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3至36个月大发热儿童菌血症的预测因素。

Predictors of bacteremia in febrile children 3 to 36 months of age.

作者信息

Isaacman D J, Shults J, Gross T K, Davis P H, Harper M

机构信息

Division of Pediatric Emergency Medicine, Department of Pediatrics, Eastern Virginia Medical School, Children's Hospital of The King's Daughters, Norfolk, Virginia 23507, USA.

出版信息

Pediatrics. 2000 Nov;106(5):977-82. doi: 10.1542/peds.106.5.977.

DOI:10.1542/peds.106.5.977
PMID:11061763
Abstract

PURPOSE

To develop an improved model for the prediction of bacteremia in young febrile children.

METHODS

A retrospective review was performed on patients 3 to 36 months of age seen in a children's hospital emergency department between December 1995 and September 1997 who had a complete blood count and blood culture ordered as part of their regular care. Exclusion criteria included current use of antibiotics or any immunodeficient state. Clinical and laboratory parameters reviewed included age, gender, race, weight, temperature, presence of focal bacterial infection, white blood cell count (WBC), polymorphonuclear cell count (PMN), band count, and absolute neutrophil count (ANC). Logistic regression analyses were used to identify factors associated with bacteremia, defined as growth of a pathogen in a blood culture. The model that was developed was then validated on a second dataset consisting of febrile patients 3 to 36 months of age collected from a second children's hospital (validation set).

RESULTS

There were 633 patients in the derivation set (46 bacteremic) and 9465 patients in the validation set (149 bacteremic). The mean age of patients in the derivation and validation sets were 15.8 months (95% confidence interval [CI]: 15.2-16.5) and 16.6 months (95% CI: 16.5-16.8), respectively; the mean temperatures were 39.1 degrees C (95% CI: 39. 0-39.2) and 39.8 degrees C (95% CI: 39.7-39.8); 56% were male in the derivation set and 55% male in the validation set. Predictors of bacteremia identified by logistic regression included ANC, WBC, PMN, temperature, and gender. Receiver operator characteristic (ROC) analysis showed similar performance of ANC and WBC as predictors of bacteremia. When placed into a multivariate logistic regression model, band count was not significantly associated with bacteremia. Information regarding focal infection was available for 572 patients in the derivation set. The percentage of patients diagnosed with bacteremia with a focal bacterial infection was not significantly different from the percentage who had bacteremia without a focal bacterial infection (16/200 vs 30/372). Based on this dataset, a logistic regression formula was developed that could be used to develop a unique risk value for each patient based on temperature, gender, and ANC. When the final model was applied to the validation set, the area under the ROC curve (AUC) constructed from these data indicated that the model retained good predictive value (AUC for the derivation vs validation data =.8348 vs 0.8221, respectively).

CONCLUSIONS

Use of the formulas derived here allows the clinician to estimate a child's risk for bacteremia based on temperature, ANC, and gender. This approach offers a useful alternative to predictions based on fever and WBC alone.bacteremia, detection, white blood cell.

摘要

目的

建立一个改进的模型,用于预测幼儿发热时的菌血症。

方法

对1995年12月至1997年9月在一家儿童医院急诊科就诊的3至36个月大的患者进行回顾性研究,这些患者在常规护理中进行了全血细胞计数和血培养。排除标准包括当前使用抗生素或任何免疫缺陷状态。回顾的临床和实验室参数包括年龄、性别、种族、体重、体温、局灶性细菌感染的存在、白细胞计数(WBC)、多形核细胞计数(PMN)、杆状核细胞计数和绝对中性粒细胞计数(ANC)。使用逻辑回归分析来确定与菌血症相关的因素,菌血症定义为血培养中病原菌生长。然后在第二个数据集上对开发的模型进行验证,该数据集由从另一家儿童医院收集的3至36个月大的发热患者组成(验证集)。

结果

推导集中有633例患者(46例菌血症),验证集中有9465例患者(149例菌血症)。推导集和验证集患者的平均年龄分别为15.8个月(95%置信区间[CI]:15.2 - 16.5)和16.6个月(95%CI:16.5 - 16.8);平均体温分别为39.1℃(95%CI:39.0 - 39.2)和39.8℃(95%CI:39.7 - 39.8);推导集中56%为男性,验证集中55%为男性。通过逻辑回归确定的菌血症预测因素包括ANC、WBC、PMN、体温和性别。受试者工作特征(ROC)分析显示,ANC和WBC作为菌血症预测指标的表现相似。当纳入多变量逻辑回归模型时,杆状核细胞计数与菌血症无显著相关性。推导集中有572例患者有局灶性感染信息。诊断为菌血症且有局灶性细菌感染的患者百分比与无局灶性细菌感染的菌血症患者百分比无显著差异(16/200对30/372)。基于该数据集,开发了一个逻辑回归公式,可根据体温、性别和ANC为每个患者计算一个独特的风险值。当将最终模型应用于验证集时,根据这些数据构建的ROC曲线下面积(AUC)表明该模型保留了良好的预测价值(推导数据与验证数据的AUC分别为0.8348对0.8221)。

结论

使用此处推导的公式可使临床医生根据体温、ANC和性别估计儿童患菌血症的风险。这种方法为仅基于发热和WBC的预测提供了一种有用的替代方法。菌血症、检测、白细胞。

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