Leveraging prior knowledge to infer gene regulatory networks from single-cell RNA-sequencing data.

IF 7.7 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Systems Biology Pub Date : 2025-03-01 Epub Date: 2025-02-12 DOI:10.1038/s44320-025-00088-3
Marco Stock, Corinna Losert, Matteo Zambon, Niclas Popp, Gabriele Lubatti, Eva Hörmanseder, Matthias Heinig, Antonio Scialdone
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Abstract

Many studies have used single-cell RNA sequencing (scRNA-seq) to infer gene regulatory networks (GRNs), which are crucial for understanding complex cellular regulation. However, the inherent noise and sparsity of scRNA-seq data present significant challenges to accurate GRN inference. This review explores one promising approach that has been proposed to address these challenges: integrating prior knowledge into the inference process to enhance the reliability of the inferred networks. We categorize common types of prior knowledge, such as experimental data and curated databases, and discuss methods for representing priors, particularly through graph structures. In addition, we classify recent GRN inference algorithms based on their ability to incorporate these priors and assess their performance in different contexts. Finally, we propose a standardized benchmarking framework to evaluate algorithms more fairly, ensuring biologically meaningful comparisons. This review provides guidance for researchers selecting GRN inference methods and offers insights for developers looking to improve current approaches and foster innovation in the field.

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利用先验知识从单细胞rna测序数据推断基因调控网络。
许多研究使用单细胞RNA测序(scRNA-seq)来推断基因调控网络(grn),这对于理解复杂的细胞调控至关重要。然而,scRNA-seq数据固有的噪声和稀疏性给准确的GRN推断带来了重大挑战。这篇综述探讨了一种有前途的方法,已经提出了解决这些挑战:整合先验知识到推理过程中,以提高推断网络的可靠性。我们对常见类型的先验知识进行分类,例如实验数据和策划数据库,并讨论表示先验的方法,特别是通过图结构。此外,我们对最近的GRN推理算法进行了分类,基于它们整合这些先验的能力,并评估了它们在不同上下文中的性能。最后,我们提出了一个标准化的基准框架,以更公平地评估算法,确保生物学上有意义的比较。这篇综述为研究人员选择GRN推理方法提供了指导,并为希望改进当前方法和促进该领域创新的开发人员提供了见解。
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来源期刊
Molecular Systems Biology
Molecular Systems Biology 生物-生化与分子生物学
CiteScore
18.50
自引率
1.00%
发文量
62
审稿时长
6-12 weeks
期刊介绍: Systems biology is a field that aims to understand complex biological systems by studying their components and how they interact. It is an integrative discipline that seeks to explain the properties and behavior of these systems. Molecular Systems Biology is a scholarly journal that publishes top-notch research in the areas of systems biology, synthetic biology, and systems medicine. It is an open access journal, meaning that its content is freely available to readers, and it is peer-reviewed to ensure the quality of the published work.
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