Neves Denise Duprat, Dias Ricardo Marques, Cunha Antônio José Ledo A da
Federal University of the State of Rio de Janeiro, Rio de Janeiro, Brazil.
Braz J Infect Dis. 2007 Feb;11(1):83-8. doi: 10.1590/s1413-86702007000100019.
This study developed a predictive model to identify pleural tuberculosis. A consecutive cases study of patients investigating the cause of pleural effusion, in an area of high prevalence of tuberculosis (Rio de Janeiro, Brazil). Clinical and laboratory variables were compared among patients with tuberculosis (TB) and without tuberculosis (NTB), individually and using logistic regression. The performance was described as diagnostic accuracy, compared to a gold standard in a masked way. We have studied 104 TB patients, 41 with malignant, 29 transudates, 28 parapneumonic, 13 with miscellaneous diseases. After identification of individual discrimination power aided by clinical, radiological and laboratory variables, the following ones were included in a multivariate analysis: ADA, total leukocytes, percentile of lymphocytes, protein, lactate dehydrogenase, duration of disease, age and gender. A logistic regression model to predict pleural tuberculosis including the five first variables showed the best performance. A receiver operating characteristic curve identified the best cutoff at 0.7, resulting in a sensitivity and specificity of more then 95%. The predictive model improved the specificity of ADA alone, keeping its sensitivity. This model seems helpful when a microbiological or histological diagnosis of pleural tuberculosis could not be established. External validation of these results is necessary before recommendation for routine application.
本研究开发了一种用于识别胸膜结核的预测模型。在结核病高流行地区(巴西里约热内卢)对连续的胸腔积液病因调查患者进行病例研究。对患有结核病(TB)和未患结核病(NTB)的患者的临床和实验室变量进行了单独比较,并使用逻辑回归分析。与金标准进行盲法比较,将该模型的性能描述为诊断准确性。我们研究了104例结核病患者,41例恶性疾病患者,29例漏出液患者,28例类肺炎性胸腔积液患者,13例患有其他疾病的患者。在通过临床、放射学和实验室变量确定个体鉴别能力后,将以下变量纳入多变量分析:腺苷脱氨酶(ADA)、总白细胞、淋巴细胞百分比、蛋白质、乳酸脱氢酶、病程、年龄和性别。包含前五个变量的预测胸膜结核的逻辑回归模型表现最佳。受试者工作特征曲线确定最佳截断值为0.7,敏感性和特异性均超过95%。该预测模型在保持敏感性的同时提高了单独使用ADA时的特异性。当无法建立胸膜结核的微生物学或组织学诊断时,该模型似乎很有帮助。在推荐常规应用之前,有必要对这些结果进行外部验证。