机器学习模型建立在ICU入院时成为多重耐药细菌携带者的风险。

IF 4.6 2区 医学 Q1 INFECTIOUS DISEASES
Sulamita Carvalho-Brugger, Mar Miralbés Torner, Gabriel Jiménez Jiménez, Montserrat Vallverdú Vidal, Begoña Balsera Garrido, Xavier Nuvials Casals, Mercedes Palomar Martínez, Javier Trujillano Cabello
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引用次数: 0

摘要

目的:利用机器学习方法,根据西班牙“零耐药性”(RZ)项目清单中的危险因素(rf),确定ICU入院时成为多药耐药菌(MDR)携带者的风险。方法:回顾性队列研究,选取2014 - 2016年ICU住院患者为连续样本。该研究分析了MDR的RZ RFs,以及其他病理变量和合并症。研究组随机分为发展组(70%)和验证组(30%)。使用了几种机器学习模型:二元逻辑回归、chaid型决策树和带有SHAP分析的XGBOOST方法(版本2.1.0)。结果:共分析2459例患者资料,其中210例(8.2%)为MDR携带者。风险随着射频的积累而增加。二元logistic回归发现,定植或既往MDR感染、既往抗生素治疗、住在养老院、近期住院和肾衰竭是最重要的影响因素。CHAID树在56%的既往定植或感染患者中检测到耐多药,如果他们也接受过抗生素治疗,这一数字将增加到近74%。XGBOOST模型确定与抗生素治疗相关的变量是最重要的。结论:RZ RFs在预测ICU入院时的MDR方面存在局限性,机器学习模型具有一定的优势。并非所有的RFs都具有同样的重要性,但是它们的累积会增加风险。有一组患者没有可识别的射频反射,这使关于预防性隔离的决定复杂化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning Models to Establish the Risk of Being a Carrier of Multidrug-Resistant Bacteria upon Admission to the ICU.

Machine Learning Models to Establish the Risk of Being a Carrier of Multidrug-Resistant Bacteria upon Admission to the ICU.

Machine Learning Models to Establish the Risk of Being a Carrier of Multidrug-Resistant Bacteria upon Admission to the ICU.

Machine Learning Models to Establish the Risk of Being a Carrier of Multidrug-Resistant Bacteria upon Admission to the ICU.

Objectives: To establish the risk of being a carrier of multidrug-resistant bacteria (MDR) upon ICU admission, according to the risk factors (RFs) from the Spanish "Resistencia Zero" (RZ) project checklist, using machine learning methodology. Methods: A retrospective cohort study, conducted with a consecutive sample of patients admitted to the ICU between 2014 and 2016. The study analyzed the RZ RFs for MDR, as well as other pathological variables and comorbidities. The study group was randomly divided into a development group (70%) and a validation group (30%). Several machine learning models were used: binary logistic regression, CHAID-type decision tree, and the XGBOOST methodology (version 2.1.0) with SHAP analysis. Results: Data from 2459 patients were analyzed, of whom 210 (8.2%) were carriers of MDR. The risk grew with the accumulation of RF. Binary logistic regression identified colonization or previous infection by MDR, prior antibiotic treatment, living in a nursing home, recent hospitalization, and renal failure as the most influential factors. The CHAID tree detected MDR in 56% of patients with previous colonization or infection, a figure that increased to almost 74% if they had also received antibiotic therapy. The XGBOOST model determined that variables related to antibiotic treatment were the most important. Conclusions: The RZ RFs have limitations in predicting MDR upon ICU admission, and machine learning models offer certain advantages. Not all RFs have the same importance, but their accumulation increases the risk. There is a group of patients with no identifiable RFs, which complicates decisions on preventive isolation.

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来源期刊
Antibiotics-Basel
Antibiotics-Basel Pharmacology, Toxicology and Pharmaceutics-General Pharmacology, Toxicology and Pharmaceutics
CiteScore
7.30
自引率
14.60%
发文量
1547
审稿时长
11 weeks
期刊介绍: Antibiotics (ISSN 2079-6382) is an open access, peer reviewed journal on all aspects of antibiotics. Antibiotics is a multi-disciplinary journal encompassing the general fields of biochemistry, chemistry, genetics, microbiology and pharmacology. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. Therefore, there is no restriction on the length of papers.
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