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Machine learning-based analysis of [18F]DCFPyL PET radiomics for risk stratification in primary prostate cancer

Authors :
André N. Vis
Tim van de Brug
Elisabeth Pfaehler
Daniela E. Oprea-Lager
Matthijs C.F. Cysouw
B.H.E. Jansen
Ronald Boellaard
Reindert J.A. van Moorselaar
Otto S. Hoekstra
Bart M. de Vries
Radiology and nuclear medicine
Urology
APH - Methodology
Epidemiology and Data Science
CCA - Imaging and biomarkers
Amsterdam Neuroscience - Brain Imaging
Source :
European Journal of Nuclear Medicine and Molecular Imaging, Cysouw, M C F, Jansen, B H E, van de Brug, T, Oprea-Lager, D E, Pfaehler, E, de Vries, B M, van Moorselaar, R J A, Hoekstra, O S, Vis, A N & Boellaard, R 2021, ' Machine learning-based analysis of [18F]DCFPyL PET radiomics for risk stratification in primary prostate cancer ', European Journal of Nuclear Medicine and Molecular Imaging, vol. 48, no. 2, pp. 340-349 . https://doi.org/10.1007/s00259-020-04971-z, European Journal of Nuclear Medicine and Molecular Imaging, 48(2), 340-349. Springer Verlag, European Journal of Nuclear Medicine and Molecular Imaging, 48(2), 340-349. SPRINGER
Publication Year :
2020
Publisher :
Springer Science and Business Media LLC, 2020.

Abstract

Purpose Quantitative prostate-specific membrane antigen (PSMA) PET analysis may provide for non-invasive and objective risk stratification of primary prostate cancer (PCa) patients. We determined the ability of machine learning-based analysis of quantitative [18F]DCFPyL PET metrics to predict metastatic disease or high-risk pathological tumor features. Methods In a prospective cohort study, 76 patients with intermediate- to high-risk PCa scheduled for robot-assisted radical prostatectomy with extended pelvic lymph node dissection underwent pre-operative [18F]DCFPyL PET-CT. Primary tumors were delineated using 50–70% peak isocontour thresholds on images with and without partial-volume correction (PVC). Four hundred and eighty standardized radiomic features were extracted per tumor. Random forest models were trained to predict lymph node involvement (LNI), presence of any metastasis, Gleason score ≥ 8, and presence of extracapsular extension (ECE). For comparison, models were also trained using standard PET features (SUVs, volume, total PSMA uptake). Model performance was validated using 50 times repeated 5-fold cross-validation yielding the mean receiver-operator characteristic curve AUC. Results The radiomics-based machine learning models predicted LNI (AUC 0.86 ± 0.15, p p p p Conclusion Machine learning-based analysis of quantitative [18F]DCFPyL PET metrics can predict LNI and high-risk pathological tumor features in primary PCa patients. These findings indicate that PSMA expression detected on PET is related to both primary tumor histopathology and metastatic tendency. Multicenter external validation is needed to determine the benefits of using radiomics versus standard PET metrics in clinical practice.

Details

ISSN :
16197089 and 16197070
Volume :
48
Database :
OpenAIRE
Journal :
European Journal of Nuclear Medicine and Molecular Imaging
Accession number :
edsair.doi.dedup.....408e32c6e817471f33fc434cb2b574ec
Full Text :
https://doi.org/10.1007/s00259-020-04971-z