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Prediction of Uropathogens by Flow Cytometry and Dip-stick Test Results of Urine Through Multivariable Logistic Regression Analysis

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Figshare2020-01-07 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Prediction_of_Uropathogens_by_Flow_Cytometry_and_Dip-stick_Test_Results_of_Urine_Through_Multivariable_Logistic_Regression_Analysis/11539497
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PurposeMultidrug-resistant Enterobacteriaceae in urinary tract infection (UTI) has spread worldwide; one cause is overuse of broad-spectrum antimicrobial agents such as fluoroquinolone antibacterials. To improve antimicrobial agent administration, this study aimed to calculate a probability prediction formula to predict the organism strain causing UTI in real time from dip-stick testing and flow cytometry.MethodologyWe examined 372 outpatient spot urine samples with observed pyuria and bacteriuria using dip-stick testing and flow cytometry. We performed multiple logistic-regression analysis on the basis of 11 measurement items and BACT scattergram analysis with age and sex as explanatory variables and each strain as the response variable and calculated a probability prediction formula.ResultsThe best prediction formula for discrimination of the bacilli group and cocci or polymicrobial group was a model with 5 explanatory variables that included percentage of scattergram dots in an angular area of 0–25° (PP. mirabilis and other bacilli was a model with percentage of scattergram dots in an angular area of 0–20° (PConclusionSimultaneous use of the calculated probability prediction formula with urinalysis results facilitates real-time prediction of organisms causing UTI, thus providing helpful information for empiric therapy.
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2020-01-07
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