Nature Communications (Apr 2024)

DeepDOF-SE: affordable deep-learning microscopy platform for slide-free histology

  • Lingbo Jin,
  • Yubo Tang,
  • Jackson B. Coole,
  • Melody T. Tan,
  • Xuan Zhao,
  • Hawraa Badaoui,
  • Jacob T. Robinson,
  • Michelle D. Williams,
  • Nadarajah Vigneswaran,
  • Ann M. Gillenwater,
  • Rebecca R. Richards-Kortum,
  • Ashok Veeraraghavan

DOI
https://doi.org/10.1038/s41467-024-47065-2
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 14

Abstract

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Abstract Histopathology plays a critical role in the diagnosis and surgical management of cancer. However, access to histopathology services, especially frozen section pathology during surgery, is limited in resource-constrained settings because preparing slides from resected tissue is time-consuming, labor-intensive, and requires expensive infrastructure. Here, we report a deep-learning-enabled microscope, named DeepDOF-SE, to rapidly scan intact tissue at cellular resolution without the need for physical sectioning. Three key features jointly make DeepDOF-SE practical. First, tissue specimens are stained directly with inexpensive vital fluorescent dyes and optically sectioned with ultra-violet excitation that localizes fluorescent emission to a thin surface layer. Second, a deep-learning algorithm extends the depth-of-field, allowing rapid acquisition of in-focus images from large areas of tissue even when the tissue surface is highly irregular. Finally, a semi-supervised generative adversarial network virtually stains DeepDOF-SE fluorescence images with hematoxylin-and-eosin appearance, facilitating image interpretation by pathologists without significant additional training. We developed the DeepDOF-SE platform using a data-driven approach and validated its performance by imaging surgical resections of suspected oral tumors. Our results show that DeepDOF-SE provides histological information of diagnostic importance, offering a rapid and affordable slide-free histology platform for intraoperative tumor margin assessment and in low-resource settings.