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中国儿童甲状腺疾病淋巴细胞和免疫生物标志物分析中的机器学习

Machine learning in lymphocyte and immune biomarker analysis for childhood thyroid diseases in China.

作者信息

Yang Ruizhe, Li Wei, Niu Qing, Yang WenTao, Gu Wei, Wang Xu

机构信息

Department of Public Health, Children's Hospital of Nanjing Medical University, Nanjing, 210008, China.

Department of Science and Technology, Children's Hospital of Nanjing Medical University, Nanjing, 210008, China.

出版信息

BMC Pediatr. 2025 Mar 28;25(1):249. doi: 10.1186/s12887-024-05368-9.

Abstract

OBJECTIVE

This study aims to characterize and analyze the expression of representative biomarkers like lymphocytes and immune subsets in children with thyroid disorders. It also intends to develop and evaluate a machine learning model to predict if patients have thyroid disorders based on their clinical characteristics, ultimately providing insights to enhance the clinical guidelines for the pathogenesis of childhood thyroid disorders.

METHOD

This cross-sectional study conducted in China examined diagnosed cases to describe the characteristics and expression of lymphocyte and immune subsets as predicted by the model. The study included two groups of children: 139 who were hospitalized in the Department of Endocrinology and a control group consisting of 283 children who underwent routine health checks at the Department of Children Healthcare. Cases were classified into three groups based on diagnoses: Graves' disease (GD), Hashimoto's thyroiditis (HT), and hypothyroidism. By employing 11 readily obtainable serum biochemical indicators within three days of admission, the median concentrations and percentages of subset measurements were analyzed. Additionally, nine machine learning (ML) algorithms were utilized to construct prediction models. Various evaluation metrics, including the area under the receiver operating characteristic curve (AUC), were employed to compare predictive performance.

RESULTS

GD cases had increased levels of CD3-CD19 + and CD3 + CD4 + T lymphocytes, and a higher CD4+/CD8 + ratio. In both GD and HT, the levels of complement C3c, IgA, and IgG were higher than those in the control group. HT cases also had an increasing percentage of CD3-CD16 + 56 + T lymphocytes. Most immune markers increased in hypothyroidism, except for some T lymphocyte percentages and the CD4+/CD8 + ratio. To reduce age-related bias, propensity score matching was used, yielding consistent results. Among the nine machine learning models evaluated, logistic regression showed the best performance, being useful in clinical practice.

CONCLUSIONS

Specific lymphocytes with different biomarkers are positively correlated with autoimmune thyroid disease (AITD) in children. Complement proteins C3c and C4, along with IgG, IgA, IgM, and T/B cells, are significant in childhood thyroid diseases. Our best model can effectively distinguish these conditions, but to enhance accuracy, more detailed information such as clinical images might be needed.

摘要

目的

本研究旨在对甲状腺疾病患儿中淋巴细胞和免疫亚群等代表性生物标志物的表达进行表征和分析。它还打算开发并评估一种机器学习模型,以根据患者的临床特征预测其是否患有甲状腺疾病,最终为加强儿童甲状腺疾病发病机制的临床指南提供见解。

方法

这项在中国进行的横断面研究对确诊病例进行了检查,以描述模型预测的淋巴细胞和免疫亚群的特征及表达。该研究包括两组儿童:139名在内分泌科住院的儿童,以及由283名在儿童保健科进行常规健康检查的儿童组成的对照组。病例根据诊断分为三组:格雷夫斯病(GD)、桥本甲状腺炎(HT)和甲状腺功能减退症。在入院三天内采用11种易于获得的血清生化指标,分析亚群测量的中位数浓度和百分比。此外,利用九种机器学习(ML)算法构建预测模型。采用包括受试者操作特征曲线下面积(AUC)在内的各种评估指标来比较预测性能。

结果

GD病例中CD3 - CD19 +和CD3 + CD4 + T淋巴细胞水平升高,CD4 + /CD8 +比值更高。在GD和HT中,补体C3c、IgA和IgG水平均高于对照组。HT病例中CD3 - CD16 + 56 + T淋巴细胞百分比也增加。除了一些T淋巴细胞百分比和CD4 + /CD8 +比值外,大多数免疫标志物在甲状腺功能减退症中增加。为减少年龄相关偏差,采用倾向得分匹配,结果一致。在评估的九种机器学习模型中,逻辑回归表现最佳,在临床实践中有用。

结论

具有不同生物标志物的特定淋巴细胞与儿童自身免疫性甲状腺疾病(AITD)呈正相关。补体蛋白C3c和C4,以及IgG、IgA、IgM和T/B细胞在儿童甲状腺疾病中具有重要意义。我们的最佳模型可以有效区分这些情况,但为提高准确性,可能需要更详细的信息,如临床图像。

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