Define and visualize pathological architectures of human tissues from spatially resolved transcriptomics using deep learning.

in Computational and structural biotechnology journal by Yuzhou Chang, Fei He, Juexin Wang, Shuo Chen, Jingyi Li, Jixin Liu, Yang Yu, Li Su, Anjun Ma, Carter Allen, Yu Lin, Shaoli Sun, Bingqiang Liu, José Javier Otero, Dongjun Chung, Hongjun Fu, Zihai Li, Dong Xu, Qin Ma

TLDR

  • RESEPT is a tool that helps scientists understand the structure of tissues in the human body by looking at how genes are expressed in different parts of the tissue. It can help identify specific features of diseases like Alzheimer's and cancer.

Abstract

Spatially resolved transcriptomics provides a new way to define spatial contexts and understand the pathogenesis of complex human diseases. Although some computational frameworks can characterize spatial context via various clustering methods, the detailed spatial architectures and functional zonation often cannot be revealed and localized due to the limited capacities of associating spatial information. We present RESEPT, a deep-learning framework for characterizing and visualizing tissue architecture from spatially resolved transcriptomics. Given inputs such as gene expression or RNA velocity, RESEPT learns a three-dimensional embedding with a spatial retained graph neural network from spatial transcriptomics. The embedding is then visualized by mapping into color channels in an RGB image and segmented with a supervised convolutional neural network model. Based on a benchmark of 10x Genomics Visium spatial transcriptomics datasets on the human and mouse cortex, RESEPT infers and visualizes the tissue architecture accurately. It is noteworthy that, for the in-house AD samples, RESEPT can localize cortex layers and cell types based on pre-defined region- or cell-type-enriched genes and furthermore provide critical insights into the identification of amyloid-beta plaques in Alzheimer's disease. Interestingly, in a glioblastoma sample analysis, RESEPT distinguishes tumor-enriched, non-tumor, and regions of neuropil with infiltrating tumor cells in support of clinical and prognostic cancer applications.

Overview

  • RESEPT is a deep-learning framework for characterizing and visualizing tissue architecture from spatially resolved transcriptomics. It learns a three-dimensional embedding with a spatial retained graph neural network from spatial transcriptomics and maps it into color channels in an RGB image. RESEPT can accurately infer and visualize tissue architecture, including cortex layers and cell types, and provide insights into disease-specific features such as amyloid-beta plaques in Alzheimer's disease and tumor-enriched regions in glioblastoma samples.

Comparative Analysis & Findings

  • RESEPT accurately infers and visualizes tissue architecture in various spatial transcriptomics datasets, including human and mouse cortex and glioblastoma samples. It distinguishes tumor-enriched, non-tumor, and regions of neuropil with infiltrating tumor cells in glioblastoma samples, providing insights into disease-specific features.

Implications and Future Directions

  • RESEPT has the potential to improve the understanding of complex human diseases by providing detailed spatial architectures and functional zonation. Future research directions could include integrating RESEPT with other spatial transcriptomics tools and techniques, exploring the relationship between tissue architecture and disease progression, and developing clinical applications for disease diagnosis and prognosis.