Shen Xuelan, Guo Xiaoli, Liu Yang, Pan Xiaorong, Li Haisu, Xiao Jianwen, Wu Liping
Department of Hematology and Oncology Children's Hospital of Chongqing Medical University, National Clinical Research Center for Child Health and Disorders, Ministry of Education Key Laboratory of Child Development and Disorders, Chongqing Key Laboratory of Child Rare Diseases in Infection and Immunity, Chongqing, People's Republic of China.
School of Nursing, Chongqing Medical University, Chongqing, People's Republic of China.
Eur J Pediatr. 2025 Apr 7;184(5):283. doi: 10.1007/s00431-025-06123-7.
This study aimed to develop and validate a risk prediction model for moderate to severe bleeding in children with immune thrombocytopenia (ITP). Data from 286 ITP patients were prospectively collected and randomly split into training (80%) and test (20%) sets. Least Absolute Shrinkage and Selection Operator (LASSO) regression was used for feature selection. Among seven machine learning algorithms, the eXtreme Gradient Boosting (XGBoost) model demonstrated the best performance (AUC = 0.886, 95% CI: 0.790-0.982) and was selected as the optimal model. Shapley Additive Explanations (SHAP) were used for model interpretation, identifying child age, age at diagnosis, and initial platelet count as key predictors of moderate to severe bleeding risk.
The XGBoost-based prediction model shows strong predictive performance and could assist healthcare providers in identifying high-risk ITP patients, supporting appropriate clinical decision-making.
ChiCTR2100054216, December 11, 2021 What is Known: • Current clinical practice relies solely on platelet counts to guide hospitalization and treatment in ITP children, often overlooking bleeding manifestations, leading to delayed or inappropriate treatment. Existing severe bleeding risk prediction models are primarily designed for adults and lack applicability to children.
• This study prospectively collected data, enhancing accuracy. A novel machine learning-based prediction model was developed to assess moderate to severe bleeding risk in pediatric ITP patients.
本研究旨在开发并验证一种针对免疫性血小板减少症(ITP)患儿中重度出血的风险预测模型。前瞻性收集了286例ITP患者的数据,并随机分为训练集(80%)和测试集(20%)。采用最小绝对收缩和选择算子(LASSO)回归进行特征选择。在七种机器学习算法中,极端梯度提升(XGBoost)模型表现最佳(AUC = 0.886,95%CI:0.790 - 0.982),并被选为最优模型。使用夏普利值附加解释(SHAP)对模型进行解释,确定儿童年龄、诊断时年龄和初始血小板计数为中重度出血风险的关键预测因素。
基于XGBoost的预测模型具有较强的预测性能,可协助医疗服务提供者识别高危ITP患者,支持适当的临床决策。
ChiCTR2100054216,2021年12月11日 已知信息:• 当前临床实践仅依靠血小板计数来指导ITP患儿的住院和治疗,常常忽视出血表现,导致治疗延迟或不当。现有的严重出血风险预测模型主要是为成人设计的,缺乏对儿童的适用性。
• 本研究前瞻性收集数据,提高了准确性。开发了一种基于机器学习的新型预测模型,以评估小儿ITP患者的中重度出血风险。