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Rapid Cytometric Antibiotic Susceptibility Testing Utilizing Adaptive Multidimensional Statistical Metrics

机译:利用自适应多维统计指标快速进行细胞计数抗生素敏感性测试

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Flow cytometry holds promise to accelerate antibiotic susceptibility determinations; however, without robust multidimensional statistical analysis, general discrimination criteria have remained elusive. In this study, a new statistical method, probability binning signature quadratic form (PB-sQF), was developed and applied to analyze flow cytometric data of bacterial responses to antibiotic exposure. Both sensitive lab strains (Escherichia coli and Pseudomonas aeruginosa) and a multidrug resistant, clinically isolated strain (E. coli) were incubated with the bacteria-targeted dye, maltohexaose-conjugated IR786, and each of many bactericidal or bacteriostatic antibiotics to identify changes induced around corresponding minimum inhibition concentrations (MIC). The antibiotic-induced damages were monitored by flow cytometry after 1-h incubation through forward scatter, side scatter, and fluorescence channels. The 3-dimensional differences between the flow cytometric data of the no-antibiotic treated bacteria and the antibiotic-treated bacteria were characterized by PB-sQF into a 1-dimensional linear distance. A 99% confidence level was established by statistical bootstrapping for each antibiotic-bacteria pair. For the susceptible E. coli strain, statistically significant increments from this 99% confidence level were observed from 1/16x MIC to 1x MIC for all the antibiotics. The same increments were recorded for P. aeruginosa, which has been reported to cause difficulty in flow-based viability tests. For the multidrug resistant E. coli, significant distances from control samples were observed only when an effective antibiotic treatment was utilized. Our results suggest that a rapid and robust antimicrobial susceptibility test (AST) can be constructed by statistically characterizing the differences between sample and control flow cytometric populations, even in a label-free scheme with scattered light alone. These distances vs paired controls coupled with rigorous statistical confidence limits offer a new path toward investigating initial biological responses, screening for drugs, and shortening time to result in antimicrobial sensitivity testing.
机译:流式细胞术有望加快抗生素敏感性的测定。但是,如果没有可靠的多维统计分析,一般的判别标准仍然难以捉摸。在这项研究中,一种新的统计方法,概率归类签名二次形式(PB-sQF),被开发并应用于分析细菌对抗生素暴露反应的流式细胞仪数据。将敏感的实验室菌株(大肠埃希氏菌和铜绿假单胞菌)和临床上具有多重耐药性的菌株(大肠杆菌)均与细菌靶向染料,麦芽六糖缀合的IR786以及许多杀菌或抑菌抗生素中的每一种一起孵育,以鉴定诱导的变化在相应的最小抑制浓度(MIC)附近。孵育1小时后,通过前向散射,侧向散射和荧光通道,通过流式细胞仪监测抗生素诱导的损害。非抗生素处理细菌和抗生素处理细菌的流式细胞术数据之间的3维差异通过PB-sQF表征为1维线性距离。通过统计自举对每个抗生素-细菌对建立99%的置信度。对于敏感的大肠杆菌菌株,对于所有抗生素,从这一99%的置信度水平观察到从1 / 16x MIC到1x MIC的统计学显着增加。铜绿假单胞菌记录了相同的增量,据报道在基于流量的生存力测试中造成困难。对于具有多重耐药性的大肠杆菌,只有在使用有效的抗生素治疗后,才能观察到与对照样品的明显距离。我们的结果表明,即使在无标记方案中仅使用散射光,也可以通过统计表征样品和对照流式细胞仪种群之间的差异来构建快速而强大的抗菌药物敏感性试验(AST)。这些距离与配对对照之间的距离以及严格的统计置信度限制为研究初始生物学反应,筛选药物和缩短进行抗菌药物敏感性测试的时间提供了一条新途径。

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