; Chad Rusthoven; Edward Castillo; Richard Castillo; Jingjing Zhang; Thomas Guerrero; Moyed Miften; Yevgeniy Vinogradskiy
Journal:  Radiother Oncol       Date:  2018-04-05       Impact factor: 6.280

6.  Quantifying Unnecessary Normal Tissue Complication Risks due to Suboptimal Planning: A Secondary Study of RTOG 0126.

Authors:  Kevin L Moore; Rachel Schmidt; Vitali Moiseenko; Lindsey A Olsen; Jun Tan; Ying Xiao; James Galvin; Stephanie Pugh; Michael J Seider; Adam P Dicker; Walter Bosch; Jeff Michalski; Sasa Mutic
Journal:  Int J Radiat Oncol Biol Phys       Date:  2015-04-03       Impact factor: 7.038

7.  Automated prediction of dosimetric eligibility of patients with prostate cancer undergoing intensity-modulated radiation therapy using a convolutional neural network.

Authors:  Tomohiro Kajikawa; Noriyuki Kadoya; Kengo Ito; Yoshiki Takayama; Takahito Chiba; Seiji Tomori; Ken Takeda; Keiichi Jingu
Journal:  Radiol Phys Technol       Date:  2018-08-14

8.  Modeling the dosimetry of organ-at-risk in head and neck IMRT planning: an intertechnique and interinstitutional study.

Authors:  Jun Lian; Lulin Yuan; Yaorong Ge; Bhishamjit S Chera; David P Yoo; Sha Chang; FangFang Yin; Q Jackie Wu
Journal:  Med Phys       Date:  2013-12       Impact factor: 4.071

9.  Outlier identification in radiation therapy knowledge-based planning: A study of pelvic cases.

Authors:  Yang Sheng; Yaorong Ge; Lulin Yuan; Taoran Li; Fang-Fang Yin; Qingrong Jackie Wu
Journal:  Med Phys       Date:  2017-09-30       Impact factor: 4.071

10.  Automated intensity modulated treatment planning: The expedited constrained hierarchical optimization (ECHO) system.

Authors:  Masoud Zarepisheh; Linda Hong; Ying Zhou; Jung Hun Oh; James G Mechalakos; Margie A Hunt; Gig S Mageras; Joseph O Deasy
Journal:  Med Phys       Date:  2019-05-29       Impact factor: 4.071

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