Department of Epidemiology, School of Public Health, Bahir Dar University, Bahir Dar, Ethiopia.
Licha Health Center, East Estie, South Gondar Zone, Amhara Region, Ethiopia.
PLoS One. 2023 Feb 15;18(2):e0281209. doi: 10.1371/journal.pone.0281209. eCollection 2023.
Globally there are over 1,400 cases of pneumonia per 100,000 children every year, where children in South Asia and Sub-Saharan Africa are disproportionately affected. Some of the cases develop poor treatment outcome (treatment failure or antibiotic change or staying longer in the hospital or death), while others develop good outcome during interventions. Although clinical decision-making is a key aspect of the interventions, there are limited tools such as risk scores to assist the clinical judgment in low-income settings. This study aimed to validate a prediction model and develop risk scores for poor outcomes of severe community-acquired pneumonia (SCAP).
A cohort study was conducted among 539 under-five children hospitalized with SCAP. Data analysis was done using R version 4.0.5 software. A multivariable analysis was done. We developed a simplified risk score to facilitate clinical utility. Model performance was evaluated using the area under the receiver operating characteristic curve (AUC) and calibration plot. Bootstrapping was used to validate all accuracy measures. A decision curve analysis was used to evaluate the clinical and public health utility of our model.
The incidence of poor outcomes of pneumonia was 151(28%) (95%CI: 24.2%-31.8%). Vaccination status, fever, pallor, unable to breastfeed, impaired consciousness, CBC abnormal, entered ICU, and vomiting remained in the reduced model. The AUC of the original model was 0.927, 95% (CI (0.90, 0.96), whereas the risk score model produced prediction accuracy of an AUC of 0.89 (95%CI: 0.853-0.922. Our decision curve analysis for the model provides a higher net benefit across ranges of threshold probabilities.
Our model has excellent discrimination and calibration performance. Similarly, the risk score model has excellent discrimination and calibration ability with an insignificant loss of accuracy from the original. The models can have the potential to improve care and treatment outcomes in the clinical settings.
全球每年每 10 万名儿童中有超过 1400 例肺炎病例,南亚和撒哈拉以南非洲的儿童受影响不成比例。其中一些病例治疗效果不佳(治疗失败或抗生素更换或住院时间延长或死亡),而另一些病例在干预过程中则取得良好的结果。尽管临床决策是干预措施的一个关键方面,但在低收入环境中,用于辅助临床判断的工具(如风险评分)有限。本研究旨在验证一种预测模型,并为严重社区获得性肺炎(SCAP)的不良结局开发风险评分。
对 539 名因 SCAP 住院的五岁以下儿童进行了队列研究。使用 R 版本 4.0.5 软件进行数据分析。进行了多变量分析。我们开发了一个简化的风险评分,以方便临床使用。使用接受者操作特征曲线(ROC)下面积(AUC)和校准图评估模型性能。使用 bootstrap 验证所有准确性测量。使用决策曲线分析评估我们模型的临床和公共卫生实用性。
肺炎不良结局的发生率为 151 例(28%)(95%CI:24.2%-31.8%)。疫苗接种状况、发热、苍白、无法母乳喂养、意识障碍、CBC 异常、进入 ICU 和呕吐仍保留在简化模型中。原始模型的 AUC 为 0.927,95%CI(0.90,0.96),而风险评分模型产生的预测准确性 AUC 为 0.89(95%CI:0.853-0.922)。我们的模型决策曲线分析提供了在阈值概率范围内更高的净收益。
我们的模型具有出色的区分度和校准性能。同样,风险评分模型具有出色的区分度和校准能力,并且从原始模型中没有显著的准确性损失。这些模型有可能改善临床环境中的护理和治疗结果。