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eMCI:一种用于揭示空间转录组学和细胞间信号传导的可解释多模态关联整合模型

eMCI: An Explainable Multimodal Correlation Integration Model for Unveiling Spatial Transcriptomics and Intercellular Signaling.

作者信息

Hong Renhao, Tong Yuyan, Tang Hui, Zeng Tao, Liu Rui

机构信息

School of Mathematics, South China University of Technology, Guangzhou 510640, China.

School of Mathematics and Big Data, Foshan University, Foshan 528000, China.

出版信息

Research (Wash D C). 2024 Nov 1;7:0522. doi: 10.34133/research.0522. eCollection 2024.

Abstract

Current integration methods for single-cell RNA sequencing (scRNA-seq) data and spatial transcriptomics (ST) data are typically designed for specific tasks, such as deconvolution of cell types or spatial distribution prediction of RNA transcripts. These methods usually only offer a partial analysis of ST data, neglecting the complex relationship between spatial expression patterns underlying cell-type specificity and intercellular cross-talk. Here, we present eMCI, an explainable multimodal correlation integration model based on deep neural network framework. eMCI leverages the fusion of scRNA-seq and ST data using different spot-cell correlations to integrate multiple synthetic analysis tasks of ST data at cellular level. First, eMCI can achieve better or comparable accuracy in cell-type classification and deconvolution according to wide evaluations and comparisons with state-of-the-art methods on both simulated and real ST datasets. Second, eMCI can identify key components across spatial domains responsible for different cell types and elucidate the spatial expression patterns underlying cell-type specificity and intercellular communication, by employing an attribution algorithm to dissect the visual input. Especially, eMCI has been applied to 3 cross-species datasets, including zebrafish melanomas, soybean nodule maturation, and human embryonic lung, which accurately and efficiently estimate per-spot cell composition and infer proximal and distal cellular interactions within the spatial and temporal context. In summary, eMCI serves as an integrative analytical framework to better resolve the spatial transcriptome based on existing single-cell datasets and elucidate proximal and distal intercellular signal transduction mechanisms over spatial domains without requirement of biological prior reference. This approach is expected to facilitate the discovery of spatial expression patterns of potential biomolecules with cell type and cell-cell communication specificity.

摘要

目前用于单细胞RNA测序(scRNA-seq)数据和空间转录组学(ST)数据的整合方法通常是针对特定任务设计的,例如细胞类型解卷积或RNA转录本的空间分布预测。这些方法通常只对ST数据进行部分分析,而忽略了细胞类型特异性和细胞间相互作用背后的空间表达模式之间的复杂关系。在这里,我们提出了eMCI,一种基于深度神经网络框架的可解释多模态相关整合模型。eMCI利用不同的斑点-细胞相关性融合scRNA-seq和ST数据,在细胞水平上整合ST数据的多个综合分析任务。首先,根据在模拟和真实ST数据集上与现有方法的广泛评估和比较,eMCI在细胞类型分类和解卷积方面可以实现更好或相当的准确性。其次,eMCI可以通过采用归因算法剖析视觉输入,识别跨空间域负责不同细胞类型的关键成分,并阐明细胞类型特异性和细胞间通信背后的空间表达模式。特别是,eMCI已应用于3个跨物种数据集,包括斑马鱼黑色素瘤、大豆根瘤成熟和人类胚胎肺,这些数据集能够准确有效地估计每个斑点的细胞组成,并推断时空背景下的近端和远端细胞相互作用。总之,eMCI作为一个综合分析框架,可以更好地基于现有的单细胞数据集解析空间转录组,并阐明跨空间域的近端和远端细胞间信号转导机制,而无需生物学先验参考。这种方法有望促进发现具有细胞类型和细胞-细胞通信特异性的潜在生物分子的空间表达模式。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/82ea/11528068/66d5606b4b61/research.0522.fig.001.jpg

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