High-throughput, microscope-based sorting to dissect cellular heterogeneity.
Nicholas HasleAnthony CookeSanjay SrivatsanHeather Z HuangJason J StephanyZachary KriegerDana JacksonWeiliang TangSriram PendyalaRaymond J MonnatCole TrapnellEmily M HatchDouglas M FowlerPublished in: Molecular systems biology (2021)
Microscopy is a powerful tool for characterizing complex cellular phenotypes, but linking these phenotypes to genotype or RNA expression at scale remains challenging. Here, we present Visual Cell Sorting, a method that physically separates hundreds of thousands of live cells based on their visual phenotype. Automated imaging and phenotypic analysis directs selective illumination of Dendra2, a photoconvertible fluorescent protein expressed in live cells; these photoactivated cells are then isolated using fluorescence-activated cell sorting. First, we use Visual Cell Sorting to assess hundreds of nuclear localization sequence variants in a pooled format, identifying variants that improve nuclear localization and enabling annotation of nuclear localization sequences in thousands of human proteins. Second, we recover cells that retain normal nuclear morphologies after paclitaxel treatment, and then derive their single-cell transcriptomes to identify pathways associated with paclitaxel resistance in cancers. Unlike alternative methods, Visual Cell Sorting depends on inexpensive reagents and commercially available hardware. As such, it can be readily deployed to uncover the relationships between visual cellular phenotypes and internal states, including genotypes and gene expression programs.
Keyphrases
- single cell
- high throughput
- induced apoptosis
- rna seq
- cell cycle arrest
- gene expression
- signaling pathway
- stem cells
- machine learning
- cell death
- clinical trial
- randomized controlled trial
- public health
- deep learning
- small molecule
- long non coding rna
- quantum dots
- high speed
- genome wide
- label free
- fluorescence imaging
- induced pluripotent stem cells
- open label
- amino acid