Objective risk stratification of prostate cancer using machine learning and radiomics applied to multiparametric magnetic resonance images.
Bino Abel VargheseFrank ChenDarryl HwangSuzanne L PalmerAndre Luis De Castro AbreuOsamu UkimuraMonish AronManju AronInderbir GillVinay DuddalwarGaurav PandeyPublished in: Scientific reports (2019)
Multiparametric magnetic resonance imaging (mpMRI) has become increasingly important for the clinical assessment of prostate cancer (PCa), but its interpretation is generally variable due to its relatively subjective nature. Radiomics and classification methods have shown potential for improving the accuracy and objectivity of mpMRI-based PCa assessment. However, these studies are limited to a small number of classification methods, evaluation using the AUC score only, and a non-rigorous assessment of all possible combinations of radiomics and classification methods. This paper presents a systematic and rigorous framework comprised of classification, cross-validation and statistical analyses that was developed to identify the best performing classifier for PCa risk stratification based on mpMRI-derived radiomic features derived from a sizeable cohort. This classifier performed well in an independent validation set, including performing better than PI-RADS v2 in some aspects, indicating the value of objectively interpreting mpMRI images using radiomics and classification methods for PCa risk assessment.
Keyphrases
- deep learning
- prostate cancer
- machine learning
- contrast enhanced
- magnetic resonance imaging
- magnetic resonance
- risk assessment
- lymph node metastasis
- convolutional neural network
- radical prostatectomy
- physical activity
- human health
- squamous cell carcinoma
- optical coherence tomography
- computed tomography
- climate change