Forensic Analysis of Synthetically Generated Western Blot Images
Sara Mandelli, Davide Cozzolino, Edoardo D. Cannas, Joao P. Cardenuto,, Daniel Moreira, Paolo Bestagini, Walter J. Scheirer, Anderson Rocha, Luisa, Verdoliva, Stefano Tubaro, Edward J. Delp

TL;DR
This paper introduces a new dataset and detection methods for identifying synthetically generated western blot images, demonstrating effective detection even under post-processing conditions.
Contribution
It provides the first large-scale dataset of real and synthetic western blot images and evaluates detection strategies without training on synthetic data, advancing forensic analysis in biomedical imaging.
Findings
Synthetic western blot images can be detected with high accuracy.
Detection robustness is maintained against JPEG compression.
Some generative models leave identifiable artifacts despite editing.
Abstract
The widespread diffusion of synthetically generated content is a serious threat that needs urgent countermeasures. As a matter of fact, the generation of synthetic content is not restricted to multimedia data like videos, photographs or audio sequences, but covers a significantly vast area that can include biological images as well, such as western blot and microscopic images. In this paper, we focus on the detection of synthetically generated western blot images. These images are largely explored in the biomedical literature and it has been already shown they can be easily counterfeited with few hopes to spot manipulations by visual inspection or by using standard forensics detectors. To overcome the absence of publicly available data for this task, we create a new dataset comprising more than 14K original western blot images and 24K synthetic western blot images, generated using four…
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