Journal article
JCO Global Oncology, 2023
APA
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Huynh, L., Taylor, O., Marasco, J. T., Wang, S., & Baine, M. (2023). Diagnostic performance of a novel radiomic model for predicting post-treatment prostate cancer recurrence: A comparison to CAPRA and MSKCC nomograms. JCO Global Oncology.
Chicago/Turabian
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Huynh, L., Olivia Taylor, Jacob T Marasco, Shuo Wang, and M. Baine. “Diagnostic Performance of a Novel Radiomic Model for Predicting Post-Treatment Prostate Cancer Recurrence: A Comparison to CAPRA and MSKCC Nomograms.” JCO Global Oncology (2023).
MLA
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Huynh, L., et al. “Diagnostic Performance of a Novel Radiomic Model for Predicting Post-Treatment Prostate Cancer Recurrence: A Comparison to CAPRA and MSKCC Nomograms.” JCO Global Oncology, 2023.
BibTeX Click to copy
@article{l2023a,
title = {Diagnostic performance of a novel radiomic model for predicting post-treatment prostate cancer recurrence: A comparison to CAPRA and MSKCC nomograms.},
year = {2023},
journal = {JCO Global Oncology},
author = {Huynh, L. and Taylor, Olivia and Marasco, Jacob T and Wang, Shuo and Baine, M.}
}
76 Background: mpMRI-derived radiomic features have been shown to capture sub-visual patterns for quantitative characterization of tumor phenotype. We seek to compare the diagnostic performance of a mpMRI-based radiomic model to currently available nomograms for prediction of post-radical prostatectomy (RP) biochemical recurrence (BCR). Methods: mpMRI was obtained from 76 patients who had underwent RP for treatment of localized PCa. All patients had ≥2 years follow-up and those with neo-adjuvant or adjuvant treatment were excluded. Radiomic analysis and cross-validation of mpMRI features yielded features significantly correlated with BCR, defined as two consecutive serum PSA≥0.2ng/ml. These features were aggregated to construct a radiomic model, which was compared to the risk scores generated by inputting patients’ clinicodemographic features into the USCF Cancer of the Prostate Risk Assessment (UCSF-CAPRA) score and Memorial Sloan Kettering Cancer Center (MSKCC) Pre-Radical Prostatectomy nomogram. The performance of each model was compared utilizing receiver-operator curve (ROC) analysis and area under the curve (AUC) was reported. Results: In feature extraction and ranking, six radiomic features were determined to be important and non-redundant in predicting PCa recurrence (least material condition, gray-level non-uniformity, shape-elongation, shape-sphericity, first-order skewness). These features were aggregated into the radiomic model and repeated five-fold cross validation yielded a model with AUC of 0.95±0.06, 33% sensitivity, and 100% specificity. UCSF-CAPRA and MSKCC nomograms yielded AUC of 0.72±0.07 and 0.82±0.07, respectively. Conclusions: The mpMRI-derived radiomic model performed well when compared to the UCSF-CAPRA score and MSKCC Pre-Radical Prostatectomy nomogram. Future projects will incorporate patient demographics and disease characteristics available at the time of initial PCa diagnosis to improve the radiomic model accuracy.