Development of a GPU-accelerated Monte Carlo dose calculation module for nuclear medicine, ARCHER-NM: Demonstration for a PET/CT imaging procedure
Zhao Peng, Yu Lu, Yao Xu, Yongzhe Li, Bo Cheng, Ming Ni, Zhi Chen, Xi, Pei, Qiang Xie, Shicun Wang, X. George Xu

TL;DR
This paper introduces ARCHER-NM, a GPU-accelerated Monte Carlo dose calculation module for nuclear medicine, validated against GATE, demonstrating rapid, accurate, patient-specific internal dose calculations for PET/CT imaging.
Contribution
The study presents a novel GPU-accelerated Monte Carlo module for nuclear medicine dose calculations, enabling fast, accurate, patient-specific internal dose assessments in clinical PET/CT procedures.
Findings
ARCHER-NM achieves dose calculation results within 0.58% to 4.11% of GATE.
The new module computes dose rates in less than 0.5 minutes, compared to GATE's 376 minutes.
Validation shows excellent agreement with established Monte Carlo code GATE.
Abstract
This paper describes the development and validation of a Monte Carlo (MC) dose computing module dedicated to organ dose calculations of patients undergoing nuclear medicine (NM) internal radiation exposures involving 18F-FDG PET/CT examination. This new module extends the more-than-10-years-long ARCHER project that developed a GPU-accelerated MC dose engine by adding dedicated NM source-definition features. To validate the code, we compared dose distributions from the 0.511-MeV point photon source calculated for a water phantom as well as a patient PET/CT phantom against a well-tested MC code, GATE. The water-phantom results show excellent agreement, suggesting that the radiation physics module in the new NM code is adequate. To demonstrate the clinical utility and advantage of ARCHER-NM, one set of PET/CT data for an adult male NM patient is calculated using the new code.…
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