Paper
Document
Download
Flag content
0

FICTURE: Scalable segmentation-free analysis of sub-micron resolution spatial transcriptomics

Authors
Yichen Si,ChangHee Lee
Yongha Hwang,Jeong H Yun,Weiqiu Cheng,Chun-Seok Cho,Miguel Quiros,Asma Nusrat,Weizhou Zhang,Goo Jun,Sebastian Zoellner,Jun Hee Lee,Hyun Min Kang,Jeong Yun,Chun‐Seok Cho,Miguel Quirós,Sebastian Zöllner,Jun Lee
+16 authors
,Hyun Kang
Published
Jan 1, 2023
Show more
Save
TipTip
Document
Download
Flag content
0
TipTip
Save
Document
Download
Flag content

Abstract

Spatial transcriptomics (ST) technologies have advanced to enable transcriptome-wide gene expression analysis at submicrometer resolution over large areas. Analysis of high-resolution ST data relies heavily on image-based cell segmentation or gridding, which often fails in complex tissues due to diversity and irregularity of cell size and shape. Existing segmentation-free analysis methods scale only to small regions and a small number of genes, limiting their utility in high-throughput studies. Here we present FICTURE, a segmentation-free spatial factorization method that can handle transcriptome-wide data labeled with billions of submicron resolution spatial coordinates. FICTURE is orders of magnitude more efficient than existing methods and it is compatible with both sequencing- and imaging-based ST data. FICTURE reveals the microscopic ST architecture for challenging tissues, such as vascular, fibrotic, muscular, and lipid-laden areas in real data where previous methods failed. FICTURE9s cross-platform generality, scalability, and precision make it a powerful tool for exploring high-resolution ST.

Paper PDF

This paper's license is marked as closed access or non-commercial and cannot be viewed on ResearchHub. Visit the paper's external site.