Bioinformatics Data Analysis Pipeline- Single Cell RNA-Seq
 
      Bioinformatics Data Analysis Pipeline- Single Cell RNA-Seq
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          Cell Ranger
        
                  A set of analysis pipelines that perform sample demultiplexing, barcode processing, single cell 3' and 5' gene counting, V(D)J transcript sequence assembly and annotation and Feature Barcode analysis from single cell data. Reference: PMID: 28091601 Contact: Qin Ma 
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          Seurat
        
                  Seurat is an R package designed for QC, analysis, and exploration of single-cell RNA-seq data. Seurat aims to enable users to identify and interpret sources of heterogeneity from single-cell transcriptomic measurements and to integrate diverse types of single-cell data. Reference: PMID: 37231261 Contact: Qin Ma 
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          Monocole3
        
                  An unsupervised algorithm to infer transcriptome dynamics of a temporal process such as cell differentiation using single-cell RNA-Seq data. Reference: PMID: 24658644 Contact: Qin Ma 
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          Slingshot
        
                  A method for inferring cell lineages and pseudotimes from single-cell gene expression data. Reference: PMID: 29914354 Contact: Qin Ma 
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          SingleR
        
                  A computational framework for the annotation of scRNA-seq by reference to bulk transcriptomes. Reference: PMID: 30643263 Contact: Qin Ma 
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          ScType
        
                  A fully-automated and ultra-fast cell-type identification based solely on a given scRNA-seq data, along with a comprehensive cell marker database as background information. Reference: PMID: 35273156 Contact: Qin Ma 
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          Azimuth
        
                  A web application that uses an annotated reference dataset to automate the processing, analysis and interpretation of a new single-cell RNA-seq or ATAC-seq experiment. Reference: PMID: 31178118 Contact: Qin Ma 
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          Scanpy
        
                  A scalable toolkit for analyzing single-cell gene expression data. It includes preprocessing, visualization, clustering, trajectory inference and differential expression testing. Reference: PMID: 29409532 Contact: Qin Ma 
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          Harmony
        
                  An algorithm that projects cells into a shared embedding in which cells group by cell type rather than dataset-specific conditions. Reference: PMID: 31740819 Contact: Qin Ma 
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          MAGIC
        
                  A method that shares information across similar cells, via data diffusion, to denoise the cell count matrix and fill in missing transcripts. Reference: PMID: 29961576 Contact: Qin Ma 
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          CellChat
        
                  A tool that is able to quantitatively infer and analyze intercellular communication networks from single-cell RNA-sequencing (scRNA-seq) data Reference: PMID: 33597522 Contact: Qin Ma 
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          IRIS3
        
                  A web server for active regulons within a specific cell type, i.e., cell-type-specific regulons (CTSR), inference from scRNA-Seq data for human and mouse Reference: PMID: 32421805 Contact: Qin Ma 
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          ScGNN
        
                  scGNN (single-cell graph neural network) can provide a hypothesis-free deep learning framework for scRNA-Seq analyses. scGNN provides an effective representation of gene expression and cell–cell relationships. It is also a powerful framework that can be applied to general scRNA-Seq analyses. Reference: PMID: 33767197 Contact: Qin Ma