Veterans Administration Western New York Healthcare System, University at Buffalo, Buffalo, New York, USA.
Department of Medicine, University at Buffalo, Buffalo, New York, USA.
mBio. 2024 Feb 14;15(2):e0286723. doi: 10.1128/mbio.02867-23. Epub 2024 Jan 17.
Distinguishing hypervirulent (hvKp) from classical (cKp) strains is important for clinical care, surveillance, and research. Some combinations of and 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 . strains that possessed some combinations of and and had acquired resistance were assembled and categorized as hypervirulent hvKp (hvKp) ( = 16) or cKp ( = 33) 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 ( = 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.IMPORTANCEHypervirulent (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 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 and 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.
区分高毒力(hvKp)和经典(cKp)菌株对于临床护理、监测和研究非常重要。一些 和 的组合最常被使用,但目前尚不清楚哪种基因型或表型标志物(例如,铁载体浓度、黏液性)组合最能准确预测高毒力表型。此外,获得抗菌药物耐药性可能会影响毒力并混淆鉴定。因此,将具有某些 和 组合且已获得耐药性的 49 株 菌株组装并分类为高毒力 hvKp(hvKp)( = 16)或 cKp( = 33),然后在小鼠感染模型中进行分析。生物标志物数量、铁载体产生、黏液性、毒力质粒与经典 pLVPK 的 Mash/Jaccard 距离以及 Kleborate 毒力评分进行了测量和评估,以准确区分这些病原体。使用逐步逻辑回归和 CART 模型来确定哪种变量最能预测菌株群体。仅生物标志物数量就是这两种分析的最强预测因子。对于逻辑回归,生物标志物数量的曲线下面积为 0.962( = 0.004)。CART 模型生成了一个分类规则,即生物标志物数量 = 5 将菌株分类为 hvKP,从而使预测 hvKP 的敏感性为 94%(15/16),特异性为 94%(31/33),总体准确性为 94%(46/49)。尽管生物标志物数量≥4 预测 hvKP 的敏感性为 100%(16/16),但特异性和准确性分别降至 76%(25/33)和 84%(41/49)。这些发现可用于为鉴定 hvKp 提供信息。
高毒力(hvKp)是一种令人担忧的病原体,可导致原本健康的个体发生危及生命的感染。重要的是,尽管 hvKp 菌株已获得抗菌药物耐药性,但对毒力的影响尚不清楚。因此,确定给定的耐抗菌药物的 分离株是否具有高毒力至关重要。本报告确定了哪种基因型和表型标志物的组合可以最准确地识别具有获得性耐药性的 hvKp 菌株。逻辑回归和机器学习预测模型均表明,生物标志物数量是最强的预测因子。存在所有五个生物标志物 和 是最准确的(94%);存在≥4 个标志物是最敏感的(100%)。准确识别 hvKp 对于监测和研究至关重要,生物标志物数据的可用性可以提醒临床医生 hvKp 需要考虑,这反过来又有助于优化患者护理。