H&E染色
计算机科学
数字化病理学
组织病理学
冰冻切片程序
深度学习
组织学
显微镜
人工智能
曙红
病理
高分辨率
放大倍数
生物医学工程
医学
染色
遥感
地质学
作者
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 Richards‐Kortum,Ashok Veeraraghavan
标识
DOI:10.1038/s41467-024-47065-2
摘要
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.
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