Fast prediction of patient-specific organ doses in brain CT scans using support vector regression algorithm

Wencheng Shao(Fudan University), Xin Lin(Fudan University), Yanling Yi(Fudan University), Ying Huang(Shanghai Jiao Tong University), Liangyong Qu(Zhongshan Hospital), Weihai Zhuo(Fudan University), Haikuan Liu(Fudan University)
Physics in Medicine and Biology
December 12, 2023
Cited by 11Open Access
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Abstract

Abstract Objectives . This study aims to develop a method for predicting patient-specific head organ doses by training a support vector regression (SVR) model based on radiomics features and graphics processing unit (GPU)-calculated reference doses. Methods . In this study, 237 patients who underwent brain CT scans were selected, and their CT data were transferred to an autosegmentation software to segment head regions of interest (ROIs). Subsequently, radiomics features were extracted from the CT data and ROIs, and the benchmark organ doses were computed using fast GPU-accelerated Monte Carlo (MC) simulations. The SVR organ dose prediction model was then trained using the radiomics features and benchmark doses. For the predicted organ doses, the relative root mean squared error (RRMSE), mean absolute percentage error (MAPE), and coefficient of determination ( R 2 ) were evaluated. The robustness of organ dose prediction was verified by changing the patient samples on the training and test sets randomly. Results . For all head organs, the maximal difference between the reference and predicted dose was less than 1 mGy. For the brain, the organ dose was predicted with an absolute error of 1.3%, and the R 2 reached up to 0.88. For the eyes and lens, the organ doses predicted by SVR achieved an RRMSE of less than 13%, the MAPE ranged from 4.5% to 5.5%, and the R 2 values were more than 0.7. Conclusions . Patient-specific head organ doses from CT examinations can be predicted within one second with high accuracy, speed, and robustness by training an SVR using radiomics features.


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