Publication | Closed Access
Learning the relationship between patient geometry and beam intensity in breast intensity-modulated radiotherapy
13
Citations
30
References
2006
Year
Artificial IntelligenceBreast Intensity-modulated RadiotherapyEngineeringMachine LearningExpert Radiation PlannersTreatment VerificationImrt Optimization ParametersData ScienceRadiation Therapy PlanningBeam IntensityImrt Planning ProcessRadiation OncologyRadiologyAdaptive RadiotherapyRadiation TherapyMedical ImagingPredictive AnalyticsDeep LearningMedical Image ComputingBreast CancerComputer-aided DiagnosisPatient GeometryMedicineMedical Image Analysis
Intensity modulated radiotherapy (IMRT) has become an effective tool for cancer treatment with radiation. However, even expert radiation planners still need to spend a substantial amount of time adjusting IMRT optimization parameters in order to get a clinically acceptable plan. We demonstrate that the relationship between patient geometry and radiation intensity distributions can be automatically inferred using a variety of machine learning techniques in the case of two-field breast IMRT. Our experiments show that given a small number of human-expert-generated clinically acceptable plans, the machine learning predictions produce equally acceptable plans in a matter of seconds. The machine learning approach has the potential for greater benefits in sites where the IMRT planning process is more challenging or tedious.
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