GeoTyper: Automated Pipeline from Raw scRNA-Seq Data to Cell Type Identification
Cecily Wolfe, Yayi Feng, David Chen, Edwin Purcell, Anne Talkington,, Sepideh Dolatshahi, Heman Shakeri

TL;DR
GeoTyper is an automated pipeline that standardizes the processing, visualization, and cell type identification of raw scRNA-seq data from NCBI GEO, aiding cancer microenvironment analysis.
Contribution
It introduces a comprehensive, standardized workflow integrating existing tools for scRNA-seq data analysis from raw data to cell type identification.
Findings
Successfully validated on multiple datasets
Clusters correspond to known cell types
Facilitates identification of therapeutic targets
Abstract
The cellular composition of the tumor microenvironment can directly impact cancer progression and the efficacy of therapeutics. Understanding immune cell activity, the body's natural defense mechanism, in the vicinity of cancerous cells is essential for developing beneficial treatments. Single cell RNA sequencing (scRNA-seq) enables the examination of gene expression on an individual cell basis, providing crucial information regarding both the disturbances in cell functioning caused by cancer and cell-cell communication in the tumor microenvironment. This novel technique generates large amounts of data, which require proper processing. Various tools exist to facilitate this processing but need to be organized to standardize the workflow from data wrangling to visualization, cell type identification, and analysis of changes in cellular activity, both from the standpoint of malignant…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Cancer Genomics and Diagnostics · Molecular Biology Techniques and Applications
