optiGAN: A Deep Learning-Based Alternative to Optical Photon Tracking in Python-Based GATE (10+).
Authors
Affiliations (5)
Affiliations (5)
- Department of Computer Science, University of California Davis, GBSF 451 Health Sciences Dr, Davis, California, 95616-5270, UNITED STATES.
- University of California Davis, GBSF 451 Health Sciences Dr, Davis, California, 95616-5270, UNITED STATES.
- CREATIS, CNRS, 7 Avenue Jean Capelle, Batiment Blaise Pascal, Villeurbanne, 69621, FRANCE.
- Centre Léon Bérard, CREATIS, 28 rue Laënnec, LYON, 69373, FRANCE.
- Department of Biomedical Engineering, University of California Davis, One Shields Avenue, Davis, CA 95616, Davis, California, 95616-5270, UNITED STATES.
Abstract
To accelerate optical photon transport simulations in the GATE medical physics framework using a Generative Adversarial Network (GAN), while ensuring high modeling accuracy. Traditionally, detailed optical Monte Carlo methods have been the gold standard for modeling photon interactions in detectors, but their high computational cost remains a challenge. This study explores the integration of optiGAN, a Generative Adversarial Network (GAN) model into GATE 10, the new Python-based version of the GATE medical physics simulation framework released in November 2024.
Approach: The goal of optiGAN is to accelerate optical photon transport simulations while maintaining modelling accuracy. The optiGAN model, based on a GAN architecture, was integrated into GATE 10 as a computationally efficient alternative to traditional optical Monte Carlo simulations. To ensure consistency, optical photon transport modules were implemented in GATE 10 and validated against GATE v9.3 under identical simulation conditions. Subsequently, simulations using full Monte Carlo tracking in GATE 10 were compared to those using GATE 10-optiGAN.
Main results: Validation studies confirmed that GATE 10 produces results consistent with GATE v9.3. Simulations using GATE 10-optiGAN showed over 92% similarity to Monte Carlo-based GATE 10 results, based on the Jensen-Shannon distance across multiple photon transport parameters. optiGAN successfully captured multimodal distributions of photon position, direction, and energy at the photodetector face. Simulation time analysis revealed a reduction of approximately 50% in execution time with GATE 10-optiGAN compared to full Monte Carlo simulations.
Significance: The study confirms both the fidelity of optical photon transport modeling in GATE 10 and the effective integration of deep learning-based acceleration through optiGAN. This advancement enables large-scale, high-fidelity optical simulations with significantly reduced computational cost, supporting broader applications in medical imaging and detector design.