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Community-acquired pneumonia: development of a bedside predictive model and scoring system to identify the aetiology.

机译:社区获得性肺炎:开发床边预测模型和评分系统以识别病因。

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Although initial presentation has been commonly used to select empirical therapy in patients with community-acquired pneumonia (CAP), few studies have provided a quantitative estimation of its value. The objective of this study was to analyse whether a combination of basic clinical and laboratory information performed at bedside can accurately predict the aetiology of pneumonia. A prospective study was developed among patients admitted to the Emergency Department University Hospital Arnau de Vilanova, Lleida, Spain, with CAP. Informed consent was obtained from patients in the study. At entry, basic clinical (age, comorbidity, symptoms and physical findings) and laboratory (white blood cell count) information commonly used by clinicians in the management of respiratory infections, was recorded. According to microbiological results, patients were assigned to the following categories: bacterial (Streptococcus pneumoniae and other pyogenic bacteria), virus-like (Mycoplasma pneumoniae, Chlamydia spp and virus) and unknown pneumonia. A scoring system to identify the aetiology was derived from the odds ratio (OR) assigned to independent variables, adjusted by a logistic regression model. The accuracy of the prediction rule was tested by using receiver operating characteristic curves. One hundred and three consecutive patients were classified as having virus-like (48), bacterial (37) and unknown (18) pneumonia, respectively. Independent predictors related to bacterial pneumonia were an acute onset of symptoms (OR 31; 95% CI, 6-150), age greater than 65 or comorbidity (OR 6.9; 95% CI, 2-23), and leukocytosis or leukopenia (OR 2; 95% CI, 0.6-7). The sensitivity and specificity of the scoring system to identify patients with bacterial pneumonia were 89% and 94%, respectively. The prediction rule developed from these three variables classified the aetiology of pneumonia with a ROC curve area of 0.84. Proper use of basic clinical and laboratory information is useful to identify the aetiology of CAP. The prediction rule may help clinicians to choose initial antibiotic therapy.
机译:尽管最初的表现通常被用于社区获得性肺炎(CAP)患者的经验治疗选择,但很少有研究对其价值进行定量评估。这项研究的目的是分析在床旁进行的基本临床和实验室信息的组合是否可以准确预测肺炎的病因。在接受CAP治疗的西班牙莱里达阿诺·德·维拉诺瓦大学急诊科医院住院患者中进行了一项前瞻性研究。从研究中的患者获得知情同意。入院时,记录了临床医生在管理呼吸道感染中常用的基本临床(年龄,合并症,症状和体格检查)和实验室(白细胞计数)信息。根据微生物学结果,将患者分为以下几类:细菌(肺炎链球菌和其他化脓性细菌),类病毒(肺炎支原体,衣原体和病毒)和未知肺炎。识别病因的评分系统由分配给自变量的优势比(OR)得出,并通过逻辑回归模型进行了调整。通过使用接收器工作特性曲线测试了预测规则的准确性。连续一百零三例患者分别被分类为病毒样(48),细菌性(37)和未知(18)肺炎。与细菌性肺炎有关的独立预测因子为急性发作症状(OR 31; 95%CI,6-150),年龄大于65岁或合并症(OR 6.9; 95%CI,2-23)和白细胞增多或白细胞减少症(OR 2; 95%CI,0.6-7)。鉴定细菌性肺炎患者的评分系统的敏感性和特异性分别为89%和94%。由这三个变量得出的预测规则将ROC曲线面积为0.84的肺炎的病因分类。正确使用基本的临床和实验室信息有助于识别CAP的病因。预测规则可以帮助临床医生选择初始抗生素治疗。

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