End-to-end plaque counting and virus titration from laboratory plate images with deep learning
Eugenia Moris, Alicia Cost\'abile, Sebasti\'an Rey, Irene Ferreiro, Joaqu\'in Hurtado, Lizandra Lissette Luciano, Mat\'ias Villagr\'an, Aisha Espino V\'azquez, Jomari Ramos, Isadora Monteiro, Mar\'ia Victoria de Santiago, Pilar Moreno, Gonzalo Moratorio

TL;DR
This paper introduces an end-to-end deep learning workflow for automated plaque counting and virus titration from laboratory plate images, reducing manual effort and variability.
Contribution
It combines two SAM-based models for well segmentation and plaque detection, providing a scalable, accurate, and open-source solution for plaque assay analysis.
Findings
High correlation with manual annotations (Pearson 0.92 and 0.88)
Generalizes across different viruses and plate formats
Automates plaque counting and PFU/mL calculation
Abstract
Plaque assays remain the gold standard readout of virus infectivity; however, plaque counting from plate images is labor-intensive and prone to inter-operator variability. We present an end-to-end, computer-aided workflow for cytopathic effect-based virus titration directly from laboratory plaque assay images. The proposed approach combines two models derived from the Segment Anything Model (SAM): a SAM2-based well-segmentation module that localizes assay wells across heterogeneous imaging conditions, and a SAM-based plaque-segmentation model that detects and enumerates plaques within each well. The method was evaluated on a mixed dataset comprising private plaque assay images of Mayaro virus and Coxsackievirus B3, together with public Vaccinia virus images from the VACVPlaque dataset. The pipeline outputs per-well plaque counts, automatically computes plaque-forming units per…
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