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	<title><![CDATA[BOL: Related items]]></title>
	<link>https://bioinformaticsonline.com/related/27070?offset=680</link>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44751/large-language-models-in-bioinformatics-transforming-data-analysis-and-interpretation</guid>
	<pubDate>Thu, 02 Jan 2025 11:26:29 -0600</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44751/large-language-models-in-bioinformatics-transforming-data-analysis-and-interpretation</link>
	<title><![CDATA[Large Language Models in Bioinformatics: Transforming Data Analysis and Interpretation]]></title>
	<description><![CDATA[<p>The integration of artificial intelligence (AI) into bioinformatics has ushered in a new era of computational biology. Among the most transformative advancements are large language models (LLMs), such as GPT and BERT, which leverage deep learning to process and interpret vast amounts of text data. These models are reshaping bioinformatics by enhancing data analysis, hypothesis generation, and literature mining.</p><h3>Understanding Large Language Models</h3><p>LLMs are AI systems trained on extensive datasets of natural language. Their ability to model context, identify patterns, and generate coherent language has proven invaluable across domains, including bioinformatics. By fine-tuning these models on biological datasets, researchers can unlock insights into molecular biology, systems biology, and beyond.</p><h3>Key Applications of LLMs in Bioinformatics</h3><h4>1. <strong>Annotating Biological Data</strong></h4><p>Annotating genomic and proteomic data is fundamental yet labor-intensive. LLMs streamline this process by extracting functional annotations from literature and databases, predicting gene and protein functions, and providing automated insights.</p><h4>2. <strong>Mining Scientific Literature</strong></h4><p>The exponential growth of publications presents a challenge for researchers to stay updated. LLMs can process large volumes of text to extract key findings, summarize papers, and identify trends, thereby facilitating efficient literature reviews.</p><h4>3. <strong>Predicting Gene and Protein Functions</strong></h4><p>By leveraging sequence data and annotations, LLMs can predict the functions of uncharacterized genes and proteins. This capability is particularly useful for studying non-model organisms and orphan genes.</p><h4>4. <strong>Drug Discovery and Repurposing</strong></h4><p>LLMs enable pattern recognition across chemical, genomic, and clinical datasets, identifying novel drug candidates and repurposing existing drugs for new therapeutic targets. They can simulate interactions between drugs and biological molecules, accelerating the discovery pipeline.</p><h4>5. <strong>Generating Hypotheses for Research</strong></h4><p>LLMs analyze complex datasets to propose testable hypotheses. For example, they can predict protein-protein interactions, identify regulatory motifs, or model evolutionary processes in genomes.</p><h3>Advantages of LLMs in Bioinformatics</h3><ul>
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<p><strong>Scalability:</strong> LLMs process massive datasets rapidly, reducing the time required for data analysis.</p>
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<p><strong>Versatility:</strong> These models adapt to diverse bioinformatics tasks, from genomic annotation to network analysis.</p>
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<p><strong>Contextual Insights:</strong> By synthesizing information across disparate datasets, LLMs provide integrative insights into biological systems.</p>
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</ul><h3>Challenges in Applying LLMs</h3><p>Despite their promise, LLMs face limitations:</p><ul>
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<p><strong>Data Quality and Bias:</strong> Inaccurate or biased datasets can affect model predictions, necessitating rigorous data curation.</p>
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<p><strong>Interpretability:</strong> Understanding the decision-making process of LLMs remains a critical challenge, especially in high-stakes fields like genomics and medicine.</p>
</li>
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<p><strong>Resource Intensity:</strong> Training and deploying LLMs require substantial computational power, which can limit accessibility.</p>
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<p><strong>Ethical Concerns:</strong> Handling sensitive genomic data raises privacy and security issues, emphasizing the need for ethical guidelines.</p>
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</ul><h3>Future Prospects</h3><p>The continued development of LLMs tailored for bioinformatics promises exciting advancements. Specialized models trained on omics data, open-access platforms, and interdisciplinary collaborations will expand the utility of LLMs. Moreover, integrating LLMs with other AI technologies, such as graph neural networks and reinforcement learning, can unlock deeper biological insights.</p><h3>Conclusion</h3><p>Large language models are revolutionizing bioinformatics by addressing longstanding challenges in data annotation, literature mining, and function prediction. Their ability to analyze complex biological datasets efficiently positions them as indispensable tools for modern research. As bioinformatics embraces AI, the synergy between LLMs and biological sciences holds the potential to unravel the complexities of life with unprecedented precision and scale.</p>]]></description>
	<dc:creator>LEGE</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44852/what-is-data-science-%E2%80%94-a-bioinformatics-perspective</guid>
	<pubDate>Mon, 16 Jun 2025 01:44:34 -0500</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44852/what-is-data-science-%E2%80%94-a-bioinformatics-perspective</link>
	<title><![CDATA[What is Data Science? — A Bioinformatics Perspective]]></title>
	<description><![CDATA[<p>In today&rsquo;s era of big biology, we&rsquo;re generating more data than ever before&mdash;genomes, transcriptomes, proteomes, metabolomes, microbiomes&hellip; you name it. But raw biological data doesn&rsquo;t speak for itself. Making sense of it requires more than traditional biology. This is where data science steps in.</p><p><strong>So, What Is Data Science?</strong><br />At its core, data science is the interdisciplinary field that extracts knowledge and insights from data using programming, statistics, and domain expertise. In bioinformatics, data science enables us to turn gigabytes of sequence data into biological meaning.</p><p>Imagine trying to understand gene regulation in cancer by analyzing thousands of RNA-seq samples, or predicting antibiotic resistance from bacterial genomes&mdash;these challenges are not solvable through wet lab experiments alone. They require data-driven thinking.</p><p><strong>Data Science Meets Bioinformatics</strong><br />Bioinformatics is inherently a data science domain. From genomics to systems biology, every field in modern biology relies on data science techniques to:</p><p>Clean and process massive datasets</p><p>Discover patterns in high-dimensional data</p><p>Build predictive models (e.g., for disease classification)</p><p>Visualize complex biological networks and trends</p><p>Integrate diverse data types (e.g., transcriptomic + epigenomic data)</p><p><strong>The Bioinformatics Toolkit</strong><br />Here&rsquo;s what data science typically looks like in bioinformatics:</p><p>Task Data Science Role<br />Sequence alignment Efficient algorithms, indexing, parallel processing<br />Gene expression analysis Statistical modeling (e.g., DESeq2, limma)<br />Variant calling Data filtering, probabilistic models<br />Clustering of cells in single-cell data Unsupervised learning<br />Protein structure prediction Deep learning models (e.g., AlphaFold)<br />Metagenomics Data integration, classification, dimensionality reduction</p><p>Common tools include Python, R, Bioconductor, scikit-learn, Pandas, Seurat, and TensorFlow&mdash;often working together in reproducible workflows.</p><p><strong>It's Not Just About Coding</strong><br />A common misconception is that bioinformatics is just programming or scripting. But being a data scientist in bioinformatics also means:</p><p>Understanding experimental design</p><p>Asking biologically meaningful questions</p><p>Choosing the right statistical or machine learning models</p><p>Communicating findings effectively (e.g., plots, dashboards, papers)</p><p>In other words, data science in bioinformatics is where biology, statistics, and computer science converge.</p><p><strong>Why It Matters</strong><br />The real power of data science in bioinformatics is its ability to scale discovery.</p><p>Instead of studying one gene, we can study thousands.</p><p>Instead of analyzing one species, we can explore entire ecosystems.</p><p>Instead of waiting months for lab results, we can generate hypotheses in days.</p><p>From personalized medicine and cancer diagnostics to agricultural genomics and pandemic surveillance, data science is at the heart of the bioinformatics revolution.</p><p><strong>Final Thoughts</strong><br />If you&rsquo;re a biologist who&rsquo;s curious about code, or a data enthusiast fascinated by life sciences, bioinformatics is your playground&mdash;and data science is your toolkit.</p><p>In bioinformatics, data science isn&rsquo;t just useful. It&rsquo;s essential.</p><p>&nbsp;</p>]]></description>
	<dc:creator>Abhi</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/blog/view/44914/predicting-pathogen-virulence-using-bioinformatics-tools</guid>
	<pubDate>Tue, 04 Nov 2025 07:55:53 -0600</pubDate>
	<link>https://bioinformaticsonline.com/blog/view/44914/predicting-pathogen-virulence-using-bioinformatics-tools</link>
	<title><![CDATA[Predicting Pathogen Virulence Using Bioinformatics Tools]]></title>
	<description><![CDATA[<p>In the genomic era, the ability to predict the virulence potential of pathogens has become an indispensable part of infectious disease research. With the exponential growth of microbial genome data, bioinformatics tools now enable scientists to identify virulence factors, model pathogen behavior, and even forecast outbreak risks &mdash; all from sequence data.</p><p>In an age where pathogens continue to evolve and cross boundaries, understanding <strong>what makes them virulent</strong>&mdash;that is, capable of causing disease&mdash;has become a critical focus in modern microbiology and genomics. <strong>Virulence prediction</strong> bridges computational biology, genomics, and machine learning to forecast the pathogenic potential of microbes before they strike.</p><h3>What Is Virulence?</h3><p><em>Virulence</em> refers to the degree of damage a pathogen can inflict on its host. It is determined by a combination of genetic factors&mdash;called <strong>virulence factors (VFs)</strong>&mdash;that allow the organism to attach, invade, evade, and harm the host. These include genes coding for toxins, secretion systems, adhesins, and enzymes that disrupt host defenses.</p><p>Understanding virulence factors not only helps in deciphering the mechanisms of infection but also provides early warning signs for emerging threats.</p><h3>Why Predict Virulence?</h3><p>Traditional virulence studies relied heavily on experimental infection models, which, although accurate, are <strong>time-consuming, expensive, and ethically constrained</strong>.<br /> Today, the availability of whole-genome sequences and large-scale pathogen databases has paved the way for <strong>in silico virulence prediction</strong>&mdash;a computational approach that can screen thousands of genomes within hours.</p><p>This approach enables researchers to:</p><ul>
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<p>Rapidly identify potential <strong>high-risk strains</strong>.</p>
</li>
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<p>Prioritize pathogens for <strong>containment, surveillance, or further study</strong>.</p>
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<p>Guide <strong>vaccine development</strong> and <strong>drug target discovery</strong>.</p>
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<p>Support <strong>One Health frameworks</strong>, linking animal, human, and environmental health data.</p>
</li>
</ul><h3>How Is Virulence Predicted?</h3><p>Virulence prediction combines <strong>bioinformatics pipelines</strong> with <strong>machine learning</strong> and <strong>comparative genomics</strong>. The process generally involves:</p><ol>
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<p><strong>Genome Annotation:</strong> Identifying genes and coding sequences in microbial genomes.</p>
</li>
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<p><strong>Feature Extraction:</strong> Comparing sequences with curated databases like <strong>VFDB (Virulence Factor Database)</strong>, <strong>PATRIC</strong>, or <strong>Victors</strong>.</p>
</li>
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<p><strong>Pattern Recognition:</strong> Using algorithms (e.g., Random Forest, SVM, or deep learning models) to classify genes or strains as virulent or non-virulent based on sequence patterns, motifs, and protein domains.</p>
</li>
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<p><strong>Scoring and Visualization:</strong> Assigning a virulence score or confidence level and visualizing it through heatmaps or genome maps.</p>
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</ol><h3>Tools and Resources for Virulence Prediction</h3><p>A number of tools and databases make virulence prediction accessible to the scientific community:</p><ul>
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<p><strong>VFanalyzer</strong> &ndash; For identifying virulence genes based on VFDB.</p>
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<p><strong>PathoFact</strong> &ndash; Predicts virulence, antimicrobial resistance (AMR), and toxin genes from metagenomic data.</p>
</li>
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<p><strong>Pangenome-based models</strong> &ndash; Identify virulence-associated gene clusters across strains.</p>
</li>
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<p><strong>Machine learning models</strong> &ndash; Use features like GC content, codon usage bias, or protein domains to predict pathogenicity.</p>
</li>
</ul><p>Emerging tools now integrate <strong>multi-omic data</strong>&mdash;including transcriptomics, proteomics, and metabolomics&mdash;to understand virulence in a systems biology framework.</p><h3>Applications in the Real World</h3><p>Virulence prediction has major implications across public health and research sectors:</p><ul>
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<p><strong>Epidemic preparedness:</strong> Early identification of virulent strains in outbreak samples.</p>
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<p><strong>AMR surveillance:</strong> Linking virulence profiles with antibiotic resistance determinants.</p>
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<p><strong>Environmental monitoring:</strong> Predicting pathogenic potential of soil or waterborne microbes.</p>
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<p><strong>Clinical diagnostics:</strong> Supporting personalized treatment through pathogen profiling.</p>
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</ul><p>For instance, integrating virulence prediction pipelines into <strong>national surveillance networks</strong> could enable faster risk assessment and response to infectious outbreaks.</p><h3>The Road Ahead</h3><p>As machine learning and genomics advance, virulence prediction will evolve from simple gene-based detection to <strong>dynamic, context-aware models</strong> that account for host&ndash;pathogen interactions, environmental signals, and evolutionary adaptation.</p><p>Future tools may predict <strong>not just if a strain is virulent</strong>, but <strong>under what conditions</strong> it expresses that virulence&mdash;bridging the gap between genotype and phenotype.</p><h3>In Summary</h3><p>Virulence prediction is redefining how we understand and anticipate infectious diseases. By coupling <strong>genomic insights</strong> with <strong>computational intelligence</strong>, researchers can identify potential threats earlier, design smarter interventions, and ultimately, strengthen our preparedness against emerging pathogens.</p>]]></description>
	<dc:creator>BioStar</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/2631/what-junk-dna-it%E2%80%99s-an-operating-system</guid>
	<pubDate>Mon, 19 Aug 2013 15:24:26 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/2631/what-junk-dna-it%E2%80%99s-an-operating-system</link>
	<title><![CDATA[What Junk DNA? It’s an Operating System]]></title>
	<description><![CDATA[<p>The report adds to growing experimental support for the idea that all that extra stuff in the human genes, once referred to as &ldquo;junk DNA,&rdquo; is more than functionless, space-filling material that happens to make up nearly 98% of the genome. The paper adds to a growing body of knowledge establishing a considerable role for this material in the regulation of gene expression and its potential role in human disease.</p><p>Address of the bookmark: <a href="http://www.genengnews.com/keywordsandtools/print/3/32115/" rel="nofollow">http://www.genengnews.com/keywordsandtools/print/3/32115/</a></p>]]></description>
	<dc:creator>Rahul Agarwal</dc:creator>
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  <guid isPermaLink='true'>https://bioinformaticsonline.com/opportunity/view/7569/phd-at-university-of-calgary</guid>
  <pubDate>Fri, 27 Dec 2013 20:24:39 -0600</pubDate>
  <link></link>
  <title><![CDATA[PhD at University of Calgary]]></title>
  <description><![CDATA[
<p>Institution/Company: <br />University of Calgary<br />Location: <br />Calgary, AB<br />Job Description: </p>

<p>Novel diagnostic platform for detection of Osteoarthritis</p>

<p>I invite applications from highly motivated individuals to join my laboratory as a PhD student in Systems Biology at the University of Calgary McCaig Institute for Bone and Joint Health. This project is aimed at characterizing the networks of physical (protein-protein) interactions underlying inflammatory processes in patients with Osteoarthritis and how this differs from patients with Rheumatoid Arthritis and normal individuals. This work will eventually lead to the development of a novel diagnostic platform for the non-invasive and accurate detection of early Osteoarthritis. The selected candidate will use state-of-the-art computational methodologies to systematically analyze proteomic data, and develop /implement new algorithms to identify protein and functional interaction networks from high throughput experimental data. The individual will also benefit by working closely with experts at the UofC and UofA through an AIHS Alberta Osteoarthritis Team Grant which includes experts from all pillars of health research. The candidate will also be supported to attend bioinformatics workshops and conferences to advance and disseminate their research.<br />Qualifications: The ideal candidate will have a Master’s degree in Computational Biology, Bioinformatics, or equivalent with strong background knowledge of the Biological Sciences, Biochemistry, and Microbiology. The individual should additionally have experience in handling high-throughput data sets as well as programming skills. The candidate will be registered as a PhD student in Dr. Krawetz’s laboratory, located in the new state-of-the-art Health Research Innovation Centre at the UofC. The individual will have strong verbal and written skills and the ability to work efficiently in a team environment.</p>

<p>In addition to the outstanding research opportunities available in this setting, students also enjoy the many cultural and sporting amenities provided in the city of Calgary, and can take advantage of the unparalleled skiing and hiking in the Rocky Mountains that are less than an hour away.</p>

<p>Candidates must be academically competitive and will be expected to apply for external funding. The stipend is $25,000/yr. For outstanding PhD students, internal top-up award opportunities are available on a competitive basis. If interested in joining the lab, please contact Dr. Krawetz directly at rkrawetz@ucalgary.ca and provide the following information:</p>

<p>- Short cover letter explaining your interest in the lab<br />- Resume<br />- Scanned copy of transcript or listing of course grades<br />- Names and contact information for two individuals who will be willing to provide letters of reference</p>
]]></description>
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  <guid isPermaLink='true'>https://bioinformaticsonline.com/researchlabs/view/6130/rna-bioinformatics-and-high-throughput-analysis-jena</guid>
  <pubDate>Sat, 09 Nov 2013 20:03:56 -0600</pubDate>
  <link></link>
  <title><![CDATA[RNA Bioinformatics and High Throughput Analysis Jena]]></title>
  <description><![CDATA[
<p>Research Topics:</p>

<p>High Throughput Sequencing Analysis<br />Comparative Genomics<br />Identification and Annotation of Non-coding RNAs<br />Bioinformatic Analysis and System Biology of Viruses<br />Coevolution of Proteins and RNAs<br />Algorithmic Bioinformatics<br />Phylogenetic Analysis</p>

<p>http://www.rna.uni-jena.de/index.php</p>
]]></description>
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  <guid isPermaLink='true'>https://bioinformaticsonline.com/opportunity/view/7383/embo-practical-course-on-bioinformatics-and-genomes-analyses-at-hellenic-pasteur-institute-athens-greece</guid>
  <pubDate>Sat, 21 Dec 2013 10:00:24 -0600</pubDate>
  <link></link>
  <title><![CDATA[EMBO practical Course on  "Bioinformatics and Genomes Analyses" at Hellenic Pasteur Institute, Athens, Greece]]></title>
  <description><![CDATA[
<p>The main objectives of this Practical Course are to strengthen skills <br />of PhD students and young researchers in the domain of Bioinformatics <br />and Genome Data Analyses on the use of advanced fundamental algorithms <br />and their applications in genome studies.</p>

<p>The course topics will include theoretical and practical aspects in:<br />- Genomes comparisons,<br />- Evolutionary analyses (orthologs, paralogs and ancestral genomes <br />inference),<br />- RNAseq and Next Generation Sequencing (including algorithms, methods <br />and sequence mapping tools, data analyses and applications).</p>

<p>The course programme will be centred on theoretical presentations <br />followed by practical sessions. Practical sessions in a Linux <br />environment will involve Unix shell and Perl scripting. Participants <br />are assumed to be familiar with this environment.</p>

<p>A series of lectures delivered by prominent scientists on recent hot <br />topics in genome (Viruses, Prokaryotes, Eukaryotes) studies will be <br />included in the programme and future research perspectives will be <br />highlighted.</p>

<p>The topics that will be included in the course programme are similar <br />to those included in previously organized courses:http://www.pasteur.fr/~tekaia/BGA_courses.html</p>

<p>The course is aimed at motivated Ph.D students and Post-Doctoral <br />Researchers in Academic Institutions, with background in Mathematics, <br />Statistics, Biology or Computer Science and who are involved in <br />Bioinformatics and Genomes studies.</p>

<p>Selection of participants will be based on their background, running <br />research projects and on expressed motivations.<br />Selected students will have free accommodation and meals and are <br />expected to contribute with 200 euros and to pay for their travel <br />expenses.<br />All participants (students and invited speakers) will stay in the same <br />hotel.</p>

<p>Detailed indications are available on the course web site: http://events.embo.org/14-comparative-genomics/index.html</p>

<p>Candidates are advised to complete carefully the application form, <br />together with an abstract of at least one of their running projects, a <br />"one-page CV" and a personal Identity Picture (Photo).</p>

<p>The application deadline is March 14, 2014.</p>

<p>The organizers:<br />Menelaos Manoussakis, Hellenic Pasteur Institute, Athens, Greece.<br />Evdokia Karagouni, Hellenic Pasteur Institute, Athens - Greece.<br />Evie Melanitou,  Institut Pasteur Paris - France.<br />Fredj Tekaia ( Institut Pasteur Paris France)<br />URL: http://www.pasteur.fr/~tekaia/BGA_courses.html</p>

<p>Date: 5 – 17 May, 2014. <br />More at http://events.embo.org/14-comparative-genomics/index.html<br />will take place in the ,</p>
]]></description>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/9586/list-of-bioinformatics-companies-and-genomics-service-providers</guid>
	<pubDate>Wed, 02 Apr 2014 06:52:28 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/9586/list-of-bioinformatics-companies-and-genomics-service-providers</link>
	<title><![CDATA[List of bioinformatics companies and genomics service providers]]></title>
	<description><![CDATA[<p>Plz check out link for bioinformatics and genomics companies.&nbsp;</p><p>Address of the bookmark: <a href="http://grouthbio.com/Genome_Software_Service.php" rel="nofollow">http://grouthbio.com/Genome_Software_Service.php</a></p>]]></description>
	<dc:creator>Rahul Agarwal</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/news/view/7568/oldest-hominin-dna-sequenced</guid>
	<pubDate>Fri, 27 Dec 2013 19:58:31 -0600</pubDate>
	<link>https://bioinformaticsonline.com/news/view/7568/oldest-hominin-dna-sequenced</link>
	<title><![CDATA[Oldest Hominin DNA Sequenced]]></title>
	<description><![CDATA[<p>Matthias Meyer and his team from the Max Planck Institute for Evolutionary Anthropology in Leipzig, Germany, have developed new techniques for retrieving and sequencing highly degraded ancient DNA. They then joined forces with Juan-Luis Arsuaga and applied the new techniques to a cave bear from the Sima de los Huesos site. After this success, the researchers sampled two grams of bone powder from a hominin thigh bone from the cave. They extracted its DNA and sequenced the genome of the mitochondria or mtDNA, a small part of the genome that is passed down along the maternal line and occurs in many copies per cell. The researchers then compared this ancient mitochondrial DNA with Neandertals, Denisovans, present-day humans, and apes.<br /><br />From the missing mutations in the old DNA sequences the researchers calculated that the Sima hominin lived about 400,000 years ago. They also found that it shared a common ancestor with the Denisovans, an extinct archaic group from Asia related to the Neandertals, about 700,000 years ago. "The fact that the mtDNA of the Sima de los Huesos hominin shares a common ancestor with Denisovan rather than Neandertal mtDNAs is unexpected since its skeletal remains carry Neandertal-derived features," says Matthias Meyer. Considering their age and Neandertal-like features, the Sima hominins were likely related to the population ancestral to both Neandertals and Denisovans. Another possibility is that gene flow from yet another group of hominins brought the Denisova-like mtDNA into the Sima hominins or their ancestors.<br /><br /></p><p>Reference</p><p>http://www.sciencedaily.com/releases/2013/12/131204132018.htm</p>]]></description>
	<dc:creator>Surajeet</dc:creator>
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	<guid isPermaLink="true">https://bioinformaticsonline.com/bookmarks/view/17946/7th-international-conference-on-bioinformatics-and-computational-biology-bicob</guid>
	<pubDate>Mon, 06 Oct 2014 16:19:36 -0500</pubDate>
	<link>https://bioinformaticsonline.com/bookmarks/view/17946/7th-international-conference-on-bioinformatics-and-computational-biology-bicob</link>
	<title><![CDATA[7th International Conference on Bioinformatics and Computational Biology (BICoB)]]></title>
	<description><![CDATA[<p><span>In recent years, computational biology and medical informatics have seen significant advances driven by computational techniques in bioinformatics making bioinformatics and computational biology among the most vibrant research areas. The 7th international conference on Bioinformatics and Computational Biology (BICoB-2015) provides an excellent venue for researchers and practitioners in the fields of bioinformatics and computational biology to present and publish their research results and techniques. The BICoB conference seeks original and high quality papers in the fields of bioinformatics, computational biology, systems biology, medical informatics and the related disciplines. </span><span>We also encourage work in progress and research results in the emerging and evolutionary computational areas. Computational techniques have already enabled unprecedented advances in modern biology and medicine. Work in the computational methods related to, or with application in, bioinformatics is also encouraged including: data mining, text mining, machine learning, modeling and simulation, pattern recognition, data visualization, biostatistics, .etc. The topics of interest include (and are not limited to):&nbsp;</span><br><strong><span>Genome analysis:</span></strong><span>&nbsp;Genome assembly, genome annotation, gene finding, alternative splicing, EST analysis and comparative genomics.&nbsp;</span><br><strong><span>Sequence analysis:</span></strong><span>&nbsp;Multiple sequence alignment, sequence search and clustering, function prediction, motif discovery, functional site recognition in protein, RNA and DNA sequences.&nbsp;</span><br><strong><span>Phylogenetics:</span></strong><span>&nbsp;Phylogeny estimation, models of evolution, comparative biological methods, population genetics.&nbsp;</span><br><strong><span>Structural Bioinformatics:</span></strong><span>&nbsp;Structure matching, prediction, analysis and comparison; methods and tools for docking; protein design&nbsp;</span><br><strong><span>Analysis of high-throughput biological data:</span></strong><span>&nbsp;Microarrays (nucleic acid, protein, array CGH, genome tiling, and other arrays), EST, SAGE, MPSS, proteomics, mass spectrometry.&nbsp;</span><br><strong><span>Genetics and population analysis:</span></strong><span>&nbsp;Linkage analysis, association analysis, population simulation, haplotyping, marker discovery, genotype calling.&nbsp;</span><br><strong><span>Systems biology:</span></strong><span>&nbsp;Systems approaches to molecular biology, multiscale modeling, pathways,gene networks.&nbsp;</span><br><strong><span>Computational Proteomics:&nbsp;</span></strong><span>Filtering and indexing sequence databases, Peptide quantification and identification, Genome annotations via mass spectrometry, Identification of post-translational modifications, Structural genomics via mass spectrometry, Protein-protein interactions, Computational approaches to analysis of large scale Mass spectrometry data, Exploration and visualization of proteomic data, Data models and integration for proteomics and genomics, Querying and retrieval of proteomics and genomics data etc.</span></p>
<p><span><span>Authors of selected high quality papers in BICoB-2015 will be invited to submit extended version of their papers for possible publication in bioinformatics journals (</span><a href="http://www.worldscinet.com/jbcb/" target="_blank"><strong>Journal of Bioinformatics and Computational Biology JBCB).</strong></a></span></p>
<p><span><strong>Deadlines</strong>:</span></p>
<p><span></span></p>
<p>Paper Submission Deadline October 24, 2014<br>Notification of Acceptance December 15, 2014<br>Camera-Ready Manuscript January 16, 2015</p>
<p><span></span></p><p>Address of the bookmark: <a href="http://www.cs.umb.edu/bicob/" rel="nofollow">http://www.cs.umb.edu/bicob/</a></p>]]></description>
	<dc:creator>Rahul Agarwal</dc:creator>
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