单细胞聚类的显著性调节掩蔽诱导注意对比学习。

IF 6.8 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Bo Li, Yongkang Zhao, Jing Hu, Shihua Zhang, Xiaolong Zhang
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引用次数: 0

摘要

单细胞测序技术使研究人员能够在细胞水平上研究细胞异质性。为了便于下游分析,将单细胞数据聚类到子组中是必不可少的。然而,数据的高维性、稀疏性和丢失事件使聚类具有挑战性。目前,人们提出了许多深度学习方法。然而,它们要么不能充分利用相似细胞之间的成对距离信息,要么不能充分捕捉它们的特征相关性。它们也不能有效地处理高维稀疏数据。因此,它们不适合高保真聚类,导致难以分析下游分析所需的清晰细胞类型。提出的scSAMAC方法将对比学习和负二项损失集成到变分自编码器中,通过对比单元相似度提取特征,同时保留固有特征。这增强了聚类过程中的鲁棒性和泛化性。在对比学习中,采用带有基因特征显著性调整的负样本生成方法构建掩码模块,选择聚类阶段影响较大的特征,模拟数据缺失事件。此外,它还开发了一种新的损失,它由软k-means损失、Wasserstein距离和对比损失组成。这充分利用了数据信息,提高了集群性能。此外,在自编码器的每一层潜在变量上应用多头注意机制模块,增强特征关联、整合和信息修复。实验结果表明,scSAMAC优于几种最先进的聚类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
scSAMAC: saliency-adjusted masking induced attention contrastive learning for single-cell clustering.

Single-cell sequencing technology has enabled researchers to study cellular heterogeneity at the cell level. To facilitate the downstream analysis, clustering single-cell data into subgroups is essential. However, the high dimensionality, sparsity, and dropout events of the data make the clustering challenging. Currently, many deep learning methods have been proposed. Nevertheless, they either fail to fully utilize pairwise distances information between similar cells, or do not adequately capture their feature correlations. They cannot also effectively handle high-dimensional sparse data. Therefore, they are not suitable for high-fidelity clustering, leading to difficulties in analyzing the clear cell types required for downstream analysis. The proposed scSAMAC method integrates contrastive learning and negative binomial losses into a variational autoencoder, extracting features via contrastive unit similarity while preserving the intrinsic characteristics. This enhances the robustness and generalization during the clustering. In the contrastive learning, it constructs a mask module by adopting a negative sample generation method with gene feature saliency adjustment, which selects features more influential in the clustering phase and simulates data missing events. Additionally, it develops a novel loss, which consists of a soft k-means loss, a Wasserstein distance, and a contrastive loss. This fully utilizes data information and improves clustering performance. Furthermore, a multi-head attention mechanism module is applied to the latent variables at each layer of autoencoder to enhance feature correlation, integration, and information repair. Experimental results demonstrate that scSAMAC outperforms several state-of-the-art clustering methods.

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来源期刊
Briefings in bioinformatics
Briefings in bioinformatics 生物-生化研究方法
CiteScore
13.20
自引率
13.70%
发文量
549
审稿时长
6 months
期刊介绍: Briefings in Bioinformatics is an international journal serving as a platform for researchers and educators in the life sciences. It also appeals to mathematicians, statisticians, and computer scientists applying their expertise to biological challenges. The journal focuses on reviews tailored for users of databases and analytical tools in contemporary genetics, molecular and systems biology. It stands out by offering practical assistance and guidance to non-specialists in computerized methodologies. Covering a wide range from introductory concepts to specific protocols and analyses, the papers address bacterial, plant, fungal, animal, and human data. The journal's detailed subject areas include genetic studies of phenotypes and genotypes, mapping, DNA sequencing, expression profiling, gene expression studies, microarrays, alignment methods, protein profiles and HMMs, lipids, metabolic and signaling pathways, structure determination and function prediction, phylogenetic studies, and education and training.
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