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Machine learning sequence prioritization for cell type-specific enhancer design

Authors :
Alyssa J Lawler
Easwaran Ramamurthy
Ashley R Brown
Naomi Shin
Yeonju Kim
Noelle Toong
Irene M Kaplow
Morgan Wirthlin
Xiaoyu Zhang
BaDoi N Phan
Grant A Fox
Kirsten Wade
Jing He
Bilge Esin Ozturk
Leah C Byrne
William R Stauffer
Kenneth N Fish
Andreas R Pfenning
Source :
eLife, Vol 11 (2022)
Publication Year :
2022
Publisher :
eLife Sciences Publications Ltd, 2022.

Abstract

Recent discoveries of extreme cellular diversity in the brain warrant rapid development of technologies to access specific cell populations within heterogeneous tissue. Available approaches for engineering-targeted technologies for new neuron subtypes are low yield, involving intensive transgenic strain or virus screening. Here, we present Specific Nuclear-Anchored Independent Labeling (SNAIL), an improved virus-based strategy for cell labeling and nuclear isolation from heterogeneous tissue. SNAIL works by leveraging machine learning and other computational approaches to identify DNA sequence features that confer cell type-specific gene activation and then make a probe that drives an affinity purification-compatible reporter gene. As a proof of concept, we designed and validated two novel SNAIL probes that target parvalbumin-expressing (PV+) neurons. Nuclear isolation using SNAIL in wild-type mice is sufficient to capture characteristic open chromatin features of PV+ neurons in the cortex, striatum, and external globus pallidus. The SNAIL framework also has high utility for multispecies cell probe engineering; expression from a mouse PV+ SNAIL enhancer sequence was enriched in PV+ neurons of the macaque cortex. Expansion of this technology has broad applications in cell type-specific observation, manipulation, and therapeutics across species and disease models.

Details

Language :
English
ISSN :
2050084X
Volume :
11
Database :
Directory of Open Access Journals
Journal :
eLife
Publication Type :
Academic Journal
Accession number :
edsdoj.95df1d9dbb294e8484fc20dc51bd5aec
Document Type :
article
Full Text :
https://doi.org/10.7554/eLife.69571