Machine Learning methods for Quantitative Radiomic Biomarkers
Publication year
2015Source
Scientific Reports, 5, (2015), article 13087ISSN
Publication type
Article / Letter to editor
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Organization
Radiation Oncology
Journal title
Scientific Reports
Volume
vol. 5
Subject
Radboudumc 9: Rare cancers RIHS: Radboud Institute for Health SciencesAbstract
Radiomics extracts and mines large number of medical imaging features quantifying tumor phenotypic characteristics. Highly accurate and reliable machine-learning approaches can drive the success of radiomic applications in clinical care. In this radiomic study, fourteen feature selection methods and twelve classification methods were examined in terms of their performance and stability for predicting overall survival. A total of 440 radiomic features were extracted from pre-treatment computed tomography (CT) images of 464 lung cancer patients. To ensure the unbiased evaluation of different machine-learning methods, publicly available implementations along with reported parameter configurations were used. Furthermore, we used two independent radiomic cohorts for training (n = 310 patients) and validation (n = 154 patients). We identified that Wilcoxon test based feature selection method WLCX (stability = 0.84 +/- 0.05, AUC = 0.65 +/- 0.02) and a classification method random forest RF (RSD = 3.52%, AUC = 0.66 +/- 0.03) had highest prognostic performance with high stability against data perturbation. Our variability analysis indicated that the choice of classification method is the most dominant source of performance variation (34.21% of total variance). Identification of optimal machine-learning methods for radiomic applications is a crucial step towards stable and clinically relevant radiomic biomarkers, providing a non-invasive way of quantifying and monitoring tumor-phenotypic characteristics in clinical practice.
This item appears in the following Collection(s)
- Academic publications [242560]
- Electronic publications [129511]
- Faculty of Medical Sciences [92283]
- Open Access publications [104133]
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