DosimeTron: Automating Personalized Monte Carlo Radiation Dosimetry in PET/CT with Agentic AI
Eleftherios Tzanis, Michail E. Klontzas, Antonios Tzortzakakis

TL;DR
DosimeTron is an agentic AI system that automates personalized Monte Carlo radiation dosimetry in PET/CT scans, achieving high accuracy and efficiency in a retrospective study.
Contribution
This work introduces DosimeTron, integrating GPT-5.2 and multiple tools to fully automate patient-specific dosimetry workflows in PET/CT imaging.
Findings
No errors or hallucinations during execution.
High dosimetric accuracy with Pearson's r up to 1.000.
Processing time around 32 minutes per study.
Abstract
Purpose: To develop and evaluate DosimeTron, an agentic AI system for automated patient-specific MC internal radiation dosimetry in PET/CT examinations. Materials and Methods: In this retrospective study, DosimeTron was evaluated on a publicly available PSMA-PET/CT dataset comprising 597 studies from 378 male patients acquired on three scanner models (18-F, n = 369; 68-Ga, n = 228). The system uses GPT-5.2 as its reasoning engine and 23 tools exposed via four Model Context Protocol servers, automating DICOM metadata extraction, image preprocessing, MC simulation, organ segmentation, and dosimetric reporting through natural-language interaction. Agentic performance was assessed using diverse prompt templates spanning single-turn instructions of varying specificity and multi-turn conversational exchanges, monitored via OpenTelemetry traces. Dosimetric accuracy was validated against…
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