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	<title><![CDATA[BOL: Related items]]></title>
	<link>https://bioinformaticsonline.com/related/21150?offset=160</link>
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	<description><![CDATA[]]></description>
	
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/42419/biojupies-automatically-generates-rna-seq-data-analysis-notebooks</guid>
	<pubDate>Sun, 20 Dec 2020 11:43:45 -0600</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/42419/biojupies-automatically-generates-rna-seq-data-analysis-notebooks</link>
	<title><![CDATA[BioJupies: Automatically Generates RNA-seq Data Analysis Notebooks]]></title>
	<description><![CDATA[<p>With BioJupies you can produce in seconds a customized, reusable, and interactive report from your own raw or processed RNA-seq data through a simple user interface</p>
<p>BioJupies now supports user accounts! Sign in from the top right corner of the page for access to unlimited private notebooks, RNA-seq datasets and alignment jobs.</p><p>Address of the bookmark: <a href="https://amp.pharm.mssm.edu/biojupies/" rel="nofollow">https://amp.pharm.mssm.edu/biojupies/</a></p>]]></description>
	<dc:creator>Rahul Nayak</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/43447/rna-seq-workflow-gene-level-exploratory-analysis-and-differential-expression</guid>
	<pubDate>Sat, 09 Oct 2021 07:59:23 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/43447/rna-seq-workflow-gene-level-exploratory-analysis-and-differential-expression</link>
	<title><![CDATA[RNA-seq workflow: gene-level exploratory analysis and differential expression]]></title>
	<description><![CDATA[<p><span>Here we walk through an end-to-end gene-level RNA-seq differential expression workflow using Bioconductor packages. We will start from the FASTQ files, show how these were quantified to the reference transcripts, and prepare gene-level count datasets for downstream analysis. We will perform exploratory data analysis (EDA) for quality assessment and to explore the relationship between samples, perform differential gene expression analysis, and visually explore the results.</span></p><p>Address of the bookmark: <a href="http://master.bioconductor.org/packages/release/workflows/vignettes/rnaseqGene/inst/doc/rnaseqGene.html" rel="nofollow">http://master.bioconductor.org/packages/release/workflows/vignettes/rnaseqGene/inst/doc/rnaseqGene.html</a></p>]]></description>
	<dc:creator>Jit</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/23582/integrative-rna-and-chip-seq-analysis-of-regulatory-t-cells</guid>
	<pubDate>Tue, 04 Aug 2015 05:03:19 -0500</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/23582/integrative-rna-and-chip-seq-analysis-of-regulatory-t-cells</link>
	<title><![CDATA[Integrative RNA and ChIP-Seq analysis of regulatory T-cells]]></title>
	<description><![CDATA[<p><a href="http://www.strand-ngs.com/learn/white-papers#rna-chip" target="_blank" title="strand ngs white paper">Integrative RNA and ChIP-Seq analysis of regulatory T-cells&nbsp;</a><span>, a Strand NGS application note describes how integrated multi-omics functionality in Strand NGS was used to find the regulatory role of FoxP3 in T-regulatory and T-helper cells. Learn how the gene expression profiles from RNA-Seq and FoxP3 DNA-protein binding sites from ChIP-Seq are integrated. For mor information,&nbsp;</span><a href="http://www.strand-ngs.com/contact/sales" target="_blank" title="strand ngs contact">please write to us</a></p>]]></description>
	<dc:creator>Strand</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/38623/kallisto-a-program-for-quantifying-abundances-of-transcripts-from-bulk-and-single-cell-rna-seq-data</guid>
	<pubDate>Mon, 07 Jan 2019 10:35:14 -0600</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/38623/kallisto-a-program-for-quantifying-abundances-of-transcripts-from-bulk-and-single-cell-rna-seq-data</link>
	<title><![CDATA[kallisto: a program for quantifying abundances of transcripts from bulk and single-cell RNA-Seq data]]></title>
	<description><![CDATA[<p><strong>kallisto</strong>&nbsp;is a program for quantifying abundances of transcripts from bulk and single-cell RNA-Seq data, or more generally of target sequences using high-throughput sequencing reads. It is based on the novel idea of&nbsp;<em>pseudoalignment</em>&nbsp;for rapidly determining the compatibility of reads with targets, without the need for alignment. On benchmarks with standard RNA-Seq data,&nbsp;<strong>kallisto</strong>&nbsp;can quantify 30 million human reads in less than 3 minutes on a Mac desktop computer using only the read sequences and a transcriptome index that itself takes less than 10 minutes to build. Pseudoalignment of reads preserves the key information needed for quantification, and&nbsp;<strong>kallisto</strong>&nbsp;is therefore not only fast, but also as accurate as existing quantification tools. In fact, because the pseudoalignment procedure is robust to errors in the reads, in many benchmarks&nbsp;<strong>kallisto</strong>&nbsp;significantly outperforms existing tools.&nbsp;<strong>kallisto</strong>&nbsp;is described in detail in:</p>
<p>Nicolas L Bray, Harold Pimentel, P&aacute;ll Melsted and Lior Pachter,&nbsp;<a href="http://www.nature.com/nbt/journal/v34/n5/full/nbt.3519.html">Near-optimal probabilistic RNA-seq quantification</a>, Nature Biotechnology&nbsp;<strong>34</strong>, 525&ndash;527 (2016), doi:10.1038/nbt.3519</p><p>Address of the bookmark: <a href="https://pachterlab.github.io/kallisto/about" rel="nofollow">https://pachterlab.github.io/kallisto/about</a></p>]]></description>
	<dc:creator>Jit</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44707/rna-seq-analysis-a-guide-for-bioinformaticians</guid>
	<pubDate>Sat, 07 Dec 2024 22:22:24 -0600</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44707/rna-seq-analysis-a-guide-for-bioinformaticians</link>
	<title><![CDATA[RNA-Seq Analysis: A Guide for Bioinformaticians]]></title>
	<description><![CDATA[<p>RNA sequencing (RNA-Seq) has revolutionized transcriptomics, offering unprecedented insights into gene expression, splicing, and transcript diversity. For bioinformaticians, RNA-Seq analysis is a gateway to exploring the complexity of RNA biology and its implications in health and disease. This blog post provides an overview of RNA-Seq analysis, key computational steps, and tools for bioinformaticians eager to delve into this powerful technique.</p><h3>What is RNA-Seq?</h3><p>RNA-Seq is a next-generation sequencing (NGS) technology used to study the transcriptome&mdash;the complete set of RNA molecules in a cell. It quantifies gene expression, detects novel transcripts, and captures alternative splicing events with high sensitivity and resolution.</p><h3>Workflow for RNA-Seq Analysis</h3><p>RNA-Seq analysis involves several stages, each requiring computational tools and expertise.</p><h4>1. <strong>Experimental Design and Data Acquisition</strong></h4><p>Before diving into analysis, bioinformaticians should consider:</p><ul>
<li><strong>Biological Replicates</strong>: Ensure statistical power to detect meaningful differences.</li>
<li><strong>Sequencing Depth</strong>: Align sequencing depth to study objectives (e.g., higher depth for low-abundance transcripts).</li>
<li><strong>Paired-End vs. Single-End</strong>: Paired-end sequencing provides more detailed information on transcript structure.</li>
</ul><p>Once sequencing is complete, raw data is provided in FASTQ format, containing sequence reads and quality scores.</p><h4>2. <strong>Quality Control and Preprocessing</strong></h4><p>Quality control (QC) ensures data integrity. Tools such as <strong>FastQC</strong> evaluate metrics like base quality, GC content, and adapter contamination.</p><p><strong>Preprocessing Steps</strong>:</p><ul>
<li><strong>Trimming</strong>: Tools like <strong>Trimmomatic</strong> or <strong>Cutadapt</strong> remove low-quality bases and adapter sequences.</li>
<li><strong>Filtering</strong>: Discard reads below a certain quality threshold or length.</li>
</ul><h4>3. <strong>Read Alignment</strong></h4><p>Reads are mapped to a reference genome or transcriptome to determine their origin. Alignment tools include:</p><ul>
<li><strong>HISAT2</strong>: Handles large genomes efficiently and supports spliced alignments.</li>
<li><strong>STAR</strong>: High-speed aligner optimized for RNA-Seq.</li>
<li><strong>Bowtie2</strong>: Suitable for short-read alignment.</li>
</ul><p><strong>Output</strong>: A SAM/BAM file containing aligned reads.</p><h4>4. <strong>Transcript Assembly and Quantification</strong></h4><p>This step involves identifying transcripts and quantifying their expression levels. Tools used include:</p><ul>
<li><strong>StringTie</strong>: Assembles and quantifies transcripts from aligned reads.</li>
<li><strong>Salmon/Kallisto</strong>: Perform pseudo-alignment for rapid and accurate quantification.</li>
</ul><p>Expression levels are typically measured as TPM (transcripts per million) or FPKM (fragments per kilobase of transcript per million mapped reads).</p><h4>5. <strong>Differential Expression Analysis</strong></h4><p>To identify genes with altered expression between conditions, bioinformaticians use tools such as:</p><ul>
<li><strong>DESeq2</strong>: Accounts for data normalization and variability.</li>
<li><strong>edgeR</strong>: Handles overdispersed count data efficiently.</li>
<li><strong>Limma-voom</strong>: Combines linear modeling with RNA-Seq count data.</li>
</ul><p>The output includes a list of differentially expressed genes (DEGs) with statistical significance and fold-change values.</p><h4>6. <strong>Functional Annotation and Pathway Analysis</strong></h4><p>Understanding the biological significance of DEGs involves:</p><ul>
<li><strong>Gene Ontology (GO) Analysis</strong>: Tools like <strong>DAVID</strong> or <strong>clusterProfiler</strong> categorize genes based on their biological functions.</li>
<li><strong>Pathway Enrichment Analysis</strong>: Identifies pathways enriched in DEGs using tools like <strong>KEGG</strong>, <strong>Reactome</strong>, or <strong>GSEA</strong>.</li>
</ul><h4>7. <strong>Visualization</strong></h4><p>Visualizing results enhances interpretability. Common visualizations include:</p><ul>
<li><strong>Heatmaps</strong>: Show expression patterns across samples (e.g., <strong>pheatmap</strong>).</li>
<li><strong>Volcano Plots</strong>: Highlight significant DEGs (e.g., <strong>ggplot2</strong>).</li>
<li><strong>PCA/UMAP</strong>: Assess sample clustering and variability (e.g., <strong>Seurat</strong>).</li>
</ul><h3>Challenges in RNA-Seq Analysis</h3><ol>
<li><strong>Batch Effects</strong>: Technical variability can confound biological signals. Combat this with normalization techniques or batch-correction tools like <strong>ComBat</strong>.</li>
<li><strong>Low-Quality Samples</strong>: Poor-quality RNA impacts downstream analyses.</li>
<li><strong>Computational Complexity</strong>: RNA-Seq generates massive datasets, requiring robust computing resources and optimized pipelines.</li>
</ol><h3>Key Tools and Resources</h3><ul>
<li><strong>Bioconductor</strong>: A treasure trove of R packages for RNA-Seq analysis.</li>
<li><strong>Galaxy</strong>: A web-based platform for running RNA-Seq workflows.</li>
<li><strong>Nextflow/Snakemake</strong>: Workflow management tools to streamline analyses.</li>
</ul><h3>Applications of RNA-Seq</h3><p>RNA-Seq is used in diverse research areas, including:</p><ul>
<li><strong>Cancer Transcriptomics</strong>: Identifying tumor-specific expression profiles.</li>
<li><strong>Developmental Biology</strong>: Studying dynamic transcriptome changes.</li>
<li><strong>Drug Discovery</strong>: Screening genes modulated by therapeutic compounds.</li>
</ul><h3>Conclusion</h3><p>RNA-Seq analysis is a cornerstone of modern transcriptomics, offering bioinformaticians a versatile toolkit for unraveling gene expression and regulation. Mastering RNA-Seq workflows and tools empowers researchers to transform raw sequencing data into biological discoveries.</p><p>Whether you&rsquo;re investigating disease mechanisms, exploring cellular pathways, or developing new therapeutics, RNA-Seq is a powerful ally in your bioinformatics arsenal.</p>]]></description>
	<dc:creator>LEGE</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/35437/dupradar-package</guid>
	<pubDate>Sun, 04 Feb 2018 14:28:57 -0600</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/35437/dupradar-package</link>
	<title><![CDATA[dupRadar package]]></title>
	<description><![CDATA[<p><span>The&nbsp;</span><em>dupRadar</em><span>&nbsp;package gives an insight into the duplication problem by graphically relating the gene expression level and the duplication rate present on it. Thus, failed experiments can be easily identified at a glance</span></p><p>Address of the bookmark: <a href="https://bioconductor.org/packages/3.7/bioc/vignettes/dupRadar/inst/doc/dupRadar.html" rel="nofollow">https://bioconductor.org/packages/3.7/bioc/vignettes/dupRadar/inst/doc/dupRadar.html</a></p>]]></description>
	<dc:creator>Jit</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44626/meta-transcriptomics-dynamic-world-of-rna-in-diverse-environments</guid>
	<pubDate>Wed, 31 Jul 2024 02:40:49 -0500</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44626/meta-transcriptomics-dynamic-world-of-rna-in-diverse-environments</link>
	<title><![CDATA[Meta-Transcriptomics: Dynamic World of RNA in Diverse Environments]]></title>
	<description><![CDATA[<p>Meta-transcriptomics combines high-throughput sequencing technologies with computational biology to profile the RNA content of a sample. This technique allows researchers to capture a snapshot of gene expression and metabolic activities across diverse microbial communities, such as those found in soil, water, and the human gut.</p><p><strong>Key Components</strong></p><ol>
<li>
<p><strong>Sample Collection</strong>: Meta-transcriptomics begins with the collection of environmental samples. These samples are often complex, containing a wide range of microorganisms.</p>
</li>
<li>
<p><strong>RNA Extraction</strong>: RNA is extracted from the sample, which includes mRNA, rRNA, tRNA, and other non-coding RNAs. This step is crucial as it determines the quality and representativeness of the data.</p>
</li>
<li>
<p><strong>Sequencing</strong>: High-throughput RNA sequencing (RNA-seq) technologies are used to obtain sequences of the RNA transcripts. This step provides a vast amount of data on the RNA molecules present in the sample.</p>
</li>
<li>
<p><strong>Data Analysis</strong>: Computational tools and bioinformatics methods are employed to process and analyze the sequencing data. This involves mapping RNA sequences to reference genomes or transcriptomes, identifying expressed genes, and quantifying their abundance.</p>
</li>
<li>
<p><strong>Functional Annotation</strong>: The functional roles of identified transcripts are inferred based on known gene functions, allowing researchers to understand the metabolic and ecological functions of the microbial community.</p>
</li>
</ol><p><strong>Applications</strong></p><ol>
<li>
<p><strong>Environmental Monitoring</strong>: Meta-transcriptomics can be used to monitor the health and functional status of ecosystems. For example, it can help assess the impact of pollution on microbial communities by revealing changes in gene expression related to stress response and degradation processes.</p>
</li>
<li>
<p><strong>Microbiome Research</strong>: In human health, meta-transcriptomics offers insights into the gut microbiome&rsquo;s functional state. It helps in understanding how microbial communities interact with their host, how they respond to dietary changes, and their role in health and disease.</p>
</li>
<li>
<p><strong>Biotechnology</strong>: The technique can aid in the discovery of novel enzymes and bioactive compounds by profiling microbial communities in extreme environments or industrial processes.</p>
</li>
<li>
<p><strong>Disease Pathogenesis</strong>: By analyzing RNA profiles from disease-associated environments, researchers can uncover pathogen-host interactions and identify potential targets for therapeutic interventions.</p>
</li>
</ol><p><strong>Challenges</strong></p><ol>
<li>
<p><strong>Complexity of Data</strong>: The sheer volume and complexity of data generated by meta-transcriptomics can be overwhelming. Effective data management and advanced computational tools are required to extract meaningful insights.</p>
</li>
<li>
<p><strong>Sampling Bias</strong>: Environmental samples can be heterogeneous, and RNA extraction methods may introduce biases, potentially affecting the accuracy of the results.</p>
</li>
<li>
<p><strong>Reference Databases</strong>: Incomplete or biased reference databases can hinder the accurate functional annotation of transcripts, especially when studying novel or poorly characterized organisms.</p>
</li>
</ol><p><strong>Future Directions</strong></p><p>Meta-transcriptomics is a rapidly evolving field, with ongoing advancements in sequencing technologies and bioinformatics. Future research may focus on improving data integration, developing more comprehensive reference databases, and enhancing our understanding of microbial community dynamics in various environments. As these challenges are addressed, meta-transcriptomics will continue to provide valuable insights into the functional roles of microorganisms and their interactions within ecosystems.</p><p><strong>Conclusion</strong></p><p>Meta-transcriptomics represents a powerful tool for exploring the functional aspects of microbial communities in their natural environments. By capturing a snapshot of gene expression and metabolic activities, this approach offers a deeper understanding of ecological interactions, health implications, and biotechnological potentials. As technology and methodologies advance, meta-transcriptomics is poised to make significant contributions to our knowledge of the microbial world.</p>]]></description>
	<dc:creator>Abhi</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/view/119</guid>
	<pubDate>Wed, 10 Jul 2013 14:35:34 -0500</pubDate>
	<link>https://bioinformaticsonline.com/view/119</link>
	<title><![CDATA[Which are the best statistical programming languages to study for a bioinformatician?]]></title>
	<description><![CDATA[<p><span>In Bio-informatics based&nbsp;genome sequencing and predicting metabolic pathways&nbsp;research jobs&nbsp;I used Matlab, SAS, SPSS, R and several Bioconductor packages. Matlab had a lot of powerful tools and was easy to use, whereas SPSS is for non-programmers and R need programming skills. I am wondering what other people think is best? or there might not be one specific language but a few that lend themselves best to Bio-informatics work that is math heavy and deals with a large amount of data.</span></p>]]></description>
	<dc:creator>Jitendra Narayan</dc:creator>
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  <guid isPermaLink='true'>https://bioinformaticsonline.com/researchlabs/view/857/smyth-lab</guid>
  <pubDate>Sun, 14 Jul 2013 12:26:18 -0500</pubDate>
  <link></link>
  <title><![CDATA[Smyth Lab]]></title>
  <description><![CDATA[
<p>Statistical functional genomics in experimental medicine<br />The genome projects and the accelerated development of high-throughput genomic technologies such as microarrays have revolutionised biology. Making the most of this revolution requires the marriage of researchers from mathematical and biological backgrounds.</p>

<p>Research Area:<br />Linear models for microarray data<br />Digital gene expression technologies<br />Detection of molecular pathways<br />Bioinformatics resources for medical research</p>

<p>Link @ http://www.wehi.edu.au/faculty_members/professor_gordon_smyth/</p>
]]></description>
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  <guid isPermaLink='true'>https://bioinformaticsonline.com/researchlabs/view/914/welch-lab</guid>
  <pubDate>Mon, 15 Jul 2013 18:21:13 -0500</pubDate>
  <link></link>
  <title><![CDATA[Welch Lab]]></title>
  <description><![CDATA[
<p>They are based in the Department of Genetics at the University of Cambridge. </p>

<p>The research covers diverse areas of evolutionary biology, and molecular evolution in particular. It combines theoretical and empirical approaches, and particularly evolutionary inference from genome sequence data.</p>

<p>Links @ http://www.gen.cam.ac.uk/research/welch/GroupPage/Home.html</p>
]]></description>
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