2023
DOI: 10.1101/2023.11.13.566846
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scLKME: A Landmark-based Approach for Generating Multi-cellular Sample Embeddings from Single-cell Data

Haidong Yi,
Natalie Stanley

Abstract: Single-cell technologies enable high-dimensional profiling of individual cells, therefore offering profound insights into subtle variation between specialized cell-types. However, translating the multitude of nuanced cellular profiles into meaningful per-sample representations is challenging due to heterogeneous cellular composition across individual profiled samples. To compute informative per-sample representations, we developed scLKME, a novel approach that uses a landmark-based kernel mean embedding method… Show more

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