Authors
Michael A Skinnider, Jordan W Squair, Claudia Kathe, Mark A Anderson, Matthieu Gautier, Kaya JE Matson, Marco Milano, Thomas H Hutson, Quentin Barraud, Aaron A Phillips, Leonard J Foster, Gioele La Manno, Ariel J Levine, Grégoire Courtine
Publication date
2021/1
Journal
Nature biotechnology
Volume
39
Issue
1
Pages
30-34
Publisher
Nature Publishing Group US
Description
We present Augur, a method to prioritize the cell types most responsive to biological perturbations in single-cell data. Augur employs a machine-learning framework to quantify the separability of perturbed and unperturbed cells within a high-dimensional space. We validate our method on single-cell RNA sequencing, chromatin accessibility and imaging transcriptomics datasets, and show that Augur outperforms existing methods based on differential gene expression. Augur identified the neural circuits restoring locomotion in mice following spinal cord neurostimulation.
Total citations
20202021202220232024419274335
Scholar articles
MA Skinnider, JW Squair, C Kathe, MA Anderson… - Nature biotechnology, 2021