首页> 外文期刊>Journal of evaluation in clinical practice >Usefulness of a decision tree model for the analysis of adverse drug reactions: Evaluation of a risk prediction model of vancomycin‐associated nephrotoxicity constructed using a data mining procedure
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Usefulness of a decision tree model for the analysis of adverse drug reactions: Evaluation of a risk prediction model of vancomycin‐associated nephrotoxicity constructed using a data mining procedure

机译:用于分析不良药物反应的决策树模型的有用性:使用数据采矿过程构建的万古霉素相关肾毒性风险预测模型的评价

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Abstract Objectives Several publications concerning decision tree (DT) analysis in medical fields have recently demonstrated its usefulness for defining prognostic factors in various diseases. However, there are minimal reports on the predictors of adverse drug reactions. We attempted to use DT analysis to discover combinations of multiple risk factors that would increase the risk of nephrotoxicity associated with vancomycin (VCM). To demonstrate the usefulness of DT analysis, we compared its predictive performance with that of multiple logistic regression analysis. Method A single‐centre, retrospective study was conducted at Hokkaido University Hospital. A total of 592 patients, who received intravenous administrations of VCM between November 2011 and April 2016, were enrolled. Nephrotoxicity was defined as an increase in serum creatinine of ≥0.5?mg/dL or a ≥50% increase in serum creatinine from the baseline. Risk factors for VCM nephrotoxicity were extracted from previous reports. In the DT analysis, a chi‐squared automatic interaction detection algorithm was constructed. For evaluating the established algorithms, a 10‐fold cross validation method was adopted to calculate the misclassification risk of the model. Moreover, to compare the accuracy of the DT analysis, multiple logistic regression analysis was conducted. Results Eighty‐seven (14.7%) patients developed nephrotoxicity. A VCM trough concentration of ≥15.0?mg/L, concomitant medication (vasopressor drugs and furosemide), and a duration of therapy ≥14?days were extracted to build the DT model, in which the patients were divided into 6 subgroups based on variable rates of nephrotoxicity, ranging from 4.6 to 69.6%. The predictive accuracies of the DT and logistic regression models were similar (87.3%, respectively), indicating that they were accurate. Conclusion This study suggests the usefulness of DT models for the evaluation of adverse drug reactions.
机译:摘要目的几个关于医疗领域的决策树(DT)分析的出版物最近展示了其在各种疾病中定义预后因素的有用性。然而,有关不良药物反应的预测因子存在最小的报告。我们试图使用DT分析来发现多种风险因素的组合,这将增加与万古霉素(VCM)相关的肾毒性的风险。为了证明DT分析的有用性,我们将其预测性能与多重逻辑回归分析进行了比较。方法在北海道大学医院进行单一中心,回顾性研究。共有592名接受2011年11月至2016年4月至2016年4月至2016年4月间VCM的592名患者。肾毒性定义为血清肌酐的增加≥0.5Ω·mg / dl或血清肌酐从基线增加≥50%。 VCM肾腺毒性的危险因素从之前的报告中提取。在DT分析中,构建了奇平自动相互作用检测算法。为了评估已建立的算法,采用了10倍的交叉验证方法来计算模型的错误分类风险。此外,为了比较DT分析的准确性,进行了多元逻辑回归分析。结果80七(14.7%)患者发育肾毒性。 VCM槽浓度≥15.0?mg / L,伴随药物(血管加压糖药物和呋塞米),以及治疗持续时间≥14℃,以构建DT模型,其中患者基于变量分为6个亚组肾毒性的率,范围从4.6达69.6%。 DT和Logistic回归模型的预测准确性相似(分别为87.3%),表明它们是准确的。结论本研究表明,DT模型用于评估不良药物反应的有用性。

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