Department of Clinical Laboratory, Children's Hospital of Fudan University, National Children's Medical Center, Shanghai 201102, China.
Medicina (Kaunas). 2023 Oct 3;59(10):1765. doi: 10.3390/medicina59101765.
: This study aimed to investigate the diagnostic value of immunological biomarkers in children with asthmatic bronchitis and asthma and to develop a machine learning (ML) model for rapid differential diagnosis of these two diseases. : Immunological biomarkers in peripheral blood were detected using flow cytometry and immunoturbidimetry. The importance of characteristic variables was ranked and screened using random forest and extra trees algorithms. Models were constructed and tested using the Scikit-learn ML library. K-fold cross-validation and Brier scores were used to evaluate and screen models. : Children with asthmatic bronchitis and asthma exhibit distinct degrees of immune dysregulation characterized by divergent patterns of humoral and cellular immune responses. CD8 T cells and B cells were more dominant in differentiating the two diseases among many immunological biomarkers. Random forest showed a comprehensive high performance compared with other models in learning and training the dataset of immunological biomarkers. : This study developed a prediction model for early differential diagnosis of asthmatic bronchitis and asthma using immunological biomarkers. Evaluation of the immune status of patients may provide additional clinical information for those children transforming from asthmatic bronchitis to asthma under recurrent attacks.
本研究旨在探讨免疫生物标志物在小儿喘息性支气管炎和哮喘中的诊断价值,并建立一种机器学习(ML)模型,以快速对这两种疾病进行鉴别诊断。采用流式细胞术和免疫比浊法检测外周血免疫生物标志物。利用随机森林和 ExtraTrees 算法对特征变量的重要性进行排序和筛选。使用 Scikit-learn ML 库构建和测试模型。采用 K 折交叉验证和 Brier 评分对模型进行评估和筛选。喘息性支气管炎和哮喘患儿表现出不同程度的免疫失调,其特点是体液和细胞免疫反应模式不同。在众多免疫生物标志物中,CD8 T 细胞和 B 细胞在区分这两种疾病方面更为突出。随机森林在学习和训练免疫生物标志物数据集方面表现出全面的高性能,优于其他模型。本研究利用免疫生物标志物建立了一种早期鉴别诊断喘息性支气管炎和哮喘的预测模型。评估患者的免疫状态可能为反复发作喘息性支气管炎患儿向哮喘转化提供额外的临床信息。