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Systematic evaluation of single-cell multimodal data integration for comprehensive human reference atlas.

Publication date: 2025-03-06

Author:

Acera-Mateos, Mario
Adiconis, Xian ; Li, Jessica-Kanglin ; Marchese, Domenica ; Caratù, Ginevra ; Hon, Chung-Chau ; Tiwari, Prabha ; Kojima, Miki ; Vieth, Beate ; Murphy, Michael A ; Simmons, Sean K ; Lefevre, Thomas ; Claes, Irene ; O'Connor, Christopher L ; Menon, Rajasree ; Otto, Edgar A ; Ando, Yoshinari ; Vandereyken, Katy ; Kretzler, Matthias ; Bitzer, Markus ; Fraenkel, Ernest ; Voet, Thierry ; Enard, Wolfgang ; Carninci, Piero ; Heyn, Holger ; Levin, Joshua Z ; Mereu, Elisabetta

Abstract:

The integration of multimodal single-cell data enables comprehensive organ reference atlases, yet its impact remains largely unexplored, particularly in complex tissues. We generated a benchmarking dataset for the renal cortex by integrating 3' and 5' scRNA-seq with joint snRNA-seq and snATAC-seq, profiling 119,744 high-quality nuclei/cells from 19 donors. To align cell identities and enable consistent comparisons, we developed the interpretable machine learning tool scOMM (single-cell Omics Multimodal Mapping) and systematically assessed integration strategies. "Horizontal" integration of scRNA and snRNA-seq improved cell-type identification, while "vertical" integration of snRNA-seq and snATAC-seq had an additive effect, enhancing resolution in homogeneous populations and difficult-to-identify states. Global integration was especially effective in identifying adaptive states and rare cell types, including WFDC2-expressing Thick Ascending Limb and Norn cells, previously undetected in kidney atlases. Our work establishes a robust framework for multimodal reference atlas generation, advancing single-cell analysis and extending its applicability to diverse tissues.