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Neither Single nor a Combination of Routine Laboratory Parameters can Discriminate between Gram-positive and Gram-negative Bacteremia

机译:常规实验室参数的单一或组合都不能区分革兰氏阳性菌和革兰氏阴性菌

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摘要

Adequate early empiric antibiotic therapy is pivotal for the outcome of patients with bloodstream infections. In clinical practice the use of surrogate laboratory parameters is frequently proposed to predict underlying bacterial pathogens; however there is no clear evidence for this assumption. In this study, we investigated the discriminatory capacity of predictive models consisting of routinely available laboratory parameters to predict the presence of Gram-positive or Gram-negative bacteremia. Major machine learning algorithms were screened for their capacity to maximize the area under the receiver operating characteristic curve (ROC-AUC) for discriminating between Gram-positive and Gram-negative cases. Data from 23,765 patients with clinically suspected bacteremia were screened and 1,180 bacteremic patients were included in the study. A relative predominance of Gram-negative bacteremia (54.0%), which was more pronounced in females (59.1%), was observed. The final model achieved 0.675 ROC-AUC resulting in 44.57% sensitivity and 79.75% specificity. Various parameters presented a significant difference between both genders. In gender-specific models, the discriminatory potency was slightly improved. The results of this study do not support the use of surrogate laboratory parameters for predicting classes of causative pathogens. In this patient cohort, gender-specific differences in various laboratory parameters were observed, indicating differences in the host response between genders.
机译:适当的早期经验性抗生素治疗对于血流感染患者的结局至关重要。在临床实践中,经常建议使用替代实验室参数来预测潜在的细菌病原体。但是,没有明确的证据可以证明这一假设。在这项研究中,我们调查了由常规可得的实验室参数组成的预测模型的判别能力,以预测革兰氏阳性或革兰氏阴性菌血症的存在。筛选了主要的机器学习算法,以最大化接收器工作特征曲线(ROC-AUC)下的区域,以区分革兰氏阳性和革兰氏阴性病例。筛选了23765名临床可疑菌血症患者的数据,并将1180名菌血症患者纳入研究。观察到革兰氏阴性菌血症的相对优势(54.0%),在女性中更为明显(59.1%)。最终模型达到0.675 ROC-AUC,从而产生了44.57%的灵敏度和79.75%的特异性。各种参数显示出性别之间的显着差异。在针对特定性别的模型中,歧视力有所改善。这项研究的结果不支持使用替代实验室参数来预测致病性病原体的类别。在该患者队列中,观察到各种实验室参数的性别差异,表明性别之间宿主反应的差异。

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