iMIRACLE: an Iterative Multi-View Graph Neural Network to Model Intercellular Gene Regulation from Spatial Transcriptomic Data.

Ziheng Duan, Siwei Xu, Cheyu Lee, Dylan Riffle, Jing Zhang
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Abstract

Spatial transcriptomics has transformed genomic research by measuring spatially resolved gene expressions, allowing us to investigate how cells adapt to their microenvironment via modulating their expressed genes. This essential process usually starts from cell-cell communication (CCC) via ligand-receptor (LR) interaction, leading to regulatory changes within the receiver cell. However, few methods were developed to connect them to provide biological insights into intercellular regulation. To fill this gap, we propose iMiracle, an iterative multi-view graph neural network that models each cell's intercellular regulation with three key features. Firstly, iMiracle integrates inter- and intra-cellular networks to jointly estimate cell-type- and micro-environment-driven gene expressions. Optionally, it allows prior knowledge of intra-cellular networks as pre-structured masks to maintain biological relevance. Secondly, iMiracle employs iterative learning to overcome the sparsity of spatial transcriptomic data and gradually fill in the missing edges in the CCC network. Thirdly, iMiracle infers a cell-specific ligand-gene regulatory score based on the contributions of different LR pairs to interpret inter-cellular regulation. We applied iMiracle to nine simulated and eight real datasets from three sequencing platforms and demonstrated that iMiracle consistently outperformed ten methods in gene expression imputation and four methods in regulatory score inference. Lastly, we developed iMiracle as an open-source software and anticipate that it can be a powerful tool in decoding the complexities of inter-cellular transcriptional regulation.

iMIRACLE:从空间转录组数据建立细胞间基因调控模型的迭代多视图图神经网络。
空间转录组学通过测量空间分辨的基因表达改变了基因组研究,使我们能够研究细胞如何通过调节其表达的基因来适应其微环境。这一重要过程通常从细胞间通信(CCC)开始,通过配体-受体(LR)相互作用,导致受体细胞内的调节变化。然而,很少有方法将它们联系起来,以提供对细胞间调节的生物学见解。为了填补这一空白,我们提出了iMiracle,这是一个迭代的多视图神经网络,它通过三个关键特征来模拟每个细胞的细胞间调节。首先,iMiracle集成了细胞间和细胞内网络,共同估计细胞类型和微环境驱动的基因表达。可选地,它允许细胞内网络的先验知识作为预结构掩模,以保持生物学相关性。其次,iMiracle采用迭代学习克服空间转录组数据的稀疏性,逐步填补CCC网络中缺失的边缘。第三,iMiracle根据不同LR对的贡献推断出细胞特异性配体-基因调控评分,以解释细胞间调控。我们将iMiracle应用于来自三个测序平台的9个模拟数据集和8个真实数据集,并证明iMiracle在基因表达imputation方面始终优于10种方法,在调控评分推断方面优于4种方法。最后,我们开发了iMiracle作为开源软件,并预计它可以成为解码细胞间转录调控复杂性的强大工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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