Scientific Data (May 2025)

A Benchmark for Virus Infection Reporter Virtual Staining in Fluorescence and Brightfield Microscopy

  • Maria Wyrzykowska,
  • Gabriel della Maggiora,
  • Nikita Deshpande,
  • Ashkan Mokarian,
  • Artur Yakimovich

DOI
https://doi.org/10.1038/s41597-025-05194-3
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 11

Abstract

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Abstract Detecting virus-infected cells in light microscopy requires a reporter signal commonly achieved by immunohistochemistry or genetic engineering. While classification-based machine learning approaches to the detection of virus-infected cells have been proposed, their results lack the nuance of a continuous signal. Such a signal can be achieved by virtual staining. Yet, while this technique has been rapidly growing in importance, the virtual staining of virus-infected cells remains largely uncharted. In this work, we propose a benchmark and datasets to address this. We collate microscopy datasets, containing a panel of viruses of diverse biology and reporters obtained with a variety of magnifications and imaging modalities. Next, we explore the virus infection reporter virtual staining (VIRVS) task employing U-Net and pix2pix architectures as prototypical regressive and generative models. Together our work provides a comprehensive benchmark for VIRVS, as well as defines a new challenge at the interface of Data Science and Virology.