Forecasting per-patient dosimetric benefit from daily online adaptive radiotherapy for cervical cancer
Abstract
Adaptive Radiotherapy (ART) is an emerging technique for treating cancer patients which facilitates higher delivery accuracy and has the potential to reduce toxicity. However, ART is also resource-intensive, requiring extra human and machine time compared to standard treatment methods. In this analysis, we sought to predict the subset of node-negative cervical cancer patients who benefit the most from ART. CT images, initial plan data, and on-treatment Cone-Beam CT (CBCT) images for 20 retrospective cervical cancer patients were used to simulate doses from daily non-adaptive and adaptive techniques. We evaluated the correlation (R2) between dose and volume metrics from initial treatment plans and the dosimetric benefits to the Bowel V40Gy, Bowel V45Gy, Bladder Dmean, and Rectum Dmean from adaptive radiotherapy using reduced 3mm or 5mm CTV-to-PTV margins. The LASSO technique was used to identify the most predictive metrics for Bowel V40Gy. The three highest performing metrics were used to build multivariate models with leave-one-out validation for Bowel V40Gy. Patients with higher initial bowel doses were correlated with the largest decreases in Bowel V40Gy from daily adaptation (linear best fit R2=0.77 for a 3mm PTV margin and R2=0.8 for a 5mm PTV margin). Other metrics had intermediate or no correlation. Selected covariates for the multivariate model were differences in the initial Bowel V40Gy. and Bladder Dmean using standard versus reduced margins and the initial bladder volume. Leave-one-out validation had an R2 of 0.66 between the predicted and true adaptive Bowel V40Gy benefits for both margins. This work could be used to prospectively triage cervical cancer patients, and presents a critical foundation for predicting benefits from daily adaptation that can be extended to other patient cohorts.
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