# Parameter-optimized generative adversarial network framework for synthetic MRI generation: fine-tuning critical variables for enhanced image fidelity

**Authors:** Anto Lourdu Xavier Raj Arockia Selvarathinam, Naveenkumar Anbalagan, Parvathaneni Naga Srinivasu, Jaeyoung Choi, Muhammad Fazal Ijaz

PMC · DOI: 10.3389/fmed.2025.1731370 · 2026-02-03

## TL;DR

This paper introduces a new GAN framework for generating synthetic MRI images with improved quality and realism by optimizing key parameters.

## Contribution

The novel POP-GAN framework combines progressive training and optimized hyperparameters for enhanced synthetic MRI generation.

## Key findings

- POP-GAN reduced MSE by 27% and improved PSNR and FID compared to baseline models.
- cGAN showed the best reconstruction accuracy with the lowest MAE.
- POP-GAN achieved a high clinical realism score of 4.13 out of 5.

## Abstract

The availability of large-scale medical imaging datasets is often constrained by privacy regulations, high acquisition costs, and ethical concerns. Synthetic medical image generation using generative adversarial networks (GANs) offers a promising solution to overcome these limitations. This study investigates the effectiveness of a Parameter-Optimized Generative Adversarial Network (POP-GAN) and compares its performance with state-of-the-art architectures, including StyleGAN2, multi-stream GAN (mustGAN), and Conditional GAN (cGAN), for realistic MRI image synthesis.

The proposed framework integrates progressive growing strategies with optimized hyperparameters, including a batch size of 256, learning rate of 1 × 10−4, dropout rate of 0.3, and a buffer size of 6,000. All models were trained to generate MRI images at a resolution of 128 × 128. Performance was evaluated using quantitative metrics such as Mean Squared Error (MSE), Mean Absolute Error (MAE), Peak Signal-to-Noise Ratio (PSNR), and Fréchet Inception Distance (FID), along with expert-based clinical realism scoring.

POP-GAN demonstrated a 27% reduction in MSE compared with the baseline model (from 6.58 × 10−3 to 4.81 × 10−3), achieved higher PSNR, and reduced FID from 32.91 to 24.36. cGAN achieved the lowest MAE (3.50 × 10−3), indicating superior reconstruction accuracy. mustGAN produced the strongest resolution fidelity, while StyleGAN2 delivered the highest perceptual realism. POP-GAN also attained a clinical realism score of 4.13 out of 5.

The results demonstrate that parameter optimization and progressive training substantially enhance synthetic MRI quality. POP-GAN provides a balanced trade-off between reconstruction accuracy, perceptual realism, and clinical relevance, supporting its potential for privacy-preserving dataset augmentation and robust medical imaging research.

## Full-text entities

- **Genes:** IGKV5-2 (immunoglobulin kappa variable 5-2) [NCBI Gene 28907] {aka B2, IGKV52}, GAN (gigaxonin) [NCBI Gene 8139] {aka GAN1, GIG, KLHL16}
- **Diseases:** AD (MESH:D000544), Cancer (MESH:D009369), caries (MESH:D003731), prostate cancer (MESH:D011471), malignant melanoma (MESH:D008545), autism spectrum disorder (MESH:D000067877), rare disease (MESH:D035583), CRS (MESH:D000075902), MS (MESH:D009103), cGAN (MESH:D056768), cognitive disorders (MESH:D003072), GANs (MESH:D004829), brain tumor (MESH:D001932), musculoskeletal diseases (MESH:D009140), SSIM (MESH:D020914), lesion (MESH:D009059), dementia (MESH:D003704), ankylosing spondylitis (MESH:D013167)
- **Chemicals:** StyleGAN2 (-)
- **Species:** Pseudomonas sp. NS (species) [taxon 516999], Homo sapiens (human, species) [taxon 9606], Litchi chinensis (litchi, species) [taxon 151069]

## Figures

11 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12909214/full.md

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Source: https://tomesphere.com/paper/PMC12909214