ML Models Built Using Clinical Parameters and Radiomic Features Extracted from 18F-Choline PET/CT for the Prediction of Biochemical Recurrence after Metastasis-Directed Therapy in Patients with Oligometastatic Prostate Cancer

Author:

Urso Luca12ORCID,Cittanti Corrado12ORCID,Manco Luigi3ORCID,Ortolan Naima12ORCID,Borgia Francesca12ORCID,Malorgio Antonio4,Scribano Giovanni5ORCID,Mastella Edoardo3ORCID,Guidoboni Massimo16,Stefanelli Antonio4ORCID,Turra Alessandro3,Bartolomei Mirco2

Affiliation:

1. Department of Translational Medicine, University of Ferrara, 44121 Ferrara, Italy

2. Nuclear Medicine Unit, Onco-Hematology Department, University Hospital of Ferrara, 44124 Ferrara, Italy

3. Medical Physics Unit, University Hospital of Ferrara, 44124 Ferrara, Italy

4. U.O.C. Radiotherapy, University Hospital of Ferrara, 44124 Ferrara, Italy

5. Department of Physics and Earth Science, University of Ferrara, 44121 Ferrara, Italy

6. U.O.C. Clinical Oncology, University Hospital of Ferrara, 44124 Ferrara, Italy

Abstract

Oligometastatic patients at [18F]F-Fluorocholine (18F-choline) PET/CT may be treated with metastasis-directed therapy (MDT). The aim of this study was to combine radiomic parameters extracted from 18F-choline PET/CT and clinical data to build machine learning (ML) models able to predict MDT efficacy. Methods: Oligorecurrent patients (≤5 lesions) at 18F-choline PET/CT and treated with MDT were collected. A per-patient and per-lesion analysis was performed, using 2-year biochemical recurrence (BCR) after MDT as the standard of reference. Clinical parameters and radiomic features (RFts) extracted from 18F-choline PET/CT were used for training five ML Models for both CT and PET images. The performance metrics were calculated (i.e., Area Under the Curve—AUC; Classification Accuracy—CA). Results: A total of 46 metastases were selected and segmented in 29 patients. BCR after MDT occurred in 20 (69%) patients after 2 years of follow-up. In total, 73 and 33 robust RFTs were selected from CT and PET datasets, respectively. PET ML Models showed better performances than CT Models for discriminating BCR after MDT, with Stochastic Gradient Descent (SGD) being the best model (AUC = 0.95; CA = 0.90). Conclusion: ML Models built using clinical parameters and CT and PET RFts extracted via 18F-choline PET/CT can accurately predict BCR after MDT in oligorecurrent PCa patients. If validated externally, ML Models could improve the selection of oligorecurrent PCa patients for treatment with MDT.

Publisher

MDPI AG

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