# Exploring Bioimage Synthesis and Detection via Generative Adversarial Networks: A Multi-Faceted Case Study

**Authors:** Valeria Sorgente, Dante Biagiucci, Mario Cesarelli, Luca Brunese, Antonella Santone, Fabio Martinelli, Francesco Mercaldo

PMC · DOI: 10.3390/jimaging11070214 · 2025-06-27

## TL;DR

This paper explores using GANs to generate and detect synthetic bioimages, showing both potential and limitations in creating realistic biomedical images.

## Contribution

A two-step method combining GAN-based image generation and machine learning-based detection for bioimages is proposed and evaluated.

## Key findings

- Deep Convolutional GANs can generate realistic synthetic bioimages for certain datasets.
- Detection accuracy varies, indicating challenges in generating convincing images for some bioimage types.

## Abstract

Background:Generative Adversarial Networks (GANs), thanks to their great versatility, have a plethora of applications in biomedical imaging with the goal of simulating complex pathological conditions and creating clinical data used for training advanced machine learning models. The ability to generate high-quality synthetic clinical data not only addresses issues related to the scarcity of annotated bioimages but also supports the continuous improvement of diagnostic tools. Method: We propose a two-step method aimed to detect whether a bioimage can be considered fake or real. The first step is related to bioimage generation using a Deep Convolutional GAN, while the second step involves the training and testing of a set of machine learning models aimed to distinguish between real and generated bioimages. Results: We evaluate our approach by exploiting six different datasets. We observe notable results, demonstrating the ability of Deep Convolutional GAN to generate realistic synthetic images for some specific bioimages. However, for other bioimages, the accuracy does not align with the expected trend, indicating challenges in generating images that closely resemble real ones. Conclusions: This study highlights both the potential and limitations of GAN in generating realistic bioimages. Future work will focus on improving generation quality and detection accuracy across different datasets.

## Full-text entities

- **Chemicals:** GAN (-)

## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12295833/full.md

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Source: https://tomesphere.com/paper/PMC12295833