Efficiently train and validate a RapidPlan model through APQM scoring
Medical Physics2018Vol. 45(6), pp. 2611–2619
Citations Over TimeTop 13% of 2018 papers
Abstract
Forward feeding a RapidPlan model through a thresholding selection based on APQM% is proven to produce equal or better results than a model based on a manually and iteratively refined population. A tighter APQM% threshold turns approximately into a higher average quality of plans generated with RapidPlan. A trade-off must be found between the mean quality of the KBP library and its numerosity. The proposed KBP feeding method helps the KBP user, because it makes the model refinement more intuitive and less time consuming.
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