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Rigorous integration of single-cell ATAC-seq data using regularized barycentric mapping by Shuchen Zhu & Heyang Hua & Shengquan Chen instant download

  • SKU: EBN-238811986
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Instant download (eBook) Rigorous integration of single-cell ATAC-seq data using regularized barycentric mapping after payment.
Authors:Shuchen Zhu & Heyang Hua & Shengquan Chen
Pages:updating ...
Year:2025
Edition:1st Edition
Publisher:x
Language:english
File Size:5.96 MB
Format:pdf
Categories: Ebooks

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Rigorous integration of single-cell ATAC-seq data using regularized barycentric mapping by Shuchen Zhu & Heyang Hua & Shengquan Chen instant download

Category: Biostatistics/Genetics7Molecular

Nature Machine Intelligence (Springer Natur), doi:10.1038/s42256-025-01099-3

Single-cell assay for transposase-accessible chromatin using sequencing Check for updates(scATAC-seq) deciphers genome-wide chromatin accessibility, providing profound insights into gene regulation mechanisms. With the rapid advance of sequencing technologies, scATAC-seq data typically encompass numerous samples from various conditions, resulting in complex batch efects, thus necessitating reliable integration tools. While numerous batch integration tools exist for single-cell RNA sequencing data, inherent data characteristic diferences limit their efectiveness on scATAC-seq data. Existing integration methods for scATAC-seq data sufer from several fundamental limitations, such as disrupting the biological heterogeneity and focusing solely on low-dimensional correction, which may distort data and hinder downstream analysis. Here we propose Fountain, a deep learning framework for scATAC-seq data integration via rigorous barycentric mapping. Barycentric mapping transforms one data distribution to another in a principled and efective manner through optimal transport. By regularizing barycentric mapping with geometric data information, Fountain achieves accurate batch alignment while preserving biological heterogeneity. Comprehensive experiments across diverse real-world datasets demonstrate the advantages of Fountain over existing methods in batch correction and biological conservation. In addition, the trained Fountain model can integrate data from new batches alongside already integrated data without retraining, enabling continuous online data integration. Moreover, Fountain’s reconstruction strategy generates batch-corrected ATAC profles, improving the capture of cellular heterogeneity and revealing cell-type-specifc implications such as expression enrichment analysis and partitioned heritability analysis. 

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