Brain tumor segmentation using holistically nested neural networks in MRI images
Medical Physics2017Vol. 44(10), pp. 5234–5243
Citations Over TimeTop 10% of 2017 papers
Ying Zhuge, Andra Krauze, Holly Ning, Jason Cheng, Barbara Arora, Kevin Camphausen, Robert W. Miller
Abstract
An effective brain tumor segmentation method for MRI images based on a HNN has been developed. The high level of accuracy and efficiency make this method practical in brain tumor segmentation. It may play a crucial role in both brain tumor diagnostic analysis and in the treatment planning of radiation therapy.
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