Genome Biology (May 2022)

Bi-order multimodal integration of single-cell data

  • Jinzhuang Dou,
  • Shaoheng Liang,
  • Vakul Mohanty,
  • Qi Miao,
  • Yuefan Huang,
  • Qingnan Liang,
  • Xuesen Cheng,
  • Sangbae Kim,
  • Jongsu Choi,
  • Yumei Li,
  • Li Li,
  • May Daher,
  • Rafet Basar,
  • Katayoun Rezvani,
  • Rui Chen,
  • Ken Chen

DOI
https://doi.org/10.1186/s13059-022-02679-x
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 25

Abstract

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Abstract Integration of single-cell multiomics profiles generated by different single-cell technologies from the same biological sample is still challenging. Previous approaches based on shared features have only provided approximate solutions. Here, we present a novel mathematical solution named bi-order canonical correlation analysis (bi-CCA), which extends the widely used CCA approach to iteratively align the rows and the columns between data matrices. Bi-CCA is generally applicable to combinations of any two single-cell modalities. Validations using co-assayed ground truth data and application to a CAR-NK study and a fetal muscle atlas demonstrate its capability in generating accurate multimodal co-embeddings and discovering cellular identity.

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