Neural nets supplant marker genes in analyzing single cell RNA sequencing
Tuesday, November 13, 2018 - 05:20
in Biology & Nature
Computer scientists at Carnegie Mellon University say neural networks and supervised machine learning techniques can efficiently characterize cells that have been studied using single cell RNA-sequencing (scRNA-seq). This finding could help researchers identify new cell subtypes and differentiate between healthy and diseased cells.