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  • Martin, Beth K; Qiu, Chengxiang; Nichols, Eva; Phung, Melissa; Green-Gladden, Rula; Srivatsan, Sanjay; Blecher-Gonen, Ronnie; Beliveau, Brian J; Cole Trapnell; Cao, Junyue; Shendure, Jay

    arXiv (Cornell University), 01/2022
    Paper, Journal Article

    Single cell combinatorial indexing RNA sequencing (sci-RNA-seq) is a powerful method for recovering gene expression data from an exponentially scalable number of individual cells or nuclei. However, sci-RNA-seq is a complex protocol that has historically exhibited variable performance on different tissues, as well as lower sensitivity than alternative methods. Here we report a simplified, optimized version of the three-level sci-RNA-seq protocol that is faster, higher yield, more robust, and more sensitive, than the original sci-RNA-seq3 protocol, with reagent costs on the order of 1 cent per cell or less. We showcase the optimized protocol via whole organism analysis of an E16.5 mouse embryo, profiling ~380,000 nuclei in a single experiment. Finally, we introduce a "tiny sci-*" protocol for experiments where input is extremely limited.