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    RNA-seq数据分析

    生物信息分析
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    • A
      anneng 最后由 编辑

      http://www.noncode.org/download.php
      Gencode:
      http://www.gencodegenes.org/releases/24.html (hg38/GRch38)
      http://www.gencodegenes.org/releases/19.html (hg19/GRCh37)

      Ensembl:
      ftp://ftp.ensembl.org/pub/release-75/gtf/homo_sapiens/ (hg19/GRCh37)
      ftp://ftp.ensembl.org/pub/release-84/gtf/homo_sapiens/ (hg38/GRch38)

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      • A
        anneng 最后由 anneng 编辑

        af77263e-3a57-42e9-b0d7-dd10391b3855-image.png
        https://github.com/Jeanielmj/bioinformatics-workshop/wiki/The-Tuxedo-Pipeline

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        • A
          anneng 最后由 编辑

          https://wikis.utexas.edu/display/bioiteam/Running+the+new+tuxedo+suite

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          • A
            anneng 最后由 编辑

            Mapping to the transcriptome with BWA
            https://angus.readthedocs.io/en/2013/rnaseq_bwa.html
            In this tutorial, we’ll begin by mapping reads from an RNA-seq study involving Drosophila melanogaster to a reference transcriptome. First, make sure you have BWA and SAMTools installed. Next, you will need to download the reference transcriptome:

            mkdir bwa_transcriptome
            cd bwa_transcriptome
            curl -O -L ftp://ftp.flybase.net/releases/current/dmel_r5.51/fasta/dmel-all-transcript-r5.51.fasta.gz
            gunzip dmel-all-transcript-r5.51.fasta.gz
            How many transcripts are encoded in this file? Let’s look at the file manually first:

            less dmel-all-transcript-r5.51.fasta
            Notice the fasta format; each line beginning with a > is a new sequence, followed by another line (or multiple lines) containing the sequence itself. If we want to count how many transcripts are in the file, we can just count the number of lines that begin with >

            grep '>' | wc -l
            You should see 28826.

            Next, we need to prepare the file for use with BWA. The first step is to index it:

            bwa index dmel-all-transcript-r5.51.fasta
            Next, we can map our paired-end sequence reads to the transcriptome. To make our code a little more readable and flexible, we’ll use shell variables in place of the actual file names. In this case, let’s first specify what the values of those variables should be:

            reference=dmel-all-transcript-r5.51.fasta
            reads_1=OREf_SAMm_vg1_CTTGTA_L005_R1_001.fastq
            reads_2=OREf_SAMm_vg1_CTTGTA_L005_R2_001.fastq
            output=vg_1
            Now we can use these variable names in our mapping commands. The advantage here is that we can just change the variables later on if we want to apply the same pipeline to a new set of samples (which we do):

            bwa mem ${reference} ${reads_1} ${reads_2} > ${output}.sam
            This command will output a file named vg_1.sam in the current working directory. Next, we want to use SAMTools to convert it to a BAM, and then sort and index it:

            samtools import ${reference}.fai ${output}.sam ${output}.unsorted.bam
            samtools sort ${output}.unsorted.bam ${output}
            samtools index ${output}.bam
            Next, you can use your existing knowledge to view the mappings, plot the distribution of mismatch positions, etc.

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            • A
              anneng 最后由 编辑

              https://colauttilab.github.io/NGS/TuxedoTutorial.html

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              • A
                anneng 最后由 编辑

                https://www.frontiersin.org/articles/10.3389/fbinf.2021.693836/full

                reads normalization,
                scatter plots,
                linear/non-linear correlations,
                PCA,
                clustering (hierarchical, k-means, t-SNE, SOM),
                differential expression analyses,
                pathway enrichments,
                evolutionary analyses,
                pathological analyses,
                and protein-protein interaction (PPI) identifications.

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                • A
                  anneng 最后由 编辑

                  https://bmcbioinformatics.biomedcentral.com/articles/10.1186/s12859-020-03549-8
                  BEAVR: a browser-based tool for the exploration and visualization of RNA-seq data

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                  • A
                    anneng 最后由 anneng 编辑

                    http://master.bioconductor.org/packages/release/workflows/vignettes/rnaseqGene/inst/doc/rnaseqGene.html
                    RNA-seq workflow: gene-level exploratory analysis and differential expression
                    http://bioconductor.org/packages/devel/bioc/vignettes/DESeq2/inst/doc/DESeq2.html

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                    • A
                      anneng 最后由 编辑

                      https://hbctraining.github.io/scRNA-seq/lessons/02_SC_generation_of_count_matrix.html

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                      • A
                        anneng 最后由 anneng 编辑

                        https://atap.psu.ac.th/
                        8be88f04-d309-4ecd-900a-303e0392a8f1-image.png

                        efe037d1-b654-4644-98a9-8df56d930848-image.png

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                        • A
                          anneng 最后由 编辑

                          https://degust.erc.monash.edu/

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                          • A
                            anneng 最后由 编辑

                            https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9130758/

                            使用Python分析RNA数据 所缺少的功能

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                            • A
                              anneng 最后由 编辑

                              https://www.reneshbedre.com/blog/expression_units.html
                              Gene expression units explained: RPM, RPKM, FPKM, TPM, DESeq, TMM, SCnorm, GeTMM, and ComBat-Seq

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                              • A
                                anneng 最后由 编辑

                                https://genomebiology.biomedcentral.com/articles/10.1186/s13059-016-0881-8
                                bd9de7d6-7cc3-4549-81a1-04adac405cd8-image.png
                                d285d118-6465-41ea-9fbe-bdfeb222b3a0-image.png

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                                • A
                                  anneng 最后由 编辑

                                  https://www.intechopen.com/chapters/55603
                                  RNA‐seq: Applications and Best Practices
                                  5c7992d7-783e-4ea2-9839-d073454194ba-image.png

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                                  • A
                                    anneng 最后由 编辑

                                    https://geoexplorer.rosalind.kcl.ac.uk/

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