Affiliation:
1. The Affiliated Cancer Hospital of Nanjing Medical University & Jiangsu Institute of Cancer Research & Jiangsu Cancer Hospital Nanjing China
Abstract
AbstractBackgroundBreast 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‐hundred forty‐two breast cancer patients were retrospectively enrolled for this study, all of whom received postoperative intensity modulated radiation therapy. The patients were randomized into a training set and a validation set at a ratio of 7:3. Radiomics shape features were extracted for eight machine learning algorithms to predict the number of fields. Univariate and multivariable logistic regression were implemented to screen clinical factors. A combined model of rad‐score and clinical factors were finally constructed. The area under receiver operating characteristic curve, precision, recall, F1 measure and accuracy were used to evaluate the model.ResultsRandom Forest outperformed from eight machine learning algorithms while predicting the number of fields. Prediction performance of the radiomics model was better than the clinical model, while the predictive nomogram combining the rad‐score and clinical factors performed the best.ConclusionsThe model combining rad‐score and clinical factors performed the best. Nomograms constructed from the combined models can be of reliable references for medical dosimetrists.
Funder
National Natural Science Foundation of China
China Postdoctoral Science Foundation
Subject
Radiology, Nuclear Medicine and imaging,Instrumentation,Radiation