<?xml version="1.0" encoding="UTF-8"?>
<rss version="2.0" xmlns:media="http://search.yahoo.com/mrss/" xmlns:ynews="http://news.yahoo.com/rss/">
    <channel>
        <title>Nova Reader - Subject</title>
        <link>https://www.novareader.co</link>
        <description>Default RSS Feed</description>
        <language>en-us</language>
        <copyright>Newgen KnowledgeWorks</copyright>
        <item>
            <title><![CDATA[Validation and standardization of DNA extraction and library construction methods for metagenomics-based human fecal microbiome measurements]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1766047248430-d0642f61-ab58-41df-a011-65c6733d61f6/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-021-01048-3</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Validation and standardization of methodologies for microbial community measurements by high-throughput sequencing are needed to support human microbiome research and its industrialization. This study set out to establish standards-based solutions to improve the accuracy and reproducibility of metagenomics-based microbiome profiling of human fecal samples.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">In the first phase, we performed a head-to-head comparison of a wide range of protocols for DNA extraction and sequencing library construction using defined mock communities, to identify performant protocols and pinpoint sources of inaccuracy in quantification. In the second phase, we validated performant protocols with respect to their variability of measurement results within a single laboratory (that is, intermediate precision) as well as interlaboratory transferability and reproducibility through an industry-based collaborative study. We further ascertained the performance of our recommended protocols in the context of a community-wide interlaboratory study (that is, the MOSAIC Standards Challenge). Finally, we defined performance metrics to provide best practice guidance for improving measurement consistency across methods and laboratories.</p></div><div class="section" id="N65552"><h3 class="BHead" id="nov000-3">Conclusions</h3><p class="para" id="Par3">The validated protocols and methodological guidance for DNA extraction and library construction provided in this study expand current best practices for metagenomic analyses of human fecal microbiota. Uptake of our protocols and guidelines will improve the accuracy and comparability of metagenomics-based studies of the human microbiome, thereby facilitating development and commercialization of human microbiome-based products.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1766047248430-d0642f61-ab58-41df-a011-65c6733d61f6/assets/40168_2021_1048_MOESM2_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65567"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65570">The online version contains supplementary material available at 10.1186/s40168-021-01048-3.</p></div>]]></description>
            <pubDate><![CDATA[2021-04-29T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Accurate and sensitive detection of microbial eukaryotes from whole metagenome shotgun sequencing]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765969023666-37ec33f2-a5fe-4e7a-8c77-6c12219cd187/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-021-01015-y</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Microbial eukaryotes are found alongside bacteria and archaea in natural microbial systems, including host-associated microbiomes. While microbial eukaryotes are critical to these communities, they are challenging to study with shotgun sequencing techniques and are therefore often excluded.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Here, we present EukDetect, a bioinformatics method to identify eukaryotes in shotgun metagenomic sequencing data. Our approach uses a database of 521,824 universal marker genes from 241 conserved gene families, which we curated from 3713 fungal, protist, non-vertebrate metazoan, and non-streptophyte archaeplastida genomes and transcriptomes. EukDetect has a broad taxonomic coverage of microbial eukaryotes, performs well on low-abundance and closely related species, and is resilient against bacterial contamination in eukaryotic genomes. Using EukDetect, we describe the spatial distribution of eukaryotes along the human gastrointestinal tract, showing that fungi and protists are present in the lumen and mucosa throughout the large intestine. We discover that there is a succession of eukaryotes that colonize the human gut during the first years of life, mirroring patterns of developmental succession observed in gut bacteria. By comparing DNA and RNA sequencing of paired samples from human stool, we find that many eukaryotes continue active transcription after passage through the gut, though some do not, suggesting they are dormant or nonviable. We analyze metagenomic data from the Baltic Sea and find that eukaryotes differ across locations and salinity gradients. Finally, we observe eukaryotes in <i>Arabidopsis</i> leaf samples, many of which are not identifiable from public protein databases.</p></div><div class="section" id="N65555"><h3 class="BHead" id="nov000-3">Conclusions</h3><p class="para" id="Par3">EukDetect provides an automated and reliable way to characterize eukaryotes in shotgun sequencing datasets from diverse microbiomes. We demonstrate that it enables discoveries that would be missed or clouded by false positives with standard shotgun sequence analysis. EukDetect will greatly advance our understanding of how microbial eukaryotes contribute to microbiomes.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765969023666-37ec33f2-a5fe-4e7a-8c77-6c12219cd187/assets/40168_2021_1015_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65570"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65573">The online version contains supplementary material available at 10.1186/s40168-021-01015-y.</p></div>]]></description>
            <pubDate><![CDATA[2021-03-03T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Next-generation diagnostics: virus capture facilitates a sensitive viral diagnosis for epizootic and zoonotic pathogens including SARS-CoV-2]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765900861884-129a7013-9cf8-4042-b926-c623bf83d532/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00973-z</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">The detection of pathogens in clinical and environmental samples using high-throughput sequencing (HTS) is often hampered by large amounts of background information, which is especially true for viruses with small genomes. Enormous sequencing depth can be necessary to compile sufficient information for identification of a certain pathogen. Generic HTS combining with in-solution capture enrichment can markedly increase the sensitivity for virus detection in complex diagnostic samples.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Methods</h3><p class="para" id="Par2">A virus panel based on the principle of biotinylated RNA baits was developed for specific capture enrichment of epizootic and zoonotic viruses (VirBaits). The VirBaits set was supplemented by a SARS-CoV-2 predesigned bait set for testing recent SARS-CoV-2-positive samples. Libraries generated from complex samples were sequenced via generic HTS (without enrichment) and afterwards enriched with the VirBaits set. For validation, an internal proficiency test for emerging epizootic and zoonotic viruses (African swine fever virus, Ebolavirus, Marburgvirus, Nipah henipavirus, Rift Valley fever virus) was conducted.</p></div><div class="section" id="N65552"><h3 class="BHead" id="nov000-3">Results</h3><p class="para" id="Par3">The VirBaits set consists of 177,471 RNA baits (80-mer) based on about 18,800 complete viral genomes targeting 35 epizootic and zoonotic viruses. In all tested samples, viruses with both DNA and RNA genomes were clearly enriched ranging from about 10-fold to 10,000-fold for viruses including distantly related viruses with at least 72% overall identity to viruses represented in the bait set. Viruses showing a lower overall identity (38% and 46%) to them were not enriched but could nonetheless be detected based on capturing conserved genome regions. The internal proficiency test supports the improved virus detection using the combination of HTS plus targeted enrichment but also points to the risk of cross-contamination between samples.</p></div><div class="section" id="N65558"><h3 class="BHead" id="nov000-4">Conclusions</h3><p class="para" id="Par4">The VirBaits approach showed a high diagnostic performance, also for distantly related viruses. The bait set is modular and expandable according to the favored diagnostics, health sector, or research question. The risk of cross-contamination needs to be taken into consideration. The application of the RNA-baits principle turned out to be user friendly, and even non-experts can easily use the VirBaits workflow. The rapid extension of the established VirBaits set adapted to actual outbreak events is possible as shown for SARS-CoV-2.</p><p class="para" id="Par5">
<div class="imageVideo"><img src="/dataresources/secured/content-1765900861884-129a7013-9cf8-4042-b926-c623bf83d532/assets/40168_2020_973_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65574"><h3 class="BHead" id="nov000-5">Supplementary Information</h3><p class="para" id="N65577">The online version contains supplementary material available at 10.1186/s40168-020-00973-z.</p></div>]]></description>
            <pubDate><![CDATA[2021-02-20T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[HMD-ARG: hierarchical multi-task deep learning for annotating antibiotic resistance genes]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765849294693-8e782fe2-b01e-4498-b538-67c08189b94e/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-021-01002-3</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">The spread of antibiotic resistance has become one of the most urgent threats to global health, which is estimated to cause 700,000 deaths each year globally. Its surrogates, antibiotic resistance genes (ARGs), are highly transmittable between food, water, animal, and human to mitigate the efficacy of antibiotics. Accurately identifying ARGs is thus an indispensable step to understanding the ecology, and transmission of ARGs between environmental and human-associated reservoirs. Unfortunately, the previous computational methods for identifying ARGs are mostly based on sequence alignment, which cannot identify novel ARGs, and their applications are limited by currently incomplete knowledge about ARGs.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Here, we propose an end-to-end Hierarchical Multi-task Deep learning framework for ARG annotation (HMD-ARG). Taking raw sequence encoding as input, HMD-ARG can identify, without querying against existing sequence databases, multiple ARG properties simultaneously, including if the input protein sequence is an ARG, and if so, what antibiotic family it is resistant to, what resistant mechanism the ARG takes, and if the ARG is an intrinsic one or acquired one. In addition, if the predicted antibiotic family is beta-lactamase, HMD-ARG further predicts the subclass of beta-lactamase that the ARG is resistant to. Comprehensive experiments, including cross-fold validation, third-party dataset validation in human gut microbiota, wet-experimental functional validation, and structural investigation of predicted conserved sites, demonstrate not only the superior performance of our method over the state-of-art methods, but also the effectiveness and robustness of the proposed method.</p></div><div class="section" id="N65552"><h3 class="BHead" id="nov000-3">Conclusions</h3><p class="para" id="Par3">We propose a hierarchical multi-task method, HMD-ARG, which is based on deep learning and can provide detailed annotations of ARGs from three important aspects: resistant antibiotic class, resistant mechanism, and gene mobility. We believe that HMD-ARG can serve as a powerful tool to identify antibiotic resistance genes and, therefore mitigate their global threat. Our method and the constructed database are available at http://www.cbrc.kaust.edu.sa/HMDARG/.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765849294693-8e782fe2-b01e-4498-b538-67c08189b94e/assets/40168_2021_1002_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/s40168-021-01002-3.</p></div>]]></description>
            <pubDate><![CDATA[2021-02-08T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Accurate identification and quantification of commensal microbiota bound by host immunoglobulins]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765822335081-cc05e8d9-d9aa-42ce-a17f-852f8df62d8d/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00992-w</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Identifying which taxa are targeted by immunoglobulins can uncover important host-microbe interactions. Immunoglobulin binding of commensal taxa can be assayed by sorting bound bacteria from samples and using amplicon sequencing to determine their taxonomy, a technique most widely applied to study Immunoglobulin A (IgA-Seq). Previous experiments have scored taxon binding in IgA-Seq datasets by comparing abundances in the IgA bound and unbound sorted fractions. However, as these are relative abundances, such scores are influenced by the levels of the other taxa present and represent an abstract combination of these effects. Diversity in the practical approaches of prior studies also warrants benchmarking of the individual stages involved. Here, we provide a detailed description of the design strategy for an optimised IgA-Seq protocol. Combined with a novel scoring method for IgA-Seq datasets that accounts for the aforementioned effects, this platform enables accurate identification and quantification of commensal gut microbiota targeted by host immunoglobulins.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Using germ-free and <i>Rag1</i><sup>−/−</sup> mice as negative controls, and a strain-specific IgA antibody as a positive control, we determine optimal reagents and fluorescence-activated cell sorting (FACS) parameters for IgA-Seq. Using simulated IgA-Seq data, we show that existing IgA-Seq scoring methods are influenced by pre-sort relative abundances. This has consequences for the interpretation of case-control studies where there are inherent differences in microbiota composition between groups. We show that these effects can be addressed using a novel scoring approach based on posterior probabilities. Finally, we demonstrate the utility of both the IgA-Seq protocol and probability-based scores by examining both novel and published data from <i>in vivo</i> disease models.</p></div><div class="section" id="N65560"><h3 class="BHead" id="nov000-3">Conclusions</h3><p class="para" id="Par3">We provide a detailed IgA-Seq protocol to accurately isolate IgA-bound taxa from intestinal samples. Using simulated and experimental data, we demonstrate novel probability-based scores that adjust for the compositional nature of relative abundance data to accurately quantify taxon-level IgA binding. All scoring approaches are made available in the IgAScores R package. These methods should improve the generation and interpretation of IgA-Seq datasets and could be applied to study other immunoglobulins and sample types.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765822335081-cc05e8d9-d9aa-42ce-a17f-852f8df62d8d/assets/40168_2020_992_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65575"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65578">The online version contains supplementary material available at 10.1186/s40168-020-00992-w.</p></div>]]></description>
            <pubDate><![CDATA[2021-01-30T00:00]]></pubDate>
        </item>
    </channel>
</rss>