Zhang Shiying, Shan Na, Qin Junfang, Li Ying, Liu Chang, Yang Yuejie
Department of Infectious Diseases, Tianjin Second People's Hospital, Tianjin, China.
School of Medicine, Nankai University, Tianjin, China.
BMC Infect Dis. 2025 Jul 29;25(1):959. doi: 10.1186/s12879-025-11366-8.
Despite widespread vaccination, pertussis remains a significant health concern, especially for infants and young children. Severe pertussis can lead to severe complications, but the specific risk factors, particularly immunological markers, are not fully understood.
This retrospective case analysis was conducted from January to December 2023 at the Department of Infection, Tianjin Second People's Hospital. Data were collected from 249 children with pertussis (209 common and 40 severe cases) who met the inclusion criteria. Clinical and immunological parameters were compared between severe and common pertussis groups. Lasso regression and multivariate logistic regression were used to identify independent risk factors, and a nomogram prediction model was constructed and validated.
Key findings included demographic and clinical differences between severe and common pertussis, such as higher rates of pneumonia, longer hospital stays, and delayed vaccination in the severe group. Immunological differences showed that children with severe pertussis had altered levels of humoral and cellular immune markers. Risk factors for severe pertussis included premature birth, incomplete vaccination, high white blood cell count, and altered lymphocyte profiles. The nomogram prediction model showed excellent performance with a C-index of 0.899 and strong discriminatory ability (AUC = 0.899). Decision curve analysis demonstrated substantial clinical utility.
This study highlights the clinical and immunological markers that contribute to severe pertussis in children. The nomogram prediction model developed provides a reliable tool for early identification of high-risk children, improving clinical decision-making and potential outcomes for pertussis management.
尽管疫苗接种广泛普及,但百日咳仍然是一个重大的健康问题,尤其是对婴幼儿而言。严重的百日咳可导致严重并发症,但具体的危险因素,特别是免疫标志物,尚未完全明确。
本回顾性病例分析于2023年1月至12月在天津市第二人民医院感染科进行。收集了249例符合纳入标准的百日咳患儿(209例普通病例和40例重症病例)的数据。比较了重症百日咳组和普通百日咳组的临床和免疫参数。采用套索回归和多因素logistic回归确定独立危险因素,并构建和验证列线图预测模型。
主要发现包括重症百日咳组和普通百日咳组在人口统计学和临床方面的差异,如重症组肺炎发生率更高、住院时间更长以及疫苗接种延迟。免疫差异表明,重症百日咳患儿的体液和细胞免疫标志物水平发生了改变。重症百日咳的危险因素包括早产、疫苗接种不完全、白细胞计数高以及淋巴细胞谱改变。列线图预测模型表现出色,C指数为0.899,具有很强的鉴别能力(AUC = 0.899)。决策曲线分析显示了显著的临床实用性。
本研究突出了导致儿童重症百日咳的临床和免疫标志物。所开发的列线图预测模型为早期识别高危儿童提供了可靠工具,改善了百日咳管理的临床决策和潜在结局。