Literature DB >> 25652517

Automated contouring error detection based on supervised geometric attribute distribution models for radiation therapy: a general strategy.

Hsin-Chen Chen1, Jun Tan1, Steven Dolly1, James Kavanaugh1, Mark A Anastasio2, Daniel A Low3, H Harold Li1, Michael Altman1, Hiram Gay1, Wade L Thorstad1, Sasa Mutic1, Hua Li1.   

Abstract

PURPOSE: One of the most critical steps in radiation therapy treatment is accurate tumor and critical organ-at-risk (OAR) contouring. Both manual and automated contouring processes are prone to errors and to a large degree of inter- and intraobserver variability. These are often due to the limitations of imaging techniques in visualizing human anatomy as well as to inherent anatomical variability among individuals. Physicians/physicists have to reverify all the radiation therapy contours of every patient before using them for treatment planning, which is tedious, laborious, and still not an error-free process. In this study, the authors developed a general strategy based on novel geometric attribute distribution (GAD) models to automatically detect radiation therapy OAR contouring errors and facilitate the current clinical workflow.
METHODS: Considering the radiation therapy structures' geometric attributes (centroid, volume, and shape), the spatial relationship of neighboring structures, as well as anatomical similarity of individual contours among patients, the authors established GAD models to characterize the interstructural centroid and volume variations, and the intrastructural shape variations of each individual structure. The GAD models are scalable and deformable, and constrained by their respective principal attribute variations calculated from training sets with verified OAR contours. A new iterative weighted GAD model-fitting algorithm was developed for contouring error detection. Receiver operating characteristic (ROC) analysis was employed in a unique way to optimize the model parameters to satisfy clinical requirements. A total of forty-four head-and-neck patient cases, each of which includes nine critical OAR contours, were utilized to demonstrate the proposed strategy. Twenty-nine out of these forty-four patient cases were utilized to train the inter- and intrastructural GAD models. These training data and the remaining fifteen testing data sets were separately employed to test the effectiveness of the proposed contouring error detection strategy.
RESULTS: An evaluation tool was implemented to illustrate how the proposed strategy automatically detects the radiation therapy contouring errors for a given patient and provides 3D graphical visualization of error detection results as well. The contouring error detection results were achieved with an average sensitivity of 0.954/0.906 and an average specificity of 0.901/0.909 on the centroid/volume related contouring errors of all the tested samples. As for the detection results on structural shape related contouring errors, an average sensitivity of 0.816 and an average specificity of 0.94 on all the tested samples were obtained. The promising results indicated the feasibility of the proposed strategy for the detection of contouring errors with low false detection rate.
CONCLUSIONS: The proposed strategy can reliably identify contouring errors based upon inter- and intrastructural constraints derived from clinically approved contours. It holds great potential for improving the radiation therapy workflow. ROC and box plot analyses allow for analytically tuning of the system parameters to satisfy clinical requirements. Future work will focus on the improvement of strategy reliability by utilizing more training sets and additional geometric attribute constraints.

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Mesh:

Year:  2015        PMID: 25652517     DOI: 10.1118/1.4906197

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


  9 in total

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2.  Impact of random outliers in auto-segmented targets on radiotherapy treatment plans for glioblastoma.

Authors:  Robert Poel; Elias Rüfenacht; Ekin Ermis; Michael Müller; Michael K Fix; Daniel M Aebersold; Peter Manser; Mauricio Reyes
Journal:  Radiat Oncol       Date:  2022-10-22       Impact factor: 4.309

3.  CNN-Based Quality Assurance for Automatic Segmentation of Breast Cancer in Radiotherapy.

Authors:  Xinyuan Chen; Kuo Men; Bo Chen; Yu Tang; Tao Zhang; Shulian Wang; Yexiong Li; Jianrong Dai
Journal:  Front Oncol       Date:  2020-04-28       Impact factor: 6.244

4.  Quality assurance for automatically generated contours with additional deep learning.

Authors:  Lars Johannes Isaksson; Paul Summers; Abhir Bhalerao; Sara Gandini; Sara Raimondi; Matteo Pepa; Mattia Zaffaroni; Giulia Corrao; Giovanni Carlo Mazzola; Marco Rotondi; Giuliana Lo Presti; Zaharudin Haron; Sara Alessi; Paola Pricolo; Francesco Alessandro Mistretta; Stefano Luzzago; Federica Cattani; Gennaro Musi; Ottavio De Cobelli; Marta Cremonesi; Roberto Orecchia; Giulia Marvaso; Giuseppe Petralia; Barbara Alicja Jereczek-Fossa
Journal:  Insights Imaging       Date:  2022-08-17

5.  Automatic contouring QA method using a deep learning-based autocontouring system.

Authors:  Dong Joo Rhee; Chidinma P Anakwenze Akinfenwa; Bastien Rigaud; Anuja Jhingran; Carlos E Cardenas; Lifei Zhang; Surendra Prajapati; Stephen F Kry; Kristy K Brock; Beth M Beadle; William Shaw; Frederika O'Reilly; Jeannette Parkes; Hester Burger; Nazia Fakie; Chris Trauernicht; Hannah Simonds; Laurence E Court
Journal:  J Appl Clin Med Phys       Date:  2022-05-17       Impact factor: 2.243

6.  Scalable radiotherapy data curation infrastructure for deep-learning based autosegmentation of organs-at-risk: A case study in head and neck cancer.

Authors:  E Tryggestad; A Anand; C Beltran; J Brooks; J Cimmiyotti; N Grimaldi; T Hodge; A Hunzeker; J J Lucido; N N Laack; R Momoh; D J Moseley; S H Patel; A Ridgway; S Seetamsetty; S Shiraishi; L Undahl; R L Foote
Journal:  Front Oncol       Date:  2022-08-29       Impact factor: 5.738

7.  Machine learning for contour classification in TG-263 noncompliant databases.

Authors:  David Livermore; Thomas Trappenberg; Alasdair Syme
Journal:  J Appl Clin Med Phys       Date:  2022-06-10       Impact factor: 2.243

8.  Automated Quality Assurance of OAR Contouring for Lung Cancer Based on Segmentation With Deep Active Learning.

Authors:  Kuo Men; Huaizhi Geng; Tithi Biswas; Zhongxing Liao; Ying Xiao
Journal:  Front Oncol       Date:  2020-07-03       Impact factor: 6.244

9.  Automatic detection of contouring errors using convolutional neural networks.

Authors:  Dong Joo Rhee; Carlos E Cardenas; Hesham Elhalawani; Rachel McCarroll; Lifei Zhang; Jinzhong Yang; Adam S Garden; Christine B Peterson; Beth M Beadle; Laurence E Court
Journal:  Med Phys       Date:  2019-09-26       Impact factor: 4.071

  9 in total

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