Inference of single cell profiles from histology stains with the Single Cell omics from Histology Analysis Framework (SCHAF)

Charles Comiter(Broad Institute), Xingjian Chen, Eeshit Dhaval Vaishnav(Memorial Sloan Kettering Cancer Center), Koseki J. Kobayashi-Kirschvink(Broad Institute), Metamia Ciampricotti(Broad Institute), Ke Zhang(Brigham and Women's Hospital), Jason Murray(Dana-Farber Cancer Institute), Francesco Monticolo(Dana-Farber Cancer Institute), Jianhuan Qi(Broad Institute), Ryota Tanaka(Broad Institute), Sonia E. Brodowska(Broad Institute), Bo Li(Broad Institute), Yiming Yang(Broad Institute), Scott J. Rodig(Brigham and Women's Hospital), Angeliki Karatza(Broad Institute), Alvaro Quintanal Villalonga(Broad Institute), Madison Turner(Broad Institute), Kathleen L. Pfaff(Howard Hughes Medical Institute), Judit Jané‐Valbuena(Broad Institute), Michal Slyper(Broad Institute), Julia Waldman(Broad Institute), Sébastien Vigneau(Broad Institute), Jingyi Wu(Broad Institute), Timothy R. Blosser(Broad Institute), Åsa Segerstolpe(Broad Institute), Daniel L. Abravanel(Broad Institute), Nikhil Wagle(Broad Institute), Shadmehr Demehri, Xiaowei Zhuang(Howard Hughes Medical Institute), Charles M. Rudin(Memorial Sloan Kettering Cancer Center), Johanna Klughammer(Broad Institute), Orit Rozenblatt–Rosen(Broad Institute), Collin M. Stultz, Jian Shu(Broad Institute), Aviv Regev(Broad Institute)
bioRxiv (Cold Spring Harbor Laboratory)
March 23, 2023
Cited by 36Open Access
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Abstract

Tissue biology involves an intricate balance between cell-intrinsic processes and interactions between cells organized in specific spatial patterns, which can be respectively captured by single cell profiling methods, such as single cell RNA-seq (scRNA-seq) and spatial transcriptomics, and histology imaging data, such as Hematoxylin-and-Eosin (H&E) stains. While single cell profiles provide rich molecular information, they can be challenging to collect routinely in the clinic and either lack spatial resolution or high gene throughput. Conversely, histological H&E assays have been a cornerstone of tissue pathology for decades, but do not directly report on molecular details, although the observed structure they capture arises from molecules and cells. Here, we leverage vision transformers and adversarial deep learning to develop the Single Cell omics from Histology Analysis Framework (SCHAF), which generates a tissue sample's spatially-resolved whole transcriptome single cell omics dataset from its H&E histology image. We demonstrate SCHAF on a variety of tissues- including lung cancer, metastatic breast cancer, placentae, and whole mouse pups-training with matched samples analyzed by sc/snRNA-seq, H&E staining, and, when available, spatial transcriptomics. SCHAF generated appropriate single cell profiles from histology images in test data, related them spatially, and compared well to ground-truth scRNA-Seq, expert pathologist annotations, or direct spatial transcriptomic measurements, with some limitations. SCHAF opens the way to next-generation H&E analyses and an integrated understanding of cell and tissue biology in health and disease.


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