Identifying tumor cells at the single-cell level using machine learning

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Abstract

Tumors are complex tissues of cancerous cells surrounded by a heterogeneous cellular microenvironment with which they interact. Single-cell sequencing enables molecular characterization of single cells within the tumor. However, cell annotation—the assignment of cell type or cell state to each sequenced cell—is a challenge, especially identifying tumor cells within single-cell or spatial sequencing experiments. Here, we propose ikarus, a machine learning pipeline aimed at distinguishing tumor cells from normal cells at the single-cell level. We test ikarus on multiple single-cell datasets, showing that it achieves high sensitivity and specificity in multiple experimental contexts.

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Dohmen, J., Baranovskii, A., Ronen, J., Uyar, B., Franke, V., & Akalin, A. (2022). Identifying tumor cells at the single-cell level using machine learning. Genome Biology, 23(1). https://doi.org/10.1186/s13059-022-02683-1

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