Deep Learning for Classifying Anti-Shigella Opsono- Phagocytosis-Promoting Monoclonal Antibodies
Abstract: Shigellosis is an acute small intestine infection caused by different species of Shigella. Worldwide, the emergence of antibiotic-resistant strains aggravates the impact of Shigella infections. In this context, human monoclonal antibodies (mAbs) offer an alternative to traditional antimicrobials. However, identifying a potent candidate mAb requires intense and meticulous efforts. Here, we show the potential of Deep Learning to screen mAbs rapidly. We measured the phagocytosis-promoting activity of mAbs by analyzing images collected with a high-throughput and high-content confocal fluorescence microscope. We acquired images of S. sonnei and S. flexneri infecting THP-1-derived macrophages and evaluated the effect of different mAbs and of a wide selection of Deep Learning tools. We found that our model can generalize on strains and mAbs not encountered in training. Importantly, our approach enables the screening and characterization of multiple anti-Shigella mAbs at the same time, facilitating the identification of potent antibacterial candidates. Our code is available on the GitHub repository vOPA_Shigella.
Citation:
Pianfetti, Elena; Cardamone, Dario; Roscioli, Emanuele; Ciano, Giorgio; Maccari, Giuseppe; Sala, Claudia; Micoli, Francesca; Rappuoli, Rino; Medini, Duccio; Ficarra, Elisa "Deep Learning for Classifying Anti-Shigella Opsono- Phagocytosis-Promoting Monoclonal Antibodies" MICCAI conference - workshop "Medical Optical Imaging and Virtual Microscopy Image Analysis", vol. 15371 LNCS, Marrakesh - Marocco, pp. 25 -35 , 10 Ottobre 2024, 2025 DOI: 10.1007/978-3-031-77786-8_3not available