Abstract
AbstractEmerging spatially resolved transcriptomics (SRT) technologies provide unprecedented opportunities to discover the spatial patterns of gene expression at the cellular or tissue levels. Currently, most existing computational tools on SRT are designed and tested on the ribbon-like brain cortex. Their present expressive power often makes it challenging to identify highly heterogeneous mosaic-like tissue architectures, such as tissues from kidney diseases. This demands heightened precision in discerning the cellular and morphological changes within renal tubules and their interstitial niches. We present an empowered graph deep learning framework, REGNN (Relation Equivariant Graph Neural Networks), for SRT data analyses on heterogeneous tissue structures. To increase expressive power in the SRT lattice using graph modeling, the proposed REGNN integrates equivariance to handle the rotational and translational symmetries of the spatial space, and Positional Encoding (PE) to identify and strengthen the relative spatial relations of the nodes uniformly distributed in the lattice. Our study finds that REGNN outperforms existing computational tools in identifying inherent mosaic-like heterogenous tissue architectures in kidney samples sourced from different kidney diseases using the 10X Visium platform. In case studies on acute kidney injury and chronic kidney diseases, the results identified by REGNN are also validated by experienced nephrology physicians. This proposed framework explores the expression patterns of highly heterogeneous tissues with an enhanced graph deep learning model, and paves the way to pinpoint underlying pathological mechanisms that contribute to the progression of complex diseases. REGNN is publicly available athttps://github.com/Mraina99/REGNN.
Publisher
Cold Spring Harbor Laboratory
Reference36 articles.
1. Murray, I.V. and M.A. Paolini , Histology, Kidney and Glomerulus, in StatPearls. 2023: Treasure Island (FL) ineligible companies. Disclosure: Michael Paolini declares no relevant financial relationships with ineligible companies.
2. US Renal Data System 2020 Annual Data Report: Epidemiology of Kidney Disease in the United States;m J Kidney Dis,2021
3. Epidemiology and Outcome of Patients with Acute Kidney Injury in Emergency Department; a Cross-Sectional Study;Emerg (Tehran),2018
4. Melo Ferreira, R. , et al., Integration of spatial and single-cell transcriptomics localizes epithelial cell-immune cross-talk in kidney injury. JCI Insight, 2021. 6(12).
5. Museum of spatial transcriptomics;Nat Methods,2022