Estimating the optimal time to perform a PET-PSMA exam in prostatectomized patients based on data from clinical practice
Martina Amongero, Gianluca Mastrantonio, Stefano De Luca, Mauro, Gasparini

TL;DR
This paper introduces a hierarchical Bayesian model to determine the optimal timing for PET-PSMA scans in prostatectomized patients, aiming to improve decision-making and reduce unnecessary costs and risks.
Contribution
It presents a novel Bayesian approach that jointly models PSA growth and PET-PSMA positivity to estimate the best timing for the exam based on patient data.
Findings
Model accurately predicts optimal scan timing
Reduces unnecessary PET-PSMA exams
Improves patient monitoring strategies
Abstract
Prostatectomized patients are at risk of resurgence, and for this reason, during a follow-up period, they are monitored for Prostate Specific Antigen (PSA) growth, an indicator of tumor progression. The presence of tumors can be evaluated with an expensive exam, called Positron Emission Tomography with Prostate-Specific Membrane Antigen (PET-PSMA). To justify the high cost of the PET-PSMA and, at the same time, to contain the risk for the patient, this exam should be recommended only when the evidence of tumor progression is strong. With the aim of estimating the optimal time to recommend the exam based on the patient's history and collected data, we build a hierarchical Bayesian model that describes, jointly, the PSA growth curve and the probability of a positive PET-PSMA. With our proposal we process all past and present information about the patients PSA measurement and PET-PSMA…
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Taxonomy
TopicsProstate Cancer Treatment and Research · Prostate Cancer Diagnosis and Treatment · Statistical Methods in Clinical Trials
