Back to Search Start Over

Radiomics analysis of EPID measurements for patient positioning error detection in thyroid associated ophthalmopathy radiotherapy.

Authors :
Zhang, Xiangbin
Dai, Guyu
Zhong, Renming
Zhou, Li
Xiao, Qing
Wang, Xuetao
Lai, Jialu
Zhao, Jianling
Li, Guangjun
Bai, Sen
Source :
Physica Medica; Oct2021, Vol. 90, p1-5, 5p
Publication Year :
2021

Abstract

• Radiomics analysis of EPID measurements can classify the magnitude and directions of positioning errors. • AUCs of the detection of positioning errors and directions classification were above 0.90 and 0.76, respectively. • Positioning errors are detectable from EPID measurements with multifactorial error sources. • High performance is achievable using a small-size sample for patients with thyroid-associated ophthalmopathy. • This study is a further step toward machine learning-based positioning error detection via EPID measurements. Electronic portal imaging detector (EPID)-based patient positioning verification is an important component of safe radiotherapy treatment delivery. In computer simulation studies, learning-based approaches have proven to be superior to conventional gamma analysis in the detection of positioning errors. To approximate a clinical scenario, the detectability of positioning errors via EPID measurements was assessed using radiomics analysis for patients with thyroid-associated ophthalmopathy. Treatment plans of 40 patients with thyroid-associated ophthalmopathy were delivered to a solid anthropomorphic head phantom. To simulate positioning errors, combinations of 0-, 2-, and 4-mm translation errors in the left–right (LR), superior-inferior (SI), and anterior-posterior (AP) directions were introduced to the phantom. The positioning errors-induced dose differences between measured portal dose images were used to predict the magnitude and direction of positioning errors. The detectability of positioning errors was assessed via radiomics analysis of the dose differences. Three classification models—support vector machine (SVM), k-nearest neighbors (KNN), and XGBoost—were used for the detection of positioning errors (positioning errors larger or smaller than 3 mm in an arbitrary direction) and direction classification (positioning errors larger or smaller than 3 mm in a specific direction). The receiver operating characteristic curve and the area under the ROC curve (AUC) were used to evaluate the performance of classification models. For the detection of positioning errors, the AUC values of SVM, KNN, and XGBoost models were all above 0.90. For LR, SI, and AP direction classification, the highest AUC values were 0.76, 0.91, and 0.80, respectively. Combined radiomics and machine learning approaches are capable of detecting the magnitude and direction of positioning errors from EPID measurements. This study is a further step toward machine learning-based positioning error detection during treatment delivery with EPID measurements. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
11201797
Volume :
90
Database :
Supplemental Index
Journal :
Physica Medica
Publication Type :
Academic Journal
Accession number :
153225510
Full Text :
https://doi.org/10.1016/j.ejmp.2021.08.014