Neelam Jain, K. Bhargava, Jagdish Prasad, Alexandru-Atila Morlocan, Gopal Nath, Amit Bhargava, Palak Khinvasara, Ragini Yadav, G. Aseri
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引用次数: 0
摘要
尿路感染(UTI)是全球最常见的传染病之一。针对尿路感染患者的临床研究很多,但基于问卷的尿路感染研究却很少。普拉亚格拉杰(印度北部的东部地区)的海斯纪念传教医院对高度怀疑无并发症UTI的门诊病人进行了一项横断面研究,以了解症状和易感因素的频率及其与预测UTI的关系。逻辑回归分析表明,UTI 与某些变量之间存在显著关联。此外,导致尿崩症发生的因素还包括 "性别"、"从早到晚排尿次数"、"突然想尿且难以忍住"、"尿流无力"、"尿流分裂或喷射 "和 "发烧"。此外,还建立了一个预测尿毒症的统计模型(多重逻辑模型),准确率为 82.2%。研究还发现,女性尿毒症患病率(几率比)是男性的 2.38 倍。该研究为疑似尿毒症患者制作了一份筛查问卷。在 AMR 不断升级的今天,该研究建立了一个预测 UTI 的多重逻辑模型,从公共卫生的角度来看,该模型有助于临床医生管理尿路感染。
A multiple logistic model for prediction of urinary tract infections in an urban community: A public health perspective
Urinary tract infection (UTI) is one of the most common infectious diseases globally. A lot of clinical research has been done on UTI patients, but a questionnaire-based study on UTI is scarce. A cross-sectional study was conducted on outpatients with a high suspicion of uncomplicated UTI in Hayes Memorial Mission Hospital at Prayagraj (Eastern part of Northern India) to find out the frequency of symptoms and predisposing factors and their relationship towards the prediction of UTI. Logistic regression analysis showed a significant association between UTI and some of the variables. Also, the factors responsible for the occurrence of UTI are “gender”, “how many times you urinate from morning till night”, “a sudden desire to urinate, which is difficult to hold”, “weakness of urinary stream”, “splitting or spraying of the urinary stream” and “fever”. A statistical model (multiple logistic model) has been also established for the prediction of UTIs with an accuracy of 82.2%. It is also observed that the prevalence rate (odds ratio) of UTI in females is 2.38 times that of males. The study created a screening questionnaire for patients suspected of having UTI. A multiple logistic model has been established for the prediction of UTI which can be instrumental for clinicians from a public health perspective in the management of Urinary Tract Infections in this era of escalating AMR.