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首页> 外文期刊>BMC Pediatrics >Predicting the severity of dengue fever in children on admission based on clinical features and laboratory indicators: application of classification tree analysis
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Predicting the severity of dengue fever in children on admission based on clinical features and laboratory indicators: application of classification tree analysis

机译:根据临床特征和实验室指标预测入院儿童登革热的严重程度:分类树分析的应用

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摘要

Dengue fever is a re-emerging viral disease commonly occurring in tropical and subtropical areas. The clinical features and abnormal laboratory test results of dengue infection are similar to those of other febrile illnesses; hence, its accurate and timely diagnosis for providing appropriate treatment is difficult. Delayed diagnosis may be associated with inappropriate treatment and higher risk of death. Early and correct diagnosis can help improve case management and optimise the use of resources such as hospital staff, beds, and intensive care equipment. The goal of this study was to develop a predictive model to characterise dengue severity based on early clinical and laboratory indicators using data mining and statistical tools. We retrieved data from a study of febrile illness in children at Angkor Hospital for Children, Cambodia. Of 1225 febrile episodes recorded, 198 patients were confirmed to have dengue. A classification and regression tree (CART) was used to construct a predictive decision tree for severe dengue, while logistic regression analysis was used to independently quantify the significance of each parameter in the decision tree. A decision tree algorithm using haematocrit, Glasgow Coma Score, urine protein, creatinine, and platelet count predicted severe dengue with a sensitivity, specificity, and accuracy of 60.5%, 65% and 64.1%, respectively. The decision tree we describe, using five simple clinical and laboratory indicators, can be used to predict severe cases of dengue among paediatric patients on admission. This algorithm is potentially useful for guiding a patient-monitoring plan and outpatient management of fever in resource-poor settings.
机译:登革热是一种重新出现的病毒性疾病,通常发生在热带和亚热带地区。登革热感染的临床特征和实验室检查异常结果与其他高热疾病相似。因此,难以准确及时地诊断以提供适当的治疗。延迟诊断可能与不适当的治疗和更高的死亡风险有关。早期和正确的诊断可以帮助改善病例管理并优化资源的使用,例如医院工作人员,病床和重症监护设备。这项研究的目的是使用数据挖掘和统计工具,基于早期的临床和实验室指标,开发一种表征登革热严重程度的预测模型。我们从柬埔寨吴哥儿童医院的儿童发热性疾病研究中检索到数据。在记录的1225例高热发作中,有198例确诊患有登革热。分类和回归树(CART)用于构建严重登革热的预测决策树,而逻辑回归分析用于独立量化决策树中每个参数的重要性。使用血细胞比容,格拉斯哥昏迷评分,尿蛋白,肌酐和血小板计数的决策树算法可预测严重登革热,其敏感性,特异性和准确性分别为60.5%,65%和64.1%。我们使用五个简单的临床和实验室指标描述的决策树可用于预测入院时小儿患者中登革热的严重病例。该算法对于指导资源贫乏地区的患者监护计划和发烧门诊管理可能很有用。

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