scGALA advances graph link prediction-based cell alignment for comprehensive data integration and harmonization
(2025) In Nature Communications 16(1).- Abstract
Single-cell technologies have transformed our understanding of cellular heterogeneity through multimodal data acquisition. However, robust cell alignment remains a major challenge for data integration and harmonization, including batch correction, label transfer, and multi-omics integration. Many existing methods constrain alignment based on rigid feature-wise distance metrics, limiting their ability to capture accurate cell correspondence across diverse cell populations and conditions. We introduce scGALA, a graph-based learning framework that redefines cell alignment by combining graph attention networks with a score-driven, task-independent optimization strategy. scGALA constructs enriched graphs of cell-cell relationships by... (More)
Single-cell technologies have transformed our understanding of cellular heterogeneity through multimodal data acquisition. However, robust cell alignment remains a major challenge for data integration and harmonization, including batch correction, label transfer, and multi-omics integration. Many existing methods constrain alignment based on rigid feature-wise distance metrics, limiting their ability to capture accurate cell correspondence across diverse cell populations and conditions. We introduce scGALA, a graph-based learning framework that redefines cell alignment by combining graph attention networks with a score-driven, task-independent optimization strategy. scGALA constructs enriched graphs of cell-cell relationships by integrating gene expression profiles with auxiliary information, such as spatial coordinates, and iteratively refines alignment via self-supervised graph link prediction, where a deep neural network is trained to identify and reinforce high-confidence correspondences across datasets. In extensive benchmarks, scGALA identifies over 25 percent more high-confidence alignments without compromising accuracy. By improving the core step of cell alignment, scGALA serves as a versatile enhancer for a wide range of single-cell data integration tasks.
(Less)
- author
- Jiang, Guo
; Song, Kailu
; Fonseca, Gregory J.
; Wagner, Darcy E.
LU
; Clark, Iain C.
; Wang, Hui
and Ding, Jun
- organization
-
- LU Profile Area: Light and Materials
- LTH Profile Area: Nanoscience and Semiconductor Technology
- LTH Profile Area: Engineering Health
- NanoLund: Centre for Nanoscience
- LUCC: Lund University Cancer Centre
- WCMM-Wallenberg Centre for Molecular Medicine
- StemTherapy: National Initiative on Stem Cells for Regenerative Therapy
- Lung Bioengineering and Regeneration (research group)
- publishing date
- 2025-12
- type
- Contribution to journal
- publication status
- published
- subject
- in
- Nature Communications
- volume
- 16
- issue
- 1
- article number
- 11656
- publisher
- Nature Publishing Group
- external identifiers
-
- pmid:41298467
- scopus:105026289313
- ISSN
- 2041-1723
- DOI
- 10.1038/s41467-025-66644-5
- language
- English
- LU publication?
- yes
- id
- 690326c9-fd03-4741-902e-6a4c1529bea0
- date added to LUP
- 2026-02-11 13:07:07
- date last changed
- 2026-05-21 03:31:38
@article{690326c9-fd03-4741-902e-6a4c1529bea0,
abstract = {{<p>Single-cell technologies have transformed our understanding of cellular heterogeneity through multimodal data acquisition. However, robust cell alignment remains a major challenge for data integration and harmonization, including batch correction, label transfer, and multi-omics integration. Many existing methods constrain alignment based on rigid feature-wise distance metrics, limiting their ability to capture accurate cell correspondence across diverse cell populations and conditions. We introduce scGALA, a graph-based learning framework that redefines cell alignment by combining graph attention networks with a score-driven, task-independent optimization strategy. scGALA constructs enriched graphs of cell-cell relationships by integrating gene expression profiles with auxiliary information, such as spatial coordinates, and iteratively refines alignment via self-supervised graph link prediction, where a deep neural network is trained to identify and reinforce high-confidence correspondences across datasets. In extensive benchmarks, scGALA identifies over 25 percent more high-confidence alignments without compromising accuracy. By improving the core step of cell alignment, scGALA serves as a versatile enhancer for a wide range of single-cell data integration tasks.</p>}},
author = {{Jiang, Guo and Song, Kailu and Fonseca, Gregory J. and Wagner, Darcy E. and Clark, Iain C. and Wang, Hui and Ding, Jun}},
issn = {{2041-1723}},
language = {{eng}},
number = {{1}},
publisher = {{Nature Publishing Group}},
series = {{Nature Communications}},
title = {{scGALA advances graph link prediction-based cell alignment for comprehensive data integration and harmonization}},
url = {{http://dx.doi.org/10.1038/s41467-025-66644-5}},
doi = {{10.1038/s41467-025-66644-5}},
volume = {{16}},
year = {{2025}},
}