DEEPMAP: DEEP LEARNING-BASED SINGLE-CELL DATA INTEGRATION USING ITERATIVE CELL MATCHING AND STRUCTURE PRESERVATION CONSTRAINTS

成果类型:
Article
署名作者:
Xu, Shuntuo; Yu, Zhou; Ming, Jingsi
署名单位:
East China Normal University; East China Normal University
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/24-AOAS1954
发表日期:
2024
页码:
3596-3613
关键词:
transcriptome atlas
摘要:
Effective integration of single-cell data can facilitate the discovery of cell-type specific gene expression patterns and cellular interactions, ultimately leading to a better understanding of various biological processes and diseases. However, datasets from different platforms, species, and modalities exhibit various levels of heterogeneities, posing significant challenges in data alignment using a unified approach. Here we propose DeepMap, a flexible and efficient method for single-cell data integration, by taking advantage of the deep learning framework. Our method utilizes iterative cell matching based on mutual nearest neighbors, leverages an autoencoder framework to learn harmonized representations of cells from various datasets, and incorporates a covariance penalty term into the framework for structure preservation. In addition to harmonization of data from different datasets, we specifically take account of the preservation of important biological variations within dataset, which is crucial to reliable downstream analysis. Comprehensive real data analysis demonstrates the flexibility of DeepMap for diverse datasets from different platforms, species, and modalities, and highlights its marked ability in preserving structures over existing integration methods with enhanced computational efficiency and optimized memory usage. The robust DeepMap-integrated data offers promising prospects for advancing our understanding of cell biology, hence making it a highly attractive option for integrative single-cell data analysis.
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