[Clinical characteristics and risk factors analysis of dengue fever incidence in Xishuangbanna, Yunnan Province in 2023].

Q3 Medicine
Lei Cai, Shize Duan, Wangbin Xu, Dongmei Dai, Fang Yang, Man Yang, Yanhui Li, Pinghua Liu
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According to the diagnostic criteria of the World Health Organization (WHO), patients were divided into dengue fever group, dengue fever with warning signs group, and severe dengue fever group. The differences in clinical data between different groups of patients were analyzed and compared. Binary multiple factor Logistic regression analysis was used to explore the risk factors affecting the severity of dengue fever in patients. Receiver operator characteristic curve (ROC curve) was drawn to analyze the predictive value of prediction models constructed for various risk factors for severe dengue fever. Subgroup analysis was performed on the prognosis of severe dengue fever patients, and the differences in clinical data between two groups of patients with different prognoses were compared. Binary multivariate Logistic regression analysis was used to explore the risk factors affecting the prognosis of severe dengue fever patients. 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The levels of cTnT and myoglobin in patients with dengue fever with warning signs group were significantly higher than those in the dengue fever group, and the level of Alb in patients with dengue fever with warning signs group was significantly lower than that in the dengue fever group, the differences were statistically significant (all P < 0.05). Binary multivariate Logistic regression analysis showed that thalassemia [odds ratio (OR) = 6.214, 95% confidence interval (95%CI) was 2.337-16.524, P < 0.001], Alb ≤ 36 g/L (OR = 6.297, 95%CI was 4.270-9.286, P < 0.001), and cTnT levels (OR = 1.008, 95%CI was 1.002-1.015, P = 0.016) were risk factors for severe dengue fever. ROC curve analysis showed that the area under the ROC curve (AUC) for predicting severe dengue fever based on the prediction models constructed for the above risk factors was 0.856, with the best predictive value of 0.067, sensitivity of 67.1%, and specificity of 99.4%. 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引用次数: 0

Abstract

Objective: To analyze the clinical characteristics of dengue fever patients, summarize the course and characteristics of the disease, and analyze the risk factors that affect the condition.

Methods: Retrospective collection of general information, clinical symptoms, medical history, laboratory tests, prognosis and other clinical data of dengue fever patients that admitted to Jinghong First People's Hospital and severe dengue fever patients at People's Hospital of Xishuangbanna Dai Autonomous Prefecture from June to December 2023 was conducted using a case report form (CRF). According to the diagnostic criteria of the World Health Organization (WHO), patients were divided into dengue fever group, dengue fever with warning signs group, and severe dengue fever group. The differences in clinical data between different groups of patients were analyzed and compared. Binary multiple factor Logistic regression analysis was used to explore the risk factors affecting the severity of dengue fever in patients. Receiver operator characteristic curve (ROC curve) was drawn to analyze the predictive value of prediction models constructed for various risk factors for severe dengue fever. Subgroup analysis was performed on the prognosis of severe dengue fever patients, and the differences in clinical data between two groups of patients with different prognoses were compared. Binary multivariate Logistic regression analysis was used to explore the risk factors affecting the prognosis of severe dengue fever patients. ROC curve was drawn to analyze the predictive value of prediction models constructed for various risk factors on the prognosis of severe dengue fever patients.

Results: A total of 2 264 patients were included, including 499 cases in the dengue fever group, 1 379 cases in the dengue fever with warning signs group, and 386 in the severe dengue fever group (43 deaths and 343 survivors). The most common symptom of dengue fever patients was fever (94.70%), followed by muscle soreness (70.54%), headache (63.12%), fatigue (58.92%), and chills (46.02%). Compared with the dengue fever group and the dengue fever with warning signs group, the ratio of thalassemia and the levels of cardiac troponin (cTnI, cTnT), MB isoenzyme of creatine kinase (CK-MB), and myoglobin were significantly increased in patients with severe dengue fever group, albumin (Alb) was significantly decreased in patients with severe dengue fever group. The levels of cTnT and myoglobin in patients with dengue fever with warning signs group were significantly higher than those in the dengue fever group, and the level of Alb in patients with dengue fever with warning signs group was significantly lower than that in the dengue fever group, the differences were statistically significant (all P < 0.05). Binary multivariate Logistic regression analysis showed that thalassemia [odds ratio (OR) = 6.214, 95% confidence interval (95%CI) was 2.337-16.524, P < 0.001], Alb ≤ 36 g/L (OR = 6.297, 95%CI was 4.270-9.286, P < 0.001), and cTnT levels (OR = 1.008, 95%CI was 1.002-1.015, P = 0.016) were risk factors for severe dengue fever. ROC curve analysis showed that the area under the ROC curve (AUC) for predicting severe dengue fever based on the prediction models constructed for the above risk factors was 0.856, with the best predictive value of 0.067, sensitivity of 67.1%, and specificity of 99.4%. In the subgroup analysis of patients with severe dengue fever, compared with the survival group, the levels of hematocrit (HCT), cTnT, and CK-MB in the death group patients were significantly increased, while the level of Alb was significantly decreased, and the differences were statistically significant. Binary multivariate Logistic regression analysis showed that Alb (OR = 0.839, 95%CI was 0.755-0.932, P = 0.001), HCT (OR = 1.086, 95%CI was 1.010-1.168, P = 0.025), elevated troponin level (OR = 10.119, 95%CI was 2.596-39.440, P < 0.001), and CK-MB (OR = 1.081, 95%CI was 1.032-1.133, P < 0.001) were risk factors for mortality in patients with severe dengue fever. ROC curve analysis showed that the AUC for predicting death in severe dengue fever patients based on the prediction models constructed for the above risk factors was 0.881, with the best predictive value of 0.113, sensitivity of 75.0%, and specificity of 88.9%.

Conclusions: Thalassemia, Alb ≤ 36 g/L, and cTnT level are risk factors for severe dengue fever, while HCT level, Alb level, CK-MB level, and elevated troponin level are risk factors for death in patients with severe dengue fever.

[2023 年云南省西双版纳登革热发病的临床特征和危险因素分析]。
摘要分析登革热患者的临床特征,总结登革热的病程和特点,分析影响病情的危险因素:采用病例报告表(CRF)回顾性收集2023年6月至12月景洪市第一人民医院收治的登革热患者和西双版纳傣族自治州人民医院重症登革热患者的一般资料、临床症状、病史、实验室检查、预后等临床资料。根据世界卫生组织(WHO)的诊断标准,将患者分为登革热组、有先兆登革热组和重症登革热组。分析并比较不同组别患者临床数据的差异。采用二元多因素 Logistic 回归分析探讨影响登革热患者严重程度的风险因素。绘制了接收者操作特征曲线(ROC 曲线),以分析针对严重登革热各种风险因素构建的预测模型的预测价值。对重症登革热患者的预后进行分组分析,比较两组不同预后患者的临床数据差异。采用二元多变量 Logistic 回归分析探讨影响重症登革热患者预后的风险因素。绘制ROC曲线,分析针对各种风险因素构建的预测模型对重症登革热患者预后的预测价值:共纳入 2 264 例患者,其中登革热组 499 例,登革热伴警示症状组 1 379 例,重症登革热组 386 例(43 例死亡,343 例存活)。登革热患者最常见的症状是发热(94.70%),其次是肌肉酸痛(70.54%)、头痛(63.12%)、疲乏(58.92%)和发冷(46.02%)。与登革热组和登革热伴预警征兆组相比,重症登革热组患者的地中海贫血比例、心肌肌钙蛋白(cTnI、cTnT)、肌酸激酶同工酶(CK-MB)和肌红蛋白水平明显升高,重症登革热组患者的白蛋白(Alb)明显降低。登革热预警征兆组患者的 cTnT 和肌红蛋白水平明显高于登革热组,登革热预警征兆组患者的 Alb 水平明显低于登革热组,差异均有统计学意义(均 P < 0.05)。二元多变量逻辑回归分析显示,地中海贫血[几率比(OR)=6.214,95%置信区间(95%CI)为2.337-16.524,P<0.001]、Alb≤36 g/L(OR=6.297,95%CI为4.270-9.286,P<0.001)和cTnT水平(OR=1.008,95%CI为1.002-1.015,P=0.016)是严重登革热的危险因素。ROC曲线分析显示,根据上述风险因素构建的预测模型预测重症登革热的ROC曲线下面积(AUC)为0.856,最佳预测值为0.067,灵敏度为67.1%,特异性为99.4%。在重症登革热患者亚组分析中,与生存组相比,死亡组患者的血细胞比容(HCT)、cTnT、CK-MB水平显著升高,而Alb水平显著降低,差异有统计学意义。二元多变量 Logistic 回归分析显示,Alb(OR = 0.839,95%CI 为 0.755-0.932,P = 0.001)、HCT(OR = 1.086,95%CI 为 1.010-1.168,P = 0.025)、肌钙蛋白水平升高(OR = 10.119,95%CI 为 2.596-39.440,P <0.001)和 CK-MB(OR = 1.081,95%CI 为 1.032-1.133,P <0.001)是重症登革热患者死亡的危险因素。ROC曲线分析显示,根据上述风险因素构建的预测模型预测重症登革热患者死亡的AUC为0.881,最佳预测值为0.113,敏感性为75.0%,特异性为88.9%:地中海贫血、白蛋白≤36 g/L和cTnT水平是重症登革热的危险因素,而HCT水平、白蛋白水平、CK-MB水平和肌钙蛋白水平升高是重症登革热患者死亡的危险因素。
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来源期刊
Zhonghua wei zhong bing ji jiu yi xue
Zhonghua wei zhong bing ji jiu yi xue Medicine-Critical Care and Intensive Care Medicine
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