transCAE:利用迁移学习和卷积自编码器增强单细胞RNA-seq数据的细胞类型注释。

IF 4.7 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Journal of Molecular Biology Pub Date : 2025-01-09 DOI:10.1016/j.jmb.2025.168936
Qingchun Liu, Yan Xu
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引用次数: 0

摘要

单细胞RNA测序(scRNA-seq)分析为解决各种生物学问题提供了巨大的潜力,其中一个关键应用是使用注释良好的外部参考数据集对未知细胞类型的查询数据集进行注释。然而,现有的监督或半监督方法的性能在很大程度上取决于源数据的质量。此外,当处理多个引用或查询数据集时,这些方法经常与不同平台产生的批处理效果作斗争,这使得精确注释变得困难。我们开发了transCAE,这是一种基于迁移学习的鲁棒单细胞注释算法,它集成了无监督降维和监督细胞类型分类。这种方法充分利用来自参考和查询数据集的信息,在查询数据中实现精确的单元格分类。广泛的评估表明,transCAE显著提高了分类精度,有效地缓解了批处理效应。与其他最先进的方法相比,transCAE在涉及多个参考或查询数据集的实验中表现出优越的性能。这些优势使transCAE成为scRNA-seq数据集的最佳注释方法。
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transCAE: Enhancing Cell Type Annotation in Single-cell RNA-seq Data with Transfer Learning and Convolutional Autoencoder
Single-cell RNA sequencing (scRNA-seq) analysis offers tremendous potential for addressing various biological questions, with one key application being the annotation of query datasets with unknown cell types using well-annotated external reference datasets. However, the performance of existing supervised or semi-supervised methods largely depends on the quality of source data. Furthermore, these methods often struggle with the batch effects arising from different platforms when handling multiple reference or query datasets, making precise annotation challenging. We developed transCAE, a robust transfer learning-based algorithm for single-cell annotation that integrates unsupervised dimensionality reduction with supervised cell type classification. This approach fully leverages information from both reference and query datasets to achieve precise cell classification within the query data. Extensive evaluations show that transCAE significantly enhances classification accuracy and efficiently mitigates batch effects. Compared to other state-of-the-art methods, transCAE demonstrates superior performance in experiments involving multiple reference or query datasets. These strengths position transCAE as an optimal annotation method for scRNA-seq datasets.
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来源期刊
Journal of Molecular Biology
Journal of Molecular Biology 生物-生化与分子生物学
CiteScore
11.30
自引率
1.80%
发文量
412
审稿时长
28 days
期刊介绍: Journal of Molecular Biology (JMB) provides high quality, comprehensive and broad coverage in all areas of molecular biology. The journal publishes original scientific research papers that provide mechanistic and functional insights and report a significant advance to the field. The journal encourages the submission of multidisciplinary studies that use complementary experimental and computational approaches to address challenging biological questions. Research areas include but are not limited to: Biomolecular interactions, signaling networks, systems biology; Cell cycle, cell growth, cell differentiation; Cell death, autophagy; Cell signaling and regulation; Chemical biology; Computational biology, in combination with experimental studies; DNA replication, repair, and recombination; Development, regenerative biology, mechanistic and functional studies of stem cells; Epigenetics, chromatin structure and function; Gene expression; Membrane processes, cell surface proteins and cell-cell interactions; Methodological advances, both experimental and theoretical, including databases; Microbiology, virology, and interactions with the host or environment; Microbiota mechanistic and functional studies; Nuclear organization; Post-translational modifications, proteomics; Processing and function of biologically important macromolecules and complexes; Molecular basis of disease; RNA processing, structure and functions of non-coding RNAs, transcription; Sorting, spatiotemporal organization, trafficking; Structural biology; Synthetic biology; Translation, protein folding, chaperones, protein degradation and quality control.
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