A deep learning model to predict dose–volume histograms of organs at risk in radiotherapy treatment plans
Medical Physics2020Vol. 47(11), pp. 5467–5481
Citations Over TimeTop 10% of 2020 papers
Abstract
A deep learning model was developed for predicting achievable DVHs of OARs. The prediction accuracy of the CResDevNet model was evaluated using a planning database of nasopharyngeal cancer cases and shown to be more accurate than the UNet model. Prediction accuracy was also higher for larger-volume OARs. The model can be used for automation of inverse planning and quality assessment of individual treatment plans.
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