Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection

Background/Aims: The aim of this study was to develop a tool to predict multidrug-resistant bacteria infections among patients with biliary tract infection for targeted therapy. Patients and Methods: We conducted a single-center retrospective descriptive study from January 2016 to December 2018. Uni...

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Main Authors: Yingying Hu, Kongying Lin, Kecan Lin, Haitao Lin, Ruijia Chen, Shengcong Li, Jinye Wang, Yongyi Zeng, Jingfeng Liu
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2020-01-01
Series:The Saudi Journal of Gastroenterology
Subjects:
Online Access:http://www.saudijgastro.com/article.asp?issn=1319-3767;year=2020;volume=26;issue=6;spage=326;epage=336;aulast=Hu
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spelling doaj-2e9796b5c42447f98a0f07fc666b421e2020-12-02T13:15:09ZengWolters Kluwer Medknow PublicationsThe Saudi Journal of Gastroenterology1319-37671998-40492020-01-0126632633610.4103/sjg.SJG_128_20Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infectionYingying HuKongying LinKecan LinHaitao LinRuijia ChenShengcong LiJinye WangYongyi ZengJingfeng LiuBackground/Aims: The aim of this study was to develop a tool to predict multidrug-resistant bacteria infections among patients with biliary tract infection for targeted therapy. Patients and Methods: We conducted a single-center retrospective descriptive study from January 2016 to December 2018. Univariate and multivariable logistic regression analysis were used to identify independent risk factors of multidrug-resistant bacterial infections. A nomogram was constructed according to multivariable regression model. Moreover, the clinical usefulness of the nomogram was estimated by decision curve analysis. Results: 121 inpatients were randomly divided into a training cohort (n = 79) and validation cohort (n = 42). In multivariate analysis, 5 factors were associated with biliary tract infections caused by multidrug-resistant bacterial infections: aspartate aminotransferase (Odds ratio (OR), 13.771; 95% confidence interval (CI), 3.747-64.958; P <0.001), previous antibiotic use within 90 days (OR, 4.130; 95% CI, 1.192-16.471; P = 0.032), absolute neutrophil count (OR, 3.491; 95% CI, 1.066-12.851; P = 0.046), previous biliary surgery (OR, 3.303; 95% CI, 0.910-13.614; P = 0.079), and hemoglobin (OR, 0.146; 95% CI, 0.030-0.576; P = 0.009). The nomogram model was constructed based on these variables, and showed good calibration and discrimination in the training set [area under the curve (AUC), 0.86] and in the validation set (AUC, 0.799). The decision curve analysis demonstrated the clinical usefulness of our nomogram. Using the nomogram score, high risk and low risk patients with multidrug-resistant bacterial infection could be differentiated. Conclusions: This simple bedside prediction tool to predict multidrug-resistant bacterial infection can help clinicians identify low versus high risk patients as well as choose appropriate, timely initial empirical antibiotics therapy. This model should be validated before it is widely applied in clinical settings. we can differentiate betweenhttp://www.saudijgastro.com/article.asp?issn=1319-3767;year=2020;volume=26;issue=6;spage=326;epage=336;aulast=Hubiliary tract infectionmultidrug-resistant bacterialnomogram
collection DOAJ
language English
format Article
sources DOAJ
author Yingying Hu
Kongying Lin
Kecan Lin
Haitao Lin
Ruijia Chen
Shengcong Li
Jinye Wang
Yongyi Zeng
Jingfeng Liu
spellingShingle Yingying Hu
Kongying Lin
Kecan Lin
Haitao Lin
Ruijia Chen
Shengcong Li
Jinye Wang
Yongyi Zeng
Jingfeng Liu
Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
The Saudi Journal of Gastroenterology
biliary tract infection
multidrug-resistant bacterial
nomogram
author_facet Yingying Hu
Kongying Lin
Kecan Lin
Haitao Lin
Ruijia Chen
Shengcong Li
Jinye Wang
Yongyi Zeng
Jingfeng Liu
author_sort Yingying Hu
title Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
title_short Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
title_full Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
title_fullStr Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
title_full_unstemmed Developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
title_sort developing a risk prediction model for multidrug-resistant bacterial infection in patients with biliary tract infection
publisher Wolters Kluwer Medknow Publications
series The Saudi Journal of Gastroenterology
issn 1319-3767
1998-4049
publishDate 2020-01-01
description Background/Aims: The aim of this study was to develop a tool to predict multidrug-resistant bacteria infections among patients with biliary tract infection for targeted therapy. Patients and Methods: We conducted a single-center retrospective descriptive study from January 2016 to December 2018. Univariate and multivariable logistic regression analysis were used to identify independent risk factors of multidrug-resistant bacterial infections. A nomogram was constructed according to multivariable regression model. Moreover, the clinical usefulness of the nomogram was estimated by decision curve analysis. Results: 121 inpatients were randomly divided into a training cohort (n = 79) and validation cohort (n = 42). In multivariate analysis, 5 factors were associated with biliary tract infections caused by multidrug-resistant bacterial infections: aspartate aminotransferase (Odds ratio (OR), 13.771; 95% confidence interval (CI), 3.747-64.958; P <0.001), previous antibiotic use within 90 days (OR, 4.130; 95% CI, 1.192-16.471; P = 0.032), absolute neutrophil count (OR, 3.491; 95% CI, 1.066-12.851; P = 0.046), previous biliary surgery (OR, 3.303; 95% CI, 0.910-13.614; P = 0.079), and hemoglobin (OR, 0.146; 95% CI, 0.030-0.576; P = 0.009). The nomogram model was constructed based on these variables, and showed good calibration and discrimination in the training set [area under the curve (AUC), 0.86] and in the validation set (AUC, 0.799). The decision curve analysis demonstrated the clinical usefulness of our nomogram. Using the nomogram score, high risk and low risk patients with multidrug-resistant bacterial infection could be differentiated. Conclusions: This simple bedside prediction tool to predict multidrug-resistant bacterial infection can help clinicians identify low versus high risk patients as well as choose appropriate, timely initial empirical antibiotics therapy. This model should be validated before it is widely applied in clinical settings. we can differentiate between
topic biliary tract infection
multidrug-resistant bacterial
nomogram
url http://www.saudijgastro.com/article.asp?issn=1319-3767;year=2020;volume=26;issue=6;spage=326;epage=336;aulast=Hu
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