Publication | Closed Access
Contextual Atlas Regression Forests: Multiple-Atlas-Based Automated Dose Prediction in Radiation Therapy
86
Citations
45
References
2015
Year
Adaptive RadiotherapyRadiation OncologyEngineeringMachine LearningMedical ImagingRadiation TherapyDeep LearningRadiomicsStatistical InferenceRadiation Therapy PlanningCancer TreatmentMedical Image ComputingMedicineMedical Image AnalysisRegression ForestsNuclear MedicineRadiology
Radiation therapy is an integral part of cancer treatment, but to date it remains highly manual. Plans are created through optimization of dose volume objectives that specify intent to minimize, maximize, or achieve a prescribed dose level to clinical targets and organs. Optimization is NP-hard, requiring highly iterative and manual initialization procedures. We present a proof-of-concept for a method to automatically infer the radiation dose directly from the patient's treatment planning image based on a database of previous patients with corresponding clinical treatment plans. Our method uses regression forests augmented with density estimation over the most informative features to learn an automatic atlas-selection metric that is tailored to dose prediction. We validate our approach on 276 patients from 3 clinical treatment plan sites (whole breast, breast cavity, and prostate), with an overall dose prediction accuracies of 78.68%, 64.76%, 86.83% under the Gamma metric.
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