4.5 Article

Single-Cell Multiomics Integration by SCOT

期刊

JOURNAL OF COMPUTATIONAL BIOLOGY
卷 29, 期 1, 页码 19-22

出版社

MARY ANN LIEBERT, INC
DOI: 10.1089/cmb.2021.0477

关键词

data integration; manifold alignment; multiomics; optimal transport; single-cell genomics

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Single-cell alignment using optimal transport (SCOT) is an unsupervised algorithm that aligns single-cell multiomics data by constructing k-nearest neighbor (k-NN) graphs and using coupling matrices.
Although the availability of various sequencing technologies allows us to capture different genome properties at single-cell resolution, with the exception of a few co-assaying technologies, applying different sequencing assays on the same single cell is impossible. Single-cell alignment using optimal transport (SCOT) is an unsupervised algorithm that addresses this limitation by using optimal transport to align single-cell multiomics data. First, it preserves the local geometry by constructing a k-nearest neighbor (k-NN) graph for each data set (or domain) to capture the intra-domain distances. SCOT then finds a probabilistic coupling matrix that minimizes the discrepancy between the intra-domain distance matrices. Finally, it uses the coupling matrix to project one single-cell data set onto another through barycentric projection, thus aligning them. SCOT requires tuning only two hyperparameters and is robust to the choice of one. Furthermore, the Gromov-Wasserstein distance in the algorithm can guide SCOT's hyperparameter tuning in a fully unsupervised setting when no orthogonal alignment information is available. Thus, SCOT is a fast and accurate alignment method that provides a heuristic for hyperparameter selection in a real-world unsupervised single-cell data alignment scenario. We provide a tutorial for SCOT and make its source code publicly available on GitHub.

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