Abstract
AbstractWomen with uncomplicated urinary tract infection (UTI) symptoms are commonly treated with empirical antibiotics, resulting in overuse of antibiotics, which promotes antimicrobial resistance. Available diagnostic tools are either not cost-effective or diagnostically sub-optimal. Here, we identified clinical and urinary immunological predictors for UTI diagnosis. We explored 17 clinical and 42 immunological potential predictors for bacterial culture among women with uncomplicated UTI symptoms using random forest or support vector machine coupled with recursive feature elimination. Urine cloudiness was the best performing clinical predictor to rule out (negative likelihood ratio [LR−] = 0.4) and rule in (LR+ = 2.6) UTI. Using a more discriminatory scale to assess cloudiness (turbidity) increased the accuracy of UTI prediction further (LR+ = 4.4). Urinary levels of MMP9, NGAL, CXCL8 and IL-1β together had a higher LR+ (6.1) and similar LR− (0.4), compared to cloudiness. Varying the bacterial count thresholds for urine culture positivity did not alter best clinical predictor selection, but did affect the number of immunological predictors required for reaching an optimal prediction. We conclude that urine cloudiness is particularly helpful in ruling out negative UTI cases. The identified urinary biomarkers could be used to develop a point of care test for UTI but require further validation.
Funder
DH | National Institute for Health Research
Health and Care Research Wales
Publisher
Springer Science and Business Media LLC
Reference54 articles.
1. Butler, C. C. et al. Variations in presentation, management, and patient outcomes of urinary tract infection: a prospective four-country primary care observational cohort study. Br J Gen Pract 67, e830–e841, https://doi.org/10.3399/bjgp17X693641 (2017).
2. Little, P. et al. Dipsticks and diagnostic algorithms in urinary tract infection: development and validation, randomised trial, economic analysis, observational cohort and qualitative study. Health Technol Assess 13, 1–73, https://doi.org/10.3310/hta13190 (2009).
3. NICE: National Institute for Health and Care Excellence. Urinary tract infection (lower): antimicrobial prescribing, Draft for consultation, http://www.nice.org.uk/guidance/gid-apg10004/documents/draft-guideline-2 (2018).
4. Little, P. et al. Developing clinical rules to predict urinary tract infection in primary care settings: sensitivity and specificity of near patient tests (dipsticks) and clinical scores. Br J Gen Pract 56, 606–612 (2006).
5. Jhang, J. F. & Kuo, H. C. Recent advances in recurrent urinary tract infection from pathogenesis and biomarkers to prevention. Tzu chi Medical Journal 29, 131–137, https://doi.org/10.4103/tcmj.tcmj_53_17 (2017).
Cited by
49 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献