A rank-based marker selection method for high throughput scRNA-seq data

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作者
Alexander H. S. Vargo
Anna C. Gilbert
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[1] University of Michigan,Department of Mathematics
[2] Department of Mathematics,undefined
[3] Yale University,undefined
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Single cell RNA-seq; Marker selection; Machine learning; Data analysis; Algorithms; Benchmarking;
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