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PriorCCI:用于从单细胞转录组中识别特定细胞类型之间关键配体-受体相互作用的可解释深度学习框架。

PriorCCI: Interpretable Deep Learning Framework for Identifying Key Ligand-Receptor Interactions Between Specific Cell Types from Single-Cell Transcriptomes.

作者信息

Kim Hanbyeol, Choi Eunyoung, Shim Yujeong, Kwon Joonha

机构信息

Bioinformatics Branch, National Cancer Center, Goyang 10408, Republic of Korea.

Department of Public Health & AI, Graduate School of Cancer Science and Policy, National Cancer Center, Goyang 10408, Republic of Korea.

出版信息

Int J Mol Sci. 2025 Jul 23;26(15):7110. doi: 10.3390/ijms26157110.

Abstract

Understanding the interactions between specific cell types within tissue environments is essential for elucidating key biological processes, such as immune responses, cancer progression, inflammation, and development, in both physiological and pathological studies. The predominant methods for analyzing cell-cell interactions (CCI) rely primarily on statistical inference using mapping or network-based techniques. However, these approaches often struggle to prioritize meaningful interactions owing to the high sparsity and heterogeneity inherent in single-cell RNA sequencing (scRNA-seq) data, where small but biologically important differences can be easily overlooked. To overcome these limitations, we developed PriorCCI, a deep-learning framework that leverages a convolutional neural network (CNN) alongside Grad-CAM++, an explainable artificial intelligence algorithm. This study aims to provide a scalable, interpretable, and biologically meaningful framework for systematically identifying and prioritizing key ligand-receptor interactions between defined cell-type pairs from single-cell RNA-seq data, particularly in complex environments such as tumors. PriorCCI effectively prioritizes interactions between cancer and other cell types within the tumor microenvironment and accurately identifies biologically significant interactions related to angiogenesis. By providing a visual interpretation of gene-pair contributions, our approach enables robust inference of gene-gene interactions across distinct cell types from scRNA-seq data.

摘要

了解组织环境中特定细胞类型之间的相互作用对于阐明生理和病理研究中的关键生物学过程至关重要,如免疫反应、癌症进展、炎症和发育。分析细胞间相互作用(CCI)的主要方法主要依赖于使用基于映射或网络的技术进行统计推断。然而,由于单细胞RNA测序(scRNA-seq)数据固有的高稀疏性和异质性,这些方法往往难以对有意义的相互作用进行优先级排序,在scRNA-seq数据中,微小但具有生物学重要性的差异很容易被忽视。为了克服这些局限性,我们开发了PriorCCI,这是一个深度学习框架,它利用卷积神经网络(CNN)和可解释人工智能算法Grad-CAM++。本研究旨在提供一个可扩展、可解释且具有生物学意义的框架,用于从单细胞RNA-seq数据中系统地识别和优先排序定义的细胞类型对之间的关键配体-受体相互作用,特别是在肿瘤等复杂环境中。PriorCCI有效地对肿瘤微环境中癌症与其他细胞类型之间的相互作用进行优先级排序,并准确识别与血管生成相关的生物学上重要的相互作用。通过对基因对贡献的可视化解释,我们的方法能够从scRNA-seq数据中对不同细胞类型之间的基因-基因相互作用进行可靠推断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/522a/12345837/d1d7def169f3/ijms-26-07110-g002.jpg

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