Webinar: A Single-Cell Multiomics Workflow: Impact of Human Disease Variants on Relevant Cell States
Advances in genetics and sequencing have identified a plethora of disease-associated genetic alterations. To determine causality between genetics and disease, accurate models for molecular dissection are required; however, the rapid expansion of transcriptional populations identified through single-cell analyses presents a major challenge for accurate mutant vs. wild-type comparisons.
To address this, a team at Cincinnati Children’s Hospital Medical Center explored a single-cell multiomics workflow to analyze newly generated mouse models of human severe congenital neutropenia (SCN) bearing patient-derived mutations in the GFI1 transcription factor. In this webinar, David Muench, post-doctoral research scientist, describes the work the team did to generate single-cell references for granulopoietic genomic states using CITE-Seq before aligning mutant cells to their wild-type equivalents to ultimately identify differentially expressed genes and epigenetic loci.
You will learn about:
- How a multiomics approach greatly improves the precision of molecular analyses.
- Why a single mutation affects each cell state differently.
- Why single-cell analyses are critical to accurately understand the impact of mutations or therapy.
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