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	<title><![CDATA[BOL: Related items]]></title>
	<link>https://bioinformaticsonline.com/related/28809?offset=170</link>
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	<item>
	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44734/data-visualization-in-bioinformatics-useful-and-eye-catching-plots-for-data-analysis</guid>
	<pubDate>Sat, 14 Dec 2024 12:41:53 -0600</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44734/data-visualization-in-bioinformatics-useful-and-eye-catching-plots-for-data-analysis</link>
	<title><![CDATA[Data Visualization in Bioinformatics: Useful and Eye-Catching Plots for Data Analysis]]></title>
	<description><![CDATA[<p>Data visualization is a cornerstone of bioinformatics, enabling researchers to interpret complex datasets effectively. With a plethora of data types&mdash;genomic sequences, expression profiles, protein interactions, and more&mdash;the right visualizations can make or break an analysis. This blog highlights some of the most useful and visually compelling plots for bioinformatics data analysis, along with tools to create them.</p><h4><strong>1. Heatmaps: Exploring Patterns in High-Dimensional Data</strong></h4><p>Heatmaps are a go-to visualization for representing high-dimensional datasets, such as gene expression or metabolomics data. They use color gradients to display data intensity, making patterns and clusters easily detectable.</p><ul>
<li>
<p><strong>Applications</strong>: Gene expression analysis, pathway enrichment, methylation studies.</p>
</li>
<li>
<p><strong>Tools</strong>: Seaborn (Python), ComplexHeatmap (R), Morpheus (web-based).</p>
</li>
</ul><p><strong>Tip</strong>: Add dendrograms to visualize clustering of rows and columns for hierarchical relationships.</p><h4><strong>2. Volcano Plots: Highlighting Differential Features</strong></h4><p>Volcano plots are indispensable for identifying significantly differentially expressed genes or proteins. They plot the log2 fold change against &ndash;log10(p-value), making it easy to spot statistically significant changes.</p><ul>
<li>
<p><strong>Applications</strong>: RNA-seq, proteomics, and metabolomics.</p>
</li>
<li>
<p><strong>Tools</strong>: ggplot2 (R), EnhancedVolcano (R), Plotly (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use color to highlight significant features and label key genes or proteins.</p><h4><strong>3. PCA Plots: Reducing Complexity with Principal Component Analysis</strong></h4><p>Principal Component Analysis (PCA) plots are used to reduce dimensionality and uncover trends or clusters in data. They provide insights into sample variability and grouping.</p><ul>
<li>
<p><strong>Applications</strong>: Transcriptomics, metabolomics, microbiome studies.</p>
</li>
<li>
<p><strong>Tools</strong>: scikit-learn + Matplotlib (Python), prcomp (R), ClustVis (web-based).</p>
</li>
</ul><p><strong>Tip</strong>: Annotate clusters with metadata to enhance interpretability.</p><h4><strong>4. Manhattan Plots: Genome-Wide Association Studies</strong></h4><p>Manhattan plots visualize p-values across the genome, making it easy to identify significant associations in genome-wide studies. They resemble city skylines, with the highest peaks indicating loci of interest.</p><ul>
<li>
<p><strong>Applications</strong>: GWAS, QTL mapping.</p>
</li>
<li>
<p><strong>Tools</strong>: qqman (R), Matplotlib (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use alternating colors for chromosomes and highlight significant SNPs for clarity.</p><h4><strong>5. Circular Plots (Circos): Visualizing Genomic Relationships</strong></h4><p>Circular plots are ideal for visualizing relationships across the genome, such as structural variations, gene duplications, or synteny.</p><ul>
<li>
<p><strong>Applications</strong>: Comparative genomics, structural variation studies.</p>
</li>
<li>
<p><strong>Tools</strong>: Circos (standalone), Rcircos (R), pyCircos (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Keep the plot clean and avoid overcrowding to maintain readability.</p><h4><strong>6. Sankey Diagrams: Tracking Data Flows</strong></h4><p>Sankey diagrams visualize flows or relationships between categories, often used to track changes in gene expression or pathway enrichment across conditions.</p><ul>
<li>
<p><strong>Applications</strong>: Pathway analysis, gene set enrichment analysis.</p>
</li>
<li>
<p><strong>Tools</strong>: Plotly (Python), networkD3 (R).</p>
</li>
</ul><p><strong>Tip</strong>: Use gradients or distinct colors to highlight key transitions.</p><h4><strong>7. Network Graphs: Mapping Interactions</strong></h4><p>Network graphs represent relationships between entities, such as protein-protein interactions or gene regulatory networks. Nodes represent entities, and edges represent relationships.</p><ul>
<li>
<p><strong>Applications</strong>: Systems biology, interactomics.</p>
</li>
<li>
<p><strong>Tools</strong>: Cytoscape (standalone), igraph (R), NetworkX (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use edge thickness or node size to represent interaction strength or centrality.</p><h4><strong>8. Violin Plots: Visualizing Data Distribution</strong></h4><p>Violin plots combine a boxplot with a density plot, showing the distribution and variability of data.</p><ul>
<li>
<p><strong>Applications</strong>: Single-cell RNA-seq, quantitative trait analysis.</p>
</li>
<li>
<p><strong>Tools</strong>: Seaborn (Python), ggplot2 (R).</p>
</li>
</ul><p><strong>Tip</strong>: Split violins by groups for side-by-side comparisons.</p><h4><strong>9. Time-Series Plots: Monitoring Changes Over Time</strong></h4><p>Time-series plots display changes in variables across time points, useful for tracking gene expression dynamics or metabolic fluxes.</p><ul>
<li>
<p><strong>Applications</strong>: Time-course experiments, cell cycle studies.</p>
</li>
<li>
<p><strong>Tools</strong>: Matplotlib (Python), ggplot2 (R).</p>
</li>
</ul><p><strong>Tip</strong>: Smooth the data to highlight trends while avoiding overfitting.</p><h4><strong>10. Genome Tracks: Visualizing Genomic Features</strong></h4><p>Genome tracks display multiple layers of genomic data, such as gene annotations, sequencing coverage, and epigenetic marks.</p><ul>
<li>
<p><strong>Applications</strong>: ChIP-seq, ATAC-seq, whole-genome sequencing.</p>
</li>
<li>
<p><strong>Tools</strong>: IGV (standalone), pyGenomeTracks (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Stack related tracks for direct comparisons.</p><h4><strong>11. UpSet Plots: Visualizing Set Intersections</strong></h4><p>UpSet plots are a powerful alternative to Venn diagrams for visualizing intersections between multiple datasets.</p><ul>
<li>
<p><strong>Applications</strong>: Overlap analysis for gene sets, pathways, or variants.</p>
</li>
<li>
<p><strong>Tools</strong>: UpSetR (R), ComplexUpset (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use bar plots to represent the size of each intersection for added clarity.</p><h4><strong>12. Ridge Plots: Comparing Distributions</strong></h4><p>Ridge plots visualize the distributions of multiple datasets, stacked for easy comparison.</p><ul>
<li>
<p><strong>Applications</strong>: Transcriptomics, single-cell RNA-seq.</p>
</li>
<li>
<p><strong>Tools</strong>: ggridges (R), Matplotlib (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use transparency and consistent scaling for better readability.</p><h4><strong>13. Chord Diagrams: Visualizing Connections Between Groups</strong></h4><p>Chord diagrams illustrate relationships between categories, such as shared genes between pathways or overlaps in regulatory elements.</p><ul>
<li>
<p><strong>Applications</strong>: Pathway overlap, synteny, co-expression networks.</p>
</li>
<li>
<p><strong>Tools</strong>: Circlize (R), Holoviews (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use distinct colors for each group to emphasize relationships.</p><h4><strong>14. Treemaps: Hierarchical Data Representation</strong></h4><p>Treemaps visualize hierarchical data as nested rectangles, with area proportional to data size.</p><ul>
<li>
<p><strong>Applications</strong>: Ontology enrichment, pathway analysis.</p>
</li>
<li>
<p><strong>Tools</strong>: Treemapify (R), Plotly (Python).</p>
</li>
</ul><p><strong>Tip</strong>: Use colors to represent additional variables, like significance or enrichment scores.</p><h4><strong>15. T-SNE/UMAP Plots: Dimensionality Reduction for Clustering</strong></h4><p>T-SNE and UMAP plots are great for visualizing high-dimensional data in two dimensions while preserving local or global structure.</p><ul>
<li>
<p><strong>Applications</strong>: Single-cell transcriptomics, clustering analyses.</p>
</li>
<li>
<p><strong>Tools</strong>: scikit-learn (Python), Seurat (R).</p>
</li>
</ul><p><strong>Tip</strong>: Combine with metadata annotations for better cluster interpretation.</p><h4><strong>Bringing It All Together</strong></h4><p>The choice of visualization can significantly impact the insights gained from bioinformatics data. By selecting plots tailored to your data type and analysis goals, you can effectively communicate your findings and make your research more impactful. Whether you&rsquo;re a seasoned bioinformatician or a beginner, mastering these visualizations will elevate your analyses and presentations.</p>]]></description>
	<dc:creator>LEGE</dc:creator>
</item>

<item>
  <guid isPermaLink='true'>https://bioinformaticsonline.com/researchlabs/view/42206/pollard-lab</guid>
  <pubDate>Fri, 25 Sep 2020 20:20:50 -0500</pubDate>
  <link></link>
  <title><![CDATA[Pollard Lab]]></title>
  <description><![CDATA[
<p>We are a bioinformatics research lab focused on developing novel methods and using them to study genome evolution, organization, and regulation. Our mission is to decode biomedical knowledge that is missed without rigorous statistical approaches.</p>

<p>http://docpollard.org/</p>

<p>Tools</p>

<p>http://docpollard.org/resources/software/</p>
]]></description>
</item>
<item>
	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/36723/hapsembler-an-assembler-for-highly-polymorphic-genomes</guid>
	<pubDate>Tue, 22 May 2018 04:09:53 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/36723/hapsembler-an-assembler-for-highly-polymorphic-genomes</link>
	<title><![CDATA[Hapsembler: An Assembler for Highly Polymorphic Genomes]]></title>
	<description><![CDATA[Hapsembler is a haplotype-specific genome assembly toolkit that is designed for genomes that are rich in SNPs and other types of polymorphism. Hapsembler can be used to assemble reads from a variety of platforms including Illumina and Roche/454. 

http://compbio.cs.toronto.edu/hapsembler/<p>Address of the bookmark: <a href="http://compbio.cs.toronto.edu/hapsembler/" rel="nofollow">http://compbio.cs.toronto.edu/hapsembler/</a></p>]]></description>
	<dc:creator>Jit</dc:creator>
</item>
<item>
	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/34914/ra-assembler-a-de-novo-dna-assembler-for-third-generation-sequencing-data</guid>
	<pubDate>Wed, 27 Dec 2017 20:36:54 -0600</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/34914/ra-assembler-a-de-novo-dna-assembler-for-third-generation-sequencing-data</link>
	<title><![CDATA[Ra assembler - a de novo DNA assembler for third generation sequencing data]]></title>
	<description><![CDATA[<p>Integration of the Ra assembler - a de novo DNA assembler for third generation sequencing data developed on Faculty of Electrical Engineering and Computing (FER), Ruder Boskovic Institute (RBI) and Genome Institute of Singapore (GIS).</p>
<p>Ra is in development since 2014 in the form of several separate components that used to be run individually.<br>This project aims to ease the usage of Ra by integrating it into a complete de novo assembly tool.</p>
<p>Unlike other state-of-the-art assemblers,&nbsp;<span>Ra does not have an error correction step.</span>&nbsp;Instead, it relies on detecting overlaps using a very sensitive and specific overlapper ("graphmap -w owler",&nbsp;<a href="https://github.com/isovic/graphmap">https://github.com/isovic/graphmap</a>) and constructing and reducing an overlap graph (Ra layout,&nbsp;<a href="https://github.com/mariokostelac/ra">https://github.com/mariokostelac/ra</a>).</p><p>Address of the bookmark: <a href="https://github.com/mariokostelac/ra-integrate/" rel="nofollow">https://github.com/mariokostelac/ra-integrate/</a></p>]]></description>
	<dc:creator>biogeek</dc:creator>
</item>
<item>
	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/36837/ranbow-a-haplotype-assembler-for-polyploid-genomes</guid>
	<pubDate>Fri, 01 Jun 2018 07:21:54 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/36837/ranbow-a-haplotype-assembler-for-polyploid-genomes</link>
	<title><![CDATA[Ranbow: a haplotype assembler for polyploid genomes]]></title>
	<description><![CDATA[Ranbow is a haplotype assembler for polyploid genomes. It has been developed for the haplotype assembly of the hexaploid sweet potato genome, which is highly heterozygous. Ranbow can also be applied to other polyploid genomes. After a first phasing, Ranbow utilizes the assembled haplotypes to improve the accuracy of variant calling results and to infer the evolutionary history of the organism´s genome. Ranbow has three main modes of function:

ranbow hap: for haplotyping
ranbow eval: for evaluating of the assemble haplotypes by gold standard (long) reads 
ranbow phylo: for the phylogenetic analysis<p>Address of the bookmark: <a href="https://www.molgen.mpg.de/ranbow" rel="nofollow">https://www.molgen.mpg.de/ranbow</a></p>]]></description>
	<dc:creator>Jit</dc:creator>
</item>
<item>
	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/39213/flye-fast-and-accurate-de-novo-assembler-for-single-molecule-sequencing-reads</guid>
	<pubDate>Tue, 02 Apr 2019 21:54:55 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/39213/flye-fast-and-accurate-de-novo-assembler-for-single-molecule-sequencing-reads</link>
	<title><![CDATA[Flye: Fast and accurate de novo assembler for single molecule sequencing reads]]></title>
	<description><![CDATA[<p><span>Flye is a de novo assembler for single molecule sequencing reads, such as those produced by PacBio and Oxford Nanopore Technologies. It is designed for a wide range of datasets, from small bacterial projects to large mammalian-scale assemblies. The package represents a complete pipeline: it takes raw PB / ONT reads as input and outputs polished contigs. Flye also includes a special mode for metagenome assembly.</span></p><p>Address of the bookmark: <a href="https://github.com/fenderglass/Flye" rel="nofollow">https://github.com/fenderglass/Flye</a></p>]]></description>
	<dc:creator>BioJoker</dc:creator>
</item>

<item>
  <guid isPermaLink='true'>https://bioinformaticsonline.com/researchlabs/view/43817/bioinfo-lab</guid>
  <pubDate>Fri, 04 Mar 2022 00:17:00 -0600</pubDate>
  <link></link>
  <title><![CDATA[Bioinfo Lab]]></title>
  <description><![CDATA[
<p>The Institute of Bioinformatics conducts internationally renowned research and provides profound education in bioinformatics. Its research focuses on development and application of machine learning and statistical methods in biology and medicine.</p>

<p>Contact:<br />Computer Science Building (Science Park 3)<br />Altenberger Str. 69, A-4040 Linz, Austria<br />Tel. +43 732 2468 4520 / Fax +43 732 2468 4539<br />E-mail secretary@bioinf.jku.at</p>

<p>http://www.bioinf.jku.at/</p>
]]></description>
</item>

<item>
  <guid isPermaLink='true'>https://bioinformaticsonline.com/opportunity/view/843/structural-polymorphism-analysis-from-ngs-data</guid>
  <pubDate>Sat, 13 Jul 2013 17:12:47 -0500</pubDate>
  <link></link>
  <title><![CDATA[Structural polymorphism analysis from NGS data]]></title>
  <description><![CDATA[
<p>The LabEx BASC (Biodiversity, Agroecosystems, Society, Climate), a network of 13 laboratories of the Paris-Saclay Scientific Cluster, is seeking a bioinformatician to analyze Next Generation Sequencing (NGS) data analysis. In the context of a flagship project aiming at understanding and improving the adaptive capacity of agroecosystems it will be critical to establish a link between sequence variation, functional variation, gene/protein expression and phenotypic adaptation.</p>

<p>The successful candidate will be in charge of the detection of polymorphisms including structural variants, of the comparison of multiple and diverse genomes of a same species and of the construction of pan- and core-genomes. These challenging tasks will require bioinformatics developments and implementation of methods for accommodating the high level of repetitiveness of complex genomes. The tools will be integrated into pipelines and made available to end-users through the Galaxy platform. The bioinformatician will therefore also have to provide researchers with advices on their experimental designs in order to ensure compliance of produced datasets with pipelines requirements. He/she will be hosted by a bioinformatics/informatics team (7 people) (http://moulon.inra.fr/index.php/fr/equipestransversales/atelier-de-bioinformatique) which has computational facilities and expertise in NGS data analysis, and will benefit as well from national and international collaborative networks (Aplibio http://www.renabi.fr/platforms/aplibio/, Transplant http://transplantdb.eu, AMAIZING http://www.amaizing.fr/).</p>

<p>The position requires a doctoral degree (PhD) in bioinformatics with strong expertise in script writing (Python/Perl) and pipeline development. </p>

<p>Applicants should send a CV and the names of 2 referees willing to provide a letter of recommendation to joets@moulon.inra.fr.</p>
]]></description>
</item>

<item>
  <guid isPermaLink='true'>https://bioinformaticsonline.com/opportunity/view/4004/33rd-annual-convention-of-indian-association-for-cancer-research-from-13th-to-15th-february-2014</guid>
  <pubDate>Tue, 27 Aug 2013 10:37:08 -0500</pubDate>
  <link></link>
  <title><![CDATA[33rd Annual Convention of Indian Association for Cancer Research from 13th to 15th February 2014]]></title>
  <description><![CDATA[
<p>RGCB is organizing the 33rd Annual Convention of Indian Association for Cancer Research from 13th to 15th February 2014 with the theme "Discovery, Innovation and Translation in Cancer Research"</p>

<p>Kindly log on to conference website http://rgcb.res.in/IACR2014 for further details and timely updates and registration. We shall truly appreciate if the same be circulated among your friends, scholars and students encouraging them to participate in the meet.</p>

<p>http://210.212.237.38/iacrconference/</p>
]]></description>
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<item>
  <guid isPermaLink='true'>https://bioinformaticsonline.com/opportunity/view/2336/3rd-annual-next-generation-sequencing-asia-congress-2013-at-singapore-singapore</guid>
  <pubDate>Wed, 14 Aug 2013 09:55:04 -0500</pubDate>
  <link></link>
  <title><![CDATA[3rd Annual Next Generation Sequencing Asia Congress 2013 at Singapore, Singapore]]></title>
  <description><![CDATA[
<p>The 3rd Annual Next Generation Sequencing Asia Congress is to be held on the 22nd and 23rd of October 2013 in Singapore. Over the 2 days, the conference will provide an overview of the current options of next-generation sequencing platforms, technologies, applications and the newest computational tools for the analysis of next-generation sequencing data and analytical genomics as well as overcoming data management problems. The event will attract over 200 senior-level decision makers working in areas such as next generation sequencing, analytical genomics, computational biology, oncology, RNA profiling, molecular genomics, biomarkers, bioinformatics &amp; data management and clinical &amp; diagnostics development.</p>

<p>Dated : 22 Nov 2013 -23 Nov 2013</p>

<p>http://www.ngsasia-congress.com/</p>
]]></description>
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