Zhang Yanzi, Zhang Lihong, Chen Mengmeng, Dong Qin, Hu Chong, Wang Juan, Meng Jiao, Lv Xin
Clinical Laboratory, Children's Hospital Affiliated to Shandong University, Jinan, China.
Clinical Laboratory, Jinan Children's Hospital, Jinan, China.
Front Oncol. 2025 Jul 25;15:1575863. doi: 10.3389/fonc.2025.1575863. eCollection 2025.
To explore the diagnostic value of integrating blood cell analysis and coagulation function indicators in the staging of neuroblastic tumors, providing a robust basis for clinical decision-making.
A retrospective analysis was conducted on 137 pediatric neuroblastic tumors cases (2017-2024) at the Children's Hospital Affiliated to Shandong University. Patients were stratified into localized (INSS 1-2, Group 1) and advanced (INSS 3-4, Group 2) stages according to the INSS classification, with mature ganglioneuroma serving as the control group. Univariate and multivariate logistic regression analyses were performed to identify differences in blood cell analysis and coagulation function indicators between groups, complemented by ROC curve analysis to evaluate the efficacy of the models.
The median age of patients with neuroblastic tumor was 23.5 (12-46.75) months (male:female = 1.55:1), which was significantly younger than that of ganglioneuroma patients [72 (53-108) months, < 0.01]. Multinomial logistic regression identified age, RDW-CV, Fib, and Hb as independent predictors of advanced stages. Older age, higher RDW-CV and Fib levels were positively associated with advanced-stage risk compare to localized stages, while higher Hb showed a negative association. Furthermore, a probability prediction model developed using age, TT, Mon#, and Hb successfully differentiated advanced neuroblastic tumors from ganglioneuroma. The overall accuracy of this prediction model was 78.10%, with specific accuracies of 68.40%, 82.40%, and 80.00% for the localized neuroblastic tumors, advanced neuroblastic tumors, and ganglioneuroma groups, respectively. ROC curves showed AUCs of 0.867 (localized vs. advanced) and 0.941 (advanced vs. ganglioneuroma), indicating high diagnostic efficacy.
The combined analysis of age, RDW-CV, Hb, Mon#, Fib, and TT can effectively assist in the preliminary assessment of whether children with neuroblastic tumors are in an advanced phase or suffering from ganglioneuroma. This method enhances the accuracy and efficiency of clinical diagnosis and serves as a crucial reference for developing disease diagnosis and treatment plans.
探讨血细胞分析与凝血功能指标整合在神经母细胞瘤分期中的诊断价值,为临床决策提供有力依据。
对山东大学附属儿童医院2017 - 2024年收治的137例小儿神经母细胞瘤病例进行回顾性分析。根据国际神经母细胞瘤分期系统(INSS)分类,将患者分为局限性(INSS 1 - 2期,第1组)和晚期(INSS 3 - 4期,第2组),以成熟型神经节神经瘤作为对照组。进行单因素和多因素逻辑回归分析,以确定各组间血细胞分析和凝血功能指标的差异,并通过ROC曲线分析评估模型的效能。
神经母细胞瘤患者的中位年龄为23.5(12 - 46.75)个月(男∶女 = 1.55∶1),显著低于神经节神经瘤患者[72(53 - 108)个月,P < 0.01]。多项逻辑回归分析确定年龄、红细胞分布宽度变异系数(RDW - CV)、纤维蛋白原(Fib)和血红蛋白(Hb)为晚期的独立预测因素。与局限性分期相比,年龄较大、RDW - CV和Fib水平较高与晚期风险呈正相关,而Hb水平较高则呈负相关。此外,利用年龄、凝血酶时间(TT)、单核细胞计数(Mon#)和Hb建立的概率预测模型成功区分了晚期神经母细胞瘤和神经节神经瘤。该预测模型的总体准确率为78.10%,局限性神经母细胞瘤组、晚期神经母细胞瘤组和神经节神经瘤组的特异准确率分别为68.40%、82.40%和80.00%。ROC曲线显示曲线下面积(AUC)分别为0.867(局限性与晚期)和0.941(晚期与神经节神经瘤),表明诊断效能较高。
年龄、RDW - CV、Hb、Mon#、Fib和TT的联合分析可有效辅助判断神经母细胞瘤患儿是否处于晚期或患有神经节神经瘤。该方法提高了临床诊断的准确性和效率,为制定疾病诊断和治疗方案提供了重要参考。