Diffusive topology preserving manifold distances for single-cell data analysis

IF 9.1 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Proceedings of the National Academy of Sciences of the United States of America Pub Date : 2025-01-24 DOI:10.1073/pnas.2404860121
Jiangyong Wei, Bin Zhang, Qiu Wang, Tianshou Zhou, Tianhai Tian, Luonan Chen
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Abstract

Manifold learning techniques have emerged as crucial tools for uncovering latent patterns in high-dimensional single-cell data. However, most existing dimensionality reduction methods primarily rely on 2D visualization, which can distort true data relationships and fail to extract reliable biological information. Here, we present DTNE (diffusive topology neighbor embedding), a dimensionality reduction framework that faithfully approximates manifold distance to enhance cellular relationships and dynamics. DTNE constructs a manifold distance matrix using a modified personalized PageRank algorithm, thereby preserving topological structure while enabling diverse single-cell analyses. This approach facilitates distribution-based cellular relationship analysis, pseudotime inference, and clustering within a unified framework. Extensive benchmarking against mainstream algorithms on diverse datasets demonstrates DTNE’s superior performance in maintaining geodesic distances and revealing significant biological patterns. Our results establish DTNE as a powerful tool for high-dimensional data analysis in uncovering meaningful biological insights.
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为单细胞数据分析保留流形距离的扩散拓扑
流形学习技术已经成为揭示高维单细胞数据中潜在模式的关键工具。然而,大多数现有的降维方法主要依赖于二维可视化,这可能会扭曲真实的数据关系,无法提取可靠的生物信息。在这里,我们提出了DTNE(扩散拓扑邻居嵌入),这是一个降维框架,忠实地近似流形距离,以增强细胞关系和动态。DTNE使用改进的个性化PageRank算法构建流形距离矩阵,从而在保留拓扑结构的同时实现多种单细胞分析。这种方法促进了基于分布的细胞关系分析、伪时间推断和统一框架内的聚类。对不同数据集上主流算法的广泛基准测试表明,DTNE在保持测地线距离和揭示重要生物模式方面具有优越的性能。我们的结果建立了DTNE作为一个强大的工具,高维数据分析发现有意义的生物学见解。
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来源期刊
CiteScore
19.00
自引率
0.90%
发文量
3575
审稿时长
2.5 months
期刊介绍: The Proceedings of the National Academy of Sciences (PNAS), a peer-reviewed journal of the National Academy of Sciences (NAS), serves as an authoritative source for high-impact, original research across the biological, physical, and social sciences. With a global scope, the journal welcomes submissions from researchers worldwide, making it an inclusive platform for advancing scientific knowledge.
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