HoloStain: Holographic virtual staining of individual biological cells
Yoav N. Nygate, Mattan Levi, Simcha K. Mirsky, Nir A. Turko, Moran, Rubin, Itay Barnea, Gili Dardikman-Yoffe, Alon Shalev, Natan T. Shaked

TL;DR
HoloStain is a deep learning method that virtually stains unstained biological cells from holographic images, enabling non-invasive cell analysis and potentially transforming clinical procedures like IVF.
Contribution
The paper introduces HoloStain, a novel deep-learning approach that converts unstained holographic cell images into virtually stained images, eliminating the need for chemical staining.
Findings
5-fold increase in sensitivity for cell analysis
Validated by expert blinded assessment
Potential to replace traditional staining in clinical settings
Abstract
Many medical and biological protocols for analyzing individual biological cells involve morphological evaluation based on cell staining, designed to enhance imaging contrast and enable clinicians and biologists to differentiate between various cell organelles. However, cell staining is not always allowed in certain medical procedures. In other cases, staining may be time consuming or expensive to implement. Here, we present a new deep-learning approach, called HoloStain, which converts images of isolated biological cells acquired without staining by holographic microscopy to their virtually stained images. We demonstrate this approach for human sperm cells, as there is a well-established protocol and global standardization for characterizing the morphology of stained human sperm cells for fertility evaluation, but, on the other hand, staining might be cytotoxic and thus is not allowed…
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