Machine learning classifier of tumor cells
ikarus is a stepwise machine learning pipeline that tries to cope with a task of distinguishing tumor cells from normal cells. Leveraging multiple annotated single cell datasets it can be used to define a gene set specific to tumor cells. First, the latter gene set is used to rank cells and then to train a logistic classifier for the robust classification of tumor and normal cells. Finally, sensitivity is increased by propagating the cell labels based on a custom cell-cell network. ikarus is tested on multiple single cell datasets to ascertain that it achieves high sensitivity and specificity in multiple experimental contexts.
System | Target | Derivation | Build status |
---|---|---|---|
x86_64-linux | /gnu/store/r7bj0dn4j1iws8kda99n6g22jwgmqbic-python-ikarus-0.0.2.drv |
Linter | Message | Location |
---|---|---|
No lint warnings ✓ |