1School of Medicine, Oregon Health & Science University, Portland, Oregon.
2Division of Infectious Diseases, Department of Medicine, OHSU, Portland, Oregon.
Am J Trop Med Hyg. 2021 Jan;104(1):121-129. doi: 10.4269/ajtmh.20-0192.
Under-recognition of dengue infection may lead to increased morbidity and mortality, whereas early detection is shown to help improve patient outcomes. Recent incidence and outbreak reports of dengue virus in the United States and other temperate regions where dengue was not typically seen have raised concerns regarding appropriate diagnosis and management by healthcare providers unfamiliar with the disease. This study aimed to describe self-reported clinical symptoms of dengue fever in a non-endemic cohort and to establish a clinically useful predictive algorithm based on presenting features that can assist in the early evaluation of potential dengue infection. Volunteers who experienced febrile illness while traveling in dengue-endemic countries were recruited for this study. History of illness and blood samples were collected at enrollment. Participants were classified as dengue naive or dengue exposed based on neutralizing antibody titers. Statistical analysis was performed to compare characteristics between the two groups. A regression model including joint/muscle/bone pain, rash, dyspnea, and rhinorrhea predicts dengue infection with 78% sensitivity, 63% specificity, 80% positive predictive value, and 61% negative predictive value. A decision tree model including joint/muscle/bone pain, dyspnea, and rash yields 77% sensitivity and 67% specificity. Diagnosis of dengue fever is challenging because of the nonspecific nature of clinical presentation. A sensitive predicting model can be helpful to triage suspected dengue infection in the non-endemic setting, but specificity requires additional testing including laboratory evaluation.
登革热感染可能导致发病率和死亡率增加,而早期检测有助于改善患者预后。美国和其他原本不属于登革热流行地区的国家近期出现的登革热病毒感染病例和爆发报告,令不熟悉该疾病的医疗保健提供者对正确诊断和管理感到担忧。本研究旨在描述非流行地区登革热患者的自我报告临床症状,并建立基于临床表现的临床实用预测算法,以帮助早期评估潜在的登革热感染。本研究招募了在登革热流行国家旅行时出现发热症状的志愿者。在入组时收集了疾病史和血样。根据中和抗体滴度,将参与者分为登革热初发组和登革热暴露组。对两组间的特征进行了统计学分析。包括关节/肌肉/骨骼疼痛、皮疹、呼吸困难和流涕在内的回归模型预测登革热感染的敏感性为 78%,特异性为 63%,阳性预测值为 80%,阴性预测值为 61%。包括关节/肌肉/骨骼疼痛、呼吸困难和皮疹的决策树模型的敏感性为 77%,特异性为 67%。由于临床表现的非特异性,登革热的诊断具有挑战性。在非流行地区,敏感性预测模型有助于对疑似登革热感染进行分诊,但特异性需要进一步检查,包括实验室评估。