2023
DOI: 10.1002/acm2.14194
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Machine learning‐based radiomics nomograms to predict number of fields in postoperative IMRT for breast cancer

Yichen Mao,
Wenyi Di,
Dan Zong
et al.

Abstract: BackgroundBreast cancer is now the most commonly diagnosed cancer in women worldwide. Radiotherapy is an important part of the treatment for breast cancer, while setting proper number of fields dramatically affects the benefits one can receive. Machine learning and radiomics have been widely investigated in the management of breast cancer. This study aims to provide models to predict the best number of fields based on machine learning and improve the prediction performance by adding clinical factors.MethodsTwo… Show more

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