Neglected brucellosis in pediatric populations from non-endemic regions: Clinical manifestations and prediction of severe disease in Yunnan Province, China
Xin Ma,
Penghao Cui,
Houyu Chen,
Yan Guo,
Yi Huang,
Xiaotao Yang,
Ying Zhu,
Houxi Bai,
Feng Jiao,
Haifeng Jin,
Ruonan Li,
Qingping Tang,
Yanchun Wang and
Yonghan Luo
PLOS Neglected Tropical Diseases, 2025, vol. 19, issue 10, 1-15
Abstract:
Background: Although Yunnan Province is not an endemic region for brucellosis, the disease remains a diagnostic and therapeutic challenge in children due to its atypical clinical manifestations and potential for severe complications. Objective: This study aims to explore the clinical features of pediatric brucellosis in the region and establish a prediction model for severe complications. Methods: This study included 62 children diagnosed with brucellosis at the Kunming Children’s Hospital between 2015 and 2024. The patients were divided into two groups based on the presence of severe complications: the severe complications group (n = 15) and the general group (n = 47). Clinical features were extracted from electronic medical records, and the Boruta algorithm was used to select core predictive factors. Six machine learning models, including Random Forest and XGBoost, were constructed. The performance of the models was assessed using receiver operating characteristic curve (ROC) curves and decision curve analysis (DCA), and a web-based prediction tool was developed. Results: The study revealed that the most common clinical symptoms were fever (95.2%), joint pain (51.6%). Meningoencephalitis was observed in 13 cases (21%), and sacroiliitis was present in 2 cases (3%). Laboratory findings indicated that the erythrocyte sedimentation rate (ESR) and IgM levels were significantly higher in the severe complications group compared to the general group. Culture results showed that the positive rate of bone marrow cultures was 95% (19/20), blood cultures had a positive rate of 84% (52/62), synovial fluid cultures had a positive rate of 67% (2/3), and cerebrospinal fluid cultures had a low positive rate of 2% (1/43). Machine learning models demonstrated that the Random Forest model performed best in predicting severe complications (AUC = 0.970), and DCA indicated that it had the best clinical utility. Key predictive factors were disease duration, fever duration, IgM, and ESR. A Shiny-based web tool was developed for real-time clinical risk assessment. Conclusion: This study indicated that pediatric brucellosis should not be neglected in non-endemic areas like Yunnan Province, China. Combining inflammatory markers with Random Forest models can effectively predict the risk of severe complications in pediatric brucellosis. Author summary: Brucellosis is a neglected zoonotic disease that is frequently overlooked in non-endemic regions. We conducted a 10-year retrospective analysis of 62 pediatric cases of brucellosis in Yunnan Province, China, to investigate the clinical characteristics and risk factors for severe complications. The results revealed that fever and joint pain were the most common symptoms, while meningoencephalitis represented the predominant severe complication. Laboratory findings indicated significantly elevated erythrocyte sedimentation rate (ESR) and IgM levels in children with severe complications. Using the Boruta algorithm, we identified disease course, duration of fever, ESR, and IgM as key predictive factors. Among the six evaluated machine learning models, the random forest algorithm achieved the highest performance (AUC = 0.97) and was employed to develop a web-based calculator for real-time clinical risk assessment. Our findings underscore the need for heightened awareness of pediatric brucellosis in non-endemic regions and demonstrate that integrating inflammatory biomarkers with machine learning can effectively predict the risk of severe complications.
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pntd00:0013645
DOI: 10.1371/journal.pntd.0013645
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