Department of Respiratory and Critical Care Medicine, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Department of Infectious Disease, Leishenshan Hospital, Wuhan, Hubei Province, China.
BMC Med. 2022 Oct 18;20(1):360. doi: 10.1186/s12916-022-02552-5.
Acute febrile respiratory illness (AFRI) patients are susceptible to pneumonia and suffer from significant morbidity and mortality throughout the world. In primary care settings, the situation is worse. Limited by computerized tomography resources and physician experiences, AFRI patients in primary care settings may not be diagnosed appropriately, which would affect following treatment. In this study, we aimed to develop and validate a simple prediction model to help physicians quickly identify AFRI patients of pneumonia risk in primary care settings.
A total of 1977 AFRI patients were enrolled at two fever clinics in Shanghai, China, and among them, 727 patients who underwent CT scans were included in the analysis. Acute alveolar or interstitial infiltrates found on CT images were diagnosed with pneumonia. Characteristics and blood parameters were compared between pneumonia and non-pneumonia patients. Then a multivariable model for pneumonia prediction was developed through logistic regression analysis. Its value for pneumonia prediction was prospectively assessed in an external multi-center population, which included 1299 AFRI patients in primary settings from 5 different provinces throughout China.
In the model development population, pneumonia patients (n = 227) had a longer duration of fever; higher frequencies of purulent sputum, dyspnea, and thoracic pain; and higher levels of respiration rates and C-reactive protein (CRP) than non-pneumonia patients (n = 500). Logistic regression analysis worked out a model composed of items on dyspnea, respiration rates > 20/min, and CRP > 20 mg/l (DRC) for pneumonia prediction with an area under curve (AUC) of 0.8506. In the external validation population, the predictive accuracy of the DRC model was the highest when choosing at least one positive item (1 score) as a cut-off point with a sensitivity of 87.0% and specificity of 80.5%. DRC scores increased with pneumonia severity and lung lobe involvement and showed good performance for both bacterial and viral pneumonia. For viral pneumonia, dyspnea plus respiration rates > 20/min had good predictive capacity regardless of CRP concentration.
DRC model is a simple tool that predicts pneumonia among AFRI patients, which would help physicians utilize medical resources rationally in primary care settings.
急性发热性呼吸道疾病(AFRI)患者易患肺炎,在全球范围内发病率和死亡率均较高。在基层医疗机构中,情况更为严重。由于受到计算机断层扫描资源和医生经验的限制,基层医疗机构的 AFRI 患者可能无法得到适当的诊断,这将影响后续的治疗。本研究旨在开发和验证一种简单的预测模型,帮助医生快速识别基层医疗机构中患有肺炎风险的 AFRI 患者。
共纳入中国上海两家发热门诊的 1977 例 AFRI 患者,其中 727 例接受 CT 扫描的患者纳入分析。CT 图像上发现的急性肺泡或间质性浸润被诊断为肺炎。比较肺炎和非肺炎患者的特征和血液参数。然后通过逻辑回归分析建立肺炎预测的多变量模型。该模型在一个外部多中心人群中的肺炎预测价值进行了前瞻性评估,该人群包括来自中国 5 个不同省份的基层医疗机构的 1299 例 AFRI 患者。
在模型建立人群中,肺炎患者(n=227)发热时间更长;脓性痰、呼吸困难和胸痛的频率更高;呼吸频率和 C 反应蛋白(CRP)水平更高。逻辑回归分析得出了一个由呼吸困难、呼吸频率>20/min 和 CRP>20mg/L(DRC)组成的模型,用于肺炎预测,曲线下面积(AUC)为 0.8506。在外部验证人群中,当选择至少一个阳性项目(1 分)作为截断点时,DRC 模型的预测准确性最高,敏感性为 87.0%,特异性为 80.5%。DRC 评分随肺炎严重程度和肺叶受累程度增加而增加,对细菌性和病毒性肺炎均有较好的预测效果。对于病毒性肺炎,无论 CRP 浓度如何,呼吸困难加呼吸频率>20/min 均具有良好的预测能力。
DRC 模型是一种简单的工具,可用于预测 AFRI 患者的肺炎,这将有助于医生在基层医疗机构中合理利用医疗资源。