期刊
RADIOTHERAPY AND ONCOLOGY
卷 129, 期 2, 页码 218-226出版社
ELSEVIER IRELAND LTD
DOI: 10.1016/j.radonc.2018.06.025
关键词
Unsupervised machine learning; Radiomics; Non-small cell lung cancer; Stereotactic body radiation therapy
资金
- National Institutes of Health [CA223358, CA189523, EB022573, DK114786, DA039215, DA039002]
- Precision Lung Radiotherapy Grant of the University of Pennsylvania
Background and purpose: To predict treatment response and survival of NSCLC patients receiving stereotactic body radiation therapy (SBRT), we develop an unsupervised machine learning method for stratifying patients and extracting meta-features simultaneously based on imaging data. Material and methods: This study was performed based on an F-18-FDG-PET dataset of 100 consecutive patients who were treated with SBRT for early stage NSCLC. Each patient's tumor was characterized by 722 radiomic features. An unsupervised two-way clustering method was used to identify groups of patients and radiomic features simultaneously. The groups of patients were compared in terms of survival and freedom from nodal failure. Meta-features were computed for building survival models to predict survival and free of nodal failure. Results: Differences were found between 2 groups of patients when the patients were clustered into 3 groups in terms of both survival (p = 0.003) and freedom from nodal failure (p = 0.038). Average concordance measures for predicting survival and nodal failure were 0.640 +/- 0.029 and 0.664 +/- 0.063 respectively, better than those obtained by prediction models built upon clinical variables (p < 0.04). Conclusions: The evaluation results demonstrate that our method allows us to stratify patients and predict survival and freedom from nodal failure with better performance than current alternative methods. (C) 2018 Elsevier B.V. All rights reserved.
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