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Publication Type : Journal Article
Publisher : Elsevier BV
Source : Physica Medica
Url : https://doi.org/10.1016/j.ejmp.2025.105711
Keywords : Phantom QA, CBCT, Setup error prediction, Machine learning, Radiotherapy imaging, Random forest, Patient positioning
Campus : Faridabad
School : School of Medicine
Year : 2026
Abstract : Purpose
 This study investigates whether machine learning models trained exclusively on RUBY phantom shift data from CBCT and kV/MV imaging can accurately predict daily patient setup shifts in Head & Neck radiotherapy.
 
 Methods
 A total of 12,600 matched imaging fractions from Head & Neck treatments were analysed, each comprising six input features (shifts in X, Y, Z from CBCT and kV/MV imaging) and three output variables (X, Y, Z patient shifts relative to planning CT). Eight regression models were evaluated: Random Forest, AdaBoost, Gradient Boosting, XGBoost, LightGBM, K-Nearest Neighbors, Support Vector Regressor, and Multilayer Perceptron. Performance metrics included mean absolute error (MAE), root mean square error (RMSE),coefficient of determination (R2),and prediction accuracy within ±0.5 mm and ±1 mm.
 
 Results
 The Random Forest, XGBoost, and LightGBM models achieved the best performance, each with MAE ≈ 0.254 mm, RMSE ≈ 0.510 mm, and R2 ≈ 0.79 across all axes. These models also achieved mean accuracies of 87.9 % within ±0.5 mm and 93.6 % within ±1 mm. Ensemble tree-based methods outperformed other approaches, with AdaBoost showing the lowest accuracy. Feature importance analysis identified CBCT Y and Z phantom shifts as the strongest predictors, reflecting the superior geometric fidelity of volumetric imaging in capturing translational deviations. CBCT-derived features contributed the majority of predictive power, particularly in lateral and longitudinal directions, while kV/MV shifts had relatively lower influence.
 
 Conclusion
 Phantom-based machine learning models can accurately predict daily setup deviations in Head & Neck radiotherapy with submillimetre precision. This approach could enhance adaptive workflows, support selective imaging protocols, and enable automated pre-treatment verification, thereby improving both treatment efficiency and patient safety.
Cite this Research Publication : Anuj Kumar, Sandeep Singh, Supratik Sen, Abhay Kumar Singh, Dipesh, Benoy Kumar Singh, Manindra Bhushan, Soniya Pal, Munish Gairola, Predicting patient setup shifts in daily radiotherapy using machine learning on phantom-based CBCT and kV/MV data, Physica Medica, Elsevier BV, 2026, https://doi.org/10.1016/j.ejmp.2025.105711