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            <title><![CDATA[PathoFact: a pipeline for the prediction of virulence factors and antimicrobial resistance genes in metagenomic data]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00993-9</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Pathogenic microorganisms cause disease by invading, colonizing, and damaging their host. Virulence factors including bacterial toxins contribute to pathogenicity. Additionally, antimicrobial resistance genes allow pathogens to evade otherwise curative treatments. To understand causal relationships between microbiome compositions, functioning, and disease, it is essential to identify virulence factors and antimicrobial resistance genes in situ. At present, there is a clear lack of computational approaches to simultaneously identify these factors in metagenomic datasets.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Here, we present PathoFact, a tool for the contextualized prediction of virulence factors, bacterial toxins, and antimicrobial resistance genes with high accuracy (0.921, 0.832 and 0.979, respectively) and specificity (0.957, 0.989 and 0.994). We evaluate the performance of PathoFact on simulated metagenomic datasets and perform a comparison to two other general workflows for the analysis of metagenomic data. PathoFact outperforms all existing workflows in predicting virulence factors and toxin genes. It performs comparably to one pipeline regarding the prediction of antimicrobial resistance while outperforming the others. We further demonstrate the performance of PathoFact on three publicly available case-control metagenomic datasets representing an actual infection as well as chronic diseases in which either pathogenic potential or bacterial toxins are hypothesized to play a role. In each case, we identify virulence factors and AMR genes which differentiated between the case and control groups, thereby revealing novel gene associations with the studied diseases.</p></div><div class="section" id="N65552"><h3 class="BHead" id="nov000-3">Conclusion</h3><p class="para" id="Par3">PathoFact is an easy-to-use, modular, and reproducible pipeline for the identification of virulence factors, bacterial toxins, and antimicrobial resistance genes in metagenomic data. Additionally, our tool combines the prediction of these pathogenicity factors with the identification of mobile genetic elements. This provides further depth to the analysis by considering the genomic context of the pertinent genes. Furthermore, PathoFact’s modules for virulence factors, toxins, and antimicrobial resistance genes can be applied independently, thereby making it a flexible and versatile tool. PathoFact, its models, and databases are freely available at https://pathofact.lcsb.uni.lu.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765899848843-c320a491-0b99-444c-afdb-677beac49916/assets/40168_2020_993_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65572"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65575">The online version contains supplementary material available at 10.1186/s40168-020-00993-9.</p></div>]]></description>
            <pubDate><![CDATA[2021-02-17T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[VirSorter2: a multi-classifier, expert-guided approach to detect diverse DNA and RNA viruses]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00990-y</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Viruses are a significant player in many biosphere and human ecosystems, but most signals remain “hidden” in metagenomic/metatranscriptomic sequence datasets due to the lack of universal gene markers, database representatives, and insufficiently advanced identification tools.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Here, we introduce VirSorter2, a DNA and RNA virus identification tool that leverages genome-informed database advances across a collection of customized automatic classifiers to improve the accuracy and range of virus sequence detection. When benchmarked against genomes from both isolated and uncultivated viruses, VirSorter2 uniquely performed consistently with high accuracy (F1-score &gt; 0.8) across viral diversity, while all other tools under-detected viruses outside of the group most represented in reference databases (i.e., those in the order <i>Caudovirales</i>). Among the tools evaluated, VirSorter2 was also uniquely able to minimize errors associated with atypical cellular sequences including eukaryotic genomes and plasmids. Finally, as the virosphere exploration unravels novel viral sequences, VirSorter2’s modular design makes it inherently able to expand to new types of viruses via the design of new classifiers to maintain maximal sensitivity and specificity.</p></div><div class="section" id="N65555"><h3 class="BHead" id="nov000-3">Conclusion</h3><p class="para" id="Par3">With multi-classifier and modular design, VirSorter2 demonstrates higher overall accuracy across major viral groups and will advance our knowledge of virus evolution, diversity, and virus-microbe interaction in various ecosystems. Source code of VirSorter2 is freely available (https://bitbucket.org/MAVERICLab/virsorter2), and VirSorter2 is also available both on bioconda and as an iVirus app on CyVerse (https://de.cyverse.org/de).</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765821711650-e485105f-2a38-4703-8ddb-8d202cebb511/assets/40168_2020_990_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65580"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65583">The online version contains supplementary material available at 10.1186/s40168-020-00990-y.</p></div>]]></description>
            <pubDate><![CDATA[2021-02-01T00:00]]></pubDate>
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