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      Differentiation of hypervirulent and classical Klebsiella pneumoniae with acquired drug resistance

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          ABSTRACT

          Distinguishing hypervirulent (hvKp) from classical Klebsiella pneumoniae (cKp) strains is important for clinical care, surveillance, and research. Some combinations of iucA, iroB, peg-344, rmpA, and rmpA2 are most commonly used, but it is unclear what combination of genotypic or phenotypic markers (e.g., siderophore concentration, mucoviscosity) most accurately predicts the hypervirulent phenotype. Furthermore, acquisition of antimicrobial resistance may affect virulence and confound identification. Therefore, 49 K. pneumoniae strains that possessed some combinations of iucA, iroB, peg-344, rmpA, and rmpA2 and had acquired resistance were assembled and categorized as hypervirulent hvKp (hvKp) ( N = 16) or cKp ( N = 33) via a murine infection model. Biomarker number, siderophore production, mucoviscosity, virulence plasmid’s Mash/Jaccard distances to the canonical pLVPK, and Kleborate virulence score were measured and evaluated to accurately differentiate these pathotypes. Both stepwise logistic regression and a CART model were used to determine which variable was most predictive of the strain cohorts. The biomarker count alone was the strongest predictor for both analyses. For logistic regression, the area under the curve for biomarker count was 0.962 ( P = 0.004). The CART model generated the classification rule that a biomarker count = 5 would classify the strain as hvKP, resulting in a sensitivity for predicting hvKP of 94% (15/16), a specificity of 94% (31/33), and an overall accuracy of 94% (46/49). Although a count of ≥4 was 100% (16/16) sensitive for predicting hvKP, the specificity and accuracy decreased to 76% (25/33) and 84% (41/49), respectively. These findings can be used to inform the identification of hvKp.

          IMPORTANCE

          Hypervirulent Klebsiella pneumoniae (hvKp) is a concerning pathogen that can cause life-threatening infections in otherwise healthy individuals. Importantly, although strains of hvKp have been acquiring antimicrobial resistance, the effect on virulence is unclear. Therefore, it is of critical importance to determine whether a given antimicrobial resistant K. pneumoniae isolate is hypervirulent. This report determined which combination of genotypic and phenotypic markers could most accurately identify hvKp strains with acquired resistance. Both logistic regression and a machine-learning prediction model demonstrated that biomarker count alone was the strongest predictor. The presence of all five of the biomarkers iucA, iroB, peg-344, rmpA, and rmpA2 was most accurate (94%); the presence of ≥4 of these biomarkers was most sensitive (100%). Accurately identifying hvKp is vital for surveillance and research, and the availability of biomarker data could alert the clinician that hvKp is a consideration, which, in turn, would assist in optimizing patient care.

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          Most cited references52

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          Roary: rapid large-scale prokaryote pan genome analysis

          Summary: A typical prokaryote population sequencing study can now consist of hundreds or thousands of isolates. Interrogating these datasets can provide detailed insights into the genetic structure of prokaryotic genomes. We introduce Roary, a tool that rapidly builds large-scale pan genomes, identifying the core and accessory genes. Roary makes construction of the pan genome of thousands of prokaryote samples possible on a standard desktop without compromising on the accuracy of results. Using a single CPU Roary can produce a pan genome consisting of 1000 isolates in 4.5 hours using 13 GB of RAM, with further speedups possible using multiple processors. Availability and implementation: Roary is implemented in Perl and is freely available under an open source GPLv3 license from http://sanger-pathogens.github.io/Roary Contact: roary@sanger.ac.uk Supplementary information: Supplementary data are available at Bioinformatics online.
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            Mash: fast genome and metagenome distance estimation using MinHash

            Mash extends the MinHash dimensionality-reduction technique to include a pairwise mutation distance and P value significance test, enabling the efficient clustering and search of massive sequence collections. Mash reduces large sequences and sequence sets to small, representative sketches, from which global mutation distances can be rapidly estimated. We demonstrate several use cases, including the clustering of all 54,118 NCBI RefSeq genomes in 33 CPU h; real-time database search using assembled or unassembled Illumina, Pacific Biosciences, and Oxford Nanopore data; and the scalable clustering of hundreds of metagenomic samples by composition. Mash is freely released under a BSD license (https://github.com/marbl/mash). Electronic supplementary material The online version of this article (doi:10.1186/s13059-016-0997-x) contains supplementary material, which is available to authorized users.
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              UpSet: Visualization of Intersecting Sets.

              Understanding relationships between sets is an important analysis task that has received widespread attention in the visualization community. The major challenge in this context is the combinatorial explosion of the number of set intersections if the number of sets exceeds a trivial threshold. In this paper we introduce UpSet, a novel visualization technique for the quantitative analysis of sets, their intersections, and aggregates of intersections. UpSet is focused on creating task-driven aggregates, communicating the size and properties of aggregates and intersections, and a duality between the visualization of the elements in a dataset and their set membership. UpSet visualizes set intersections in a matrix layout and introduces aggregates based on groupings and queries. The matrix layout enables the effective representation of associated data, such as the number of elements in the aggregates and intersections, as well as additional summary statistics derived from subset or element attributes. Sorting according to various measures enables a task-driven analysis of relevant intersections and aggregates. The elements represented in the sets and their associated attributes are visualized in a separate view. Queries based on containment in specific intersections, aggregates or driven by attribute filters are propagated between both views. We also introduce several advanced visual encodings and interaction methods to overcome the problems of varying scales and to address scalability. UpSet is web-based and open source. We demonstrate its general utility in multiple use cases from various domains.
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                Author and article information

                Contributors
                Role: ConceptualizationRole: Data curationRole: Formal analysisRole: Funding acquisitionRole: InvestigationRole: MethodologyRole: Project administrationRole: SupervisionRole: Writing – original draftRole: Writing – review and editing
                Role: Data curationRole: Formal analysisRole: InvestigationRole: Writing – review and editing
                Role: Data curationRole: InvestigationRole: Writing – review and editing
                Role: Data curationRole: InvestigationRole: Writing – review and editing
                Role: InvestigationRole: Writing – review and editing
                Role: Data curationRole: Formal analysisRole: Writing – review and editing
                Role: Data curationRole: Formal analysisRole: InvestigationRole: Writing – review and editing
                Role: Data curationRole: InvestigationRole: Writing – review and editing
                Role: Data curationRole: InvestigationRole: Writing – review and editing
                Role: Data curationRole: Formal analysisRole: InvestigationRole: Writing – review and editing
                Role: InvestigationRole: Writing – review and editing
                Role: ConceptualizationRole: Data curationRole: InvestigationRole: Project administrationRole: Writing – review and editing
                Role: ConceptualizationRole: Project administrationRole: Writing – review and editing
                Role: ConceptualizationRole: Data curationRole: Formal analysisRole: Writing – review and editing
                Role: Editor
                Journal
                mBio
                mBio
                mbio
                mBio
                American Society for Microbiology (1752 N St., N.W., Washington, DC )
                2150-7511
                February 2024
                17 January 2024
                17 January 2024
                : 15
                : 2
                : e02867-23
                Affiliations
                [1 ]Veterans Administration Western New York Healthcare System, University at Buffalo; , Buffalo, New York, USA
                [2 ]Department of Medicine, University at Buffalo; , Buffalo, New York, USA
                [3 ]Department of Microbiology and Immunology, University at Buffalo; , Buffalo, New York, USA
                [4 ]The Witebsky Center for Microbial Pathogenesis, University at Buffalo, State University of New York; , Buffalo, New York, USA
                [5 ]Department of Biostatistics and Bioinformatics, Roswell Park Comprehensive Cancer Center; , Buffalo, New York, USA
                [6 ]Multidrug-Resistant Organism Repository and Surveillance Network (MRSN), Walter Reed Army Institute of Research; , Silver Spring, Maryland, USA
                [7 ]Division of Healthcare Quality Promotion, U.S. Centers for Disease Control and Prevention; , Atlanta, Georgia, USA
                Louis Stokes Veterans Affairs Medical Center; , Cleveland, Ohio, USA
                Author notes
                Address correspondence to Thomas A. Russo, trusso@ 123456buffalo.edu

                The authors declare no conflict of interest.

                Author information
                https://orcid.org/0000-0003-4566-7442
                https://orcid.org/0000-0003-1643-1617
                https://orcid.org/0000-0003-1548-9438
                https://orcid.org/0000-0002-7157-5026
                Article
                02867-23 mbio.02867-23
                10.1128/mbio.02867-23
                10865842
                38231533
                f2568a24-b97a-4263-8a48-c7c1b2556bd6

                This is a work of the U.S. Government and is not subject to copyright protection in the United States. Foreign copyrights may apply.

                History
                : 24 October 2023
                : 14 December 2023
                Page count
                supplementary-material: 4, authors: 14, Figures: 5, Tables: 2, References: 52, Pages: 19, Words: 10132
                Funding
                Funded by: HHS | National Institutes of Health (NIH);
                Award ID: AI123558-01
                Award Recipient :
                Funded by: HHS | National Institutes of Health (NIH);
                Award ID: AI141826-01A1
                Award Recipient :
                Funded by: Veterans Administration Medical Center (VAMC);
                Award ID: BX004677-01
                Award Recipient :
                Funded by: DOD | USA | U.S. Army Medical Command (MEDCOM);
                Award Recipient :
                Funded by: Defense Medical Research and Development Program;
                Award Recipient :
                Categories
                Research Article
                clinical-microbiology, Clinical Microbiology
                Custom metadata
                February 2024

                Life sciences
                klebsiella,hypervirulent,classical,biomarker,diagnosis
                Life sciences
                klebsiella, hypervirulent, classical, biomarker, diagnosis

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