Fernández Eduardo, Smieja Marek, Walter Stephen D, Loeb Mark
Department of Clinical Epidemiology and Biostatistics, McMaster University, Hamilton, Ontario, Canada.
Department of Pathology and Molecular Medicine, McMaster University, Hamilton, Ontario, Canada.
BMC Infect Dis. 2016 Nov 22;16(1):694. doi: 10.1186/s12879-016-2024-y.
Dengue is a major public health problem in tropical and subtropical countries and has a presentation similar to other febrile illnesses. Since laboratory confirmation is frequently delayed, the majority of dengue cases are diagnosed based on symptoms. The objective of this study was to identify clinical, hematological and demographical parameters that could be used as predictors of dengue fever among patients with febrile illness.
We conducted a retrospective cohort study of 548 patients presenting with febrile syndrome to the largest public hospitals in Honduras. Patients' clinical, laboratory, and demographic data as well as dengue laboratory detection by either serology or viral isolation were used to build a predictive statistical model to identify dengue cases.
Of 548 patients, 390 were confirmed with dengue infection while 158 had negative results. Univariable analysis revealed seven variables associated with dengue: male sex, petechiae, skin rash, myalgia, retro-ocular pain, positive tourniquet test, and gingival bleeding. In multivariable logistic regression analysis, retro-ocular pain petechiae and gingival bleeding were associated with increased risk, while epistaxis and paleness of skin were associated with reduced risk of dengue. Using a value of 0.6 (i.e., 60% probability for a case to be positive based on the equation values), our model had a sensitivity of 86.2%, a specificity of 27.2%, and an overall accuracy of 69.2%; allowing for the diagnosis of dengue to be ruled out and for other febrile conditions to be investigated.
Among Honduran patients presenting with febrile illness, our analysis identified key symptoms associated with dengue fever, however the overall accuracy of our model was still low and specificity remains a concern. Our model requires validation in other populations with a similar pattern of dengue transmission.
登革热是热带和亚热带国家的一个主要公共卫生问题,其临床表现与其他发热性疾病相似。由于实验室确诊常常延迟,大多数登革热病例是根据症状诊断的。本研究的目的是确定可作为发热性疾病患者登革热预测指标的临床、血液学和人口统计学参数。
我们对洪都拉斯最大的公立医院中548例出现发热综合征的患者进行了一项回顾性队列研究。患者的临床、实验室和人口统计学数据以及通过血清学或病毒分离进行的登革热实验室检测被用于建立一个预测统计模型以识别登革热病例。
在548例患者中,390例确诊为登革热感染,而158例结果为阴性。单变量分析显示与登革热相关的七个变量:男性、瘀点、皮疹、肌痛、眼球后疼痛、束臂试验阳性和牙龈出血。在多变量逻辑回归分析中,眼球后疼痛、瘀点和牙龈出血与风险增加相关,而鼻出血和皮肤苍白与登革热风险降低相关。使用0.6的值(即根据方程值病例为阳性的概率为60%),我们的模型灵敏度为86.2%,特异度为27.2%,总体准确率为69.2%;可排除登革热诊断并对其他发热情况进行调查。
在洪都拉斯出现发热性疾病的患者中,我们的分析确定了与登革热发热相关的关键症状,然而我们模型的总体准确率仍然较低,特异度仍然是一个问题。我们的模型需要在其他具有相似登革热传播模式的人群中进行验证。