CoRAL

The CoRAL (Consensus Reference-based Automated Labeling) pipeline, is an open-source tool that uses a weighted consensus strategy to predict cell type identity from single-cell brain reference atlases. Developed in the laboratory of Claudia Kleinman, PhD this automated platform currently incorporates predictions from 19 different machine learning-based tools, outperforming individual tools in a cell annotation task, and allowing to obtain, for disease samples, a quantitative estimation of pathological deviations from healthy. 

CoRAL is continually updated by members of the  to incorporate newly available tools and information. The most recent updates integrated a weighted consensus to the analysis to prioritize predictions based on tool performance. This Open Science tool, prioritizing easy installation and running, is available for all researchers looking to analyze single-cell

data on the Github page of the Kleinman Lab. 

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