Improving CBCT quality to CT level using deep learning with generative adversarial network
Medical Physics2020Vol. 48(6), pp. 2816–2826
Citations Over TimeTop 10% of 2020 papers
Abstract
The proposed deep learning algorithm is promising to improve CBCT image quality in an efficient way, thus has a potential to support online CBCT-based adaptive radiotherapy.
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