多路复用
免疫荧光
组织病理学
染色
间接免疫荧光
人工智能
病理
计算机科学
生物
医学
抗体
免疫学
生物信息学
作者
Eric Q. Wu,Matthew Bieniosek,Zhenqin Wu,Nitya Thakkar,Gregory W. Charville,Ahmad Makky,Christian M. Schürch,Jeroen R. Huyghe,Ulrike Peters,Christopher I. Li,Li Li,Hannah Giba,Vivek Behera,Arjun S. Raman,Alexandro E. Trevino,Aaron T. Mayer,James Zou
标识
DOI:10.1101/2024.11.10.622859
摘要
Abstract Hematoxylin and eosin (H&E) is a common and inexpensive histopathology assay. Though widely used and information-rich, it cannot directly inform about specific molecular markers, which require additional experiments to assess. To address this gap, we present ROSIE, a deep-learning framework that computationally imputes the expression and localization of dozens of proteins from H&E images. Our model is trained on a dataset of over 1000 paired and aligned H&E and multiplex immunofluorescence (mIF) samples from 20 tissues and disease conditions, spanning over 16 million cells. Validation of our in silico mIF staining method on held-out H&E samples demonstrates that the predicted biomarkers are effective in identifying cell phenotypes, particularly distinguishing lymphocytes such as B cells and T cells, which are not readily discernible with H&E staining alone. Additionally, ROSIE facilitates the robust identification of stromal and epithelial microenvironments and immune cell subtypes like tumor-infiltrating lymphocytes (TILs), which are important for understanding tumor-immune interactions and can help inform treatment strategies in cancer research.
科研通智能强力驱动
Strongly Powered by AbleSci AI