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Title: | EcTracker: Tracking and elucidating ectopic expression leveraging large-scale scRNA-seq studies |
Authors: | Gautam, V. Mittal, A. Kalra, S. Mohanty, S.K. Gupta, K. Rani, K. Naidu, S. Mishra, T. Sengupta, D. Ahuja, G. |
Keywords: | AUCell Ectopic expression Seurat Shiny Single-cell Web server |
Issue Date: | 18-Aug-2022 |
Abstract: | Dramatic genomic alterations, either inducible or in a pathological state, dismantle the core regulatory networks, leading to the activation of normally silent genes. Despite possessing immense therapeutic potential, accurate detection of these transcripts is an ever-challenging task, as it requires prior knowledge of the physiological gene expression levels. Here, we introduce EcTracker, an R-/Shiny-based single-cell data analysis web server that bestows a plethora of functionalities that collectively enable the quantitative and qualitative assessments of bona fide cell types or tissue-specific transcripts and, conversely, the ectopically expressed genes in the single-cell ribonucleic acid sequencing datasets. Moreover, it also allows regulon analysis to identify the key transcriptional factors regulating the user-selected gene signatures. To demonstrate the EcTracker functionality, we reanalyzed the CRISPR interference (CRISPRi) dataset of the human embryonic stem cells differentiated into endoderm lineage and identified the prominent enrichment of a specific gene signature in the SMAD2 knockout cells whose identity was ambiguous in the original study. The key distinguishing features of EcTracker lie within its processing speed, availability of multiple add-on modules, interactive graphical user interface and comprehensiveness. In summary, EcTracker provides an easy-to-perform, integrative and end-to-end single-cell data analysis platform that allows decoding of cellular identities, identification of ectopically expressed genes and their regulatory networks, and therefore, collectively imparts a novel dimension for analyzing single-cell datasets. |
URI: | http://localhost:8080/xmlui/handle/123456789/3831 |
Appears in Collections: | Year-2021 |
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