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            <title><![CDATA[Assessment of the microbiome during bacteriophage therapy in combination with systemic antibiotics to treat a case of staphylococcal device infection]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1766023934881-98680592-6881-4710-afdf-8f50611584b7/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1186/s40168-021-01026-9</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Infectious bacterial diseases exhibiting increasing resistance to antibiotics are a serious global health issue. Bacteriophage therapy is an anti-microbial alternative to treat patients with serious bacterial infections. However, the impacts to the host microbiome in response to clinical use of phage therapy are not well understood.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">Our paper demonstrates a largely unchanged microbiota profile during 4 weeks of phage therapy when added to systemic antibiotics in a single patient with <i>Staphylococcus aureus</i> device infection. Metabolomic analyses suggest potential indirect cascading ecological impacts to the host (skin) microbiome. We did not detect genomes of the three phages used to treat the patient in metagenomic samples taken from saliva, stool, and skin; however, phages were detected using endpoint-PCR in patient serum.</p></div><div class="section" id="N65555"><h3 class="BHead" id="nov000-3">Conclusion</h3><p class="para" id="Par3">Results from our proof-of-principal study supports the use of bacteriophages as a microbiome-sparing approach to treat bacterial infections.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1766023934881-98680592-6881-4710-afdf-8f50611584b7/assets/40168_2021_1026_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/s40168-021-01026-9.</p></div>]]></description>
            <pubDate><![CDATA[2021-04-14T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Repeatability and reproducibility assessment in a large-scale population-based microbiota study: case study on human milk microbiota]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00998-4</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Quality control including assessment of batch variabilities and confirmation of repeatability and reproducibility are integral component of high throughput omics studies including microbiome research. Batch effects can mask true biological results and/or result in irreproducible conclusions and interpretations. Low biomass samples in microbiome research are prone to reagent contamination; yet, quality control procedures for low biomass samples in large-scale microbiome studies are not well established.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">In this study, we have proposed a framework for an in-depth step-by-step approach to address this gap. The framework consists of three independent stages: (1) verification of sequencing accuracy by assessing technical repeatability and reproducibility of the results using mock communities and biological controls; (2) contaminant removal and batch variability correction by applying a two-tier strategy using statistical algorithms (e.g. <i>decontam</i>) followed by comparison of the data structure between batches; and (3) corroborating the repeatability and reproducibility of microbiome composition and downstream statistical analysis. Using this approach on the milk microbiota data from the CHILD Cohort generated in two batches (extracted and sequenced in 2016 and 2019), we were able to identify potential reagent contaminants that were missed with standard algorithms and substantially reduce contaminant-induced batch variability. Additionally, we confirmed the repeatability and reproducibility of our results in each batch before merging them for downstream analysis.</p></div><div class="section" id="N65555"><h3 class="BHead" id="nov000-3">Conclusion</h3><p class="para" id="Par3">This study provides important insight to advance quality control efforts in low biomass microbiome research. Within-study quality control that takes advantage of the data structure (i.e. differential prevalence of contaminants between batches) would enhance the overall reliability and reproducibility of research in this field.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765848080175-6bd2edc6-c619-4712-bb0f-e43ad918aa50/assets/40168_2020_998_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65571"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65574">The online version contains supplementary material available at 10.1186/s40168-020-00998-4.</p></div>]]></description>
            <pubDate><![CDATA[2021-02-10T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Re-purposing software for functional characterization of the microbiome]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1186/s40168-020-00971-1</link>
            <description><![CDATA[<div class="section" id="N65540"><h3 class="BHead" id="nov000-1">Background</h3><p class="para" id="Par1">Widespread bioinformatic resource development generates a constantly evolving and abundant landscape of workflows and software. For analysis of the microbiome, workflows typically begin with taxonomic classification of the microorganisms that are present in a given environment. Additional investigation is then required to uncover the functionality of the microbial community, in order to characterize its currently or potentially active biological processes. Such functional analysis of metagenomic data can be computationally demanding for high-throughput sequencing experiments. Instead, we can directly compare sequencing reads to a functionally annotated database. However, since reads frequently match multiple sequences equally well, analyses benefit from a hierarchical annotation tree, e.g. for taxonomic classification where reads are assigned to the lowest taxonomic unit.</p></div><div class="section" id="N65546"><h3 class="BHead" id="nov000-2">Results</h3><p class="para" id="Par2">To facilitate functional microbiome analysis, we re-purpose well-known taxonomic classification tools to allow us to perform direct functional sequencing read classification with the added benefit of a functional hierarchy. To enable this, we develop and present a tree-shaped functional hierarchy representing the <i>molecular function</i> subset of the Gene Ontology annotation structure. We use this functional hierarchy to replace the standard phylogenetic taxonomy used by the classification tools and assign query sequences accurately to the lowest possible molecular function in the tree. We demonstrate this with simulated and experimental datasets, where we reveal new biological insights.</p></div><div class="section" id="N65555"><h3 class="BHead" id="nov000-3">Conclusions</h3><p class="para" id="Par3">We demonstrate that improved functional classification of metagenomic sequencing reads is possible by re-purposing a range of taxonomic classification tools that are already well-established, in conjunction with either protein or nucleotide reference databases. We leverage the advances in speed, accuracy and efficiency that have been made for taxonomic classification and translate these benefits for the rapid functional classification of microbiomes. While we focus on a specific set of commonly used methods, the functional annotation approach has broad applicability across other sequence classification tools. We hope that re-purposing becomes a routine consideration during bioinformatic resource development.</p><p class="para" id="Par4">
<div class="imageVideo"><img src="/dataresources/secured/content-1765759090308-aec326fb-5bdb-49e8-b9e7-47b5362fd06f/assets/40168_2020_971_MOESM1_ESM.mp4" alt=""/></div></p></div><div class="section" id="N65571"><h3 class="BHead" id="nov000-4">Supplementary Information</h3><p class="para" id="N65574">The online version contains supplementary material available at 10.1186/s40168-020-00971-1.</p></div>]]></description>
            <pubDate><![CDATA[2021-01-09T00:00]]></pubDate>
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