Zhu Jie, Zhou Jianmei, Tao Chunhui, Xia Guomei, Liu Bingyan, Zheng Xiaowei, Li Xu, Zhang Zhenhua
Institute of Clinical Virology, Department of Infectious Diseases, The Second Affiliated Hospital of Anhui Medical University, Hefei, China.
Department of Infectious Diseases, The First Affiliated Hospital of University of Science and Technology of China, Hefei, China.
Ann Med. 2025 Dec;57(1):2451184. doi: 10.1080/07853890.2025.2451184. Epub 2025 Jan 13.
We aimed at identifying acute phase biomarkers in Severe Fever with Thrombocytopenia Syndrome (SFTS), and to establish a model to predict mortality outcomes.
A retrospective analysis was conducted on multicenter clinical data. Group-based trajectory modeling (GBTM) was utilized to demonstrate the overall trend of laboratory indicators and their correlation with mortality. Six different machine learning algorithms were employed to develop prognostic models based on the clinical features during the acute phase, which were reduced using Lasso regression.
Seven indicators (ALT, AST, BUN, LDH, a-HBDH, DD, and PLT) at 7-10 days post-onset and their change slopes were found to be crucial during disease progression. These, along with other clinical features, were reduced to 8 variables using Lasso regression for model construction. The random forest model demonstrated the best performance in both internal validation (AUC: 0.961) and external validation (AUC: 0.948). Decision Curve Analysis indicated a good balance between model benefits and risks.
a-HBDH and its change slope along with central nervous symptom manifestations within 7-10 days after onset accurately predicted mortality in SFTS. Various algorithms provided a comprehensive overview of disease progression and constructed more stable and efficient models.
我们旨在识别发热伴血小板减少综合征(SFTS)的急性期生物标志物,并建立一个预测死亡结局的模型。
对多中心临床数据进行回顾性分析。采用基于组的轨迹建模(GBTM)来展示实验室指标的总体趋势及其与死亡率的相关性。使用六种不同的机器学习算法,基于急性期的临床特征开发预后模型,并使用套索回归进行简化。
发病后7 - 10天的七个指标(谷丙转氨酶、谷草转氨酶、尿素氮、乳酸脱氢酶、α-羟丁酸脱氢酶、D-二聚体和血小板)及其变化斜率在疾病进展过程中至关重要。使用套索回归将这些指标与其他临床特征简化为8个变量用于模型构建。随机森林模型在内部验证(曲线下面积:0.961)和外部验证(曲线下面积:0.948)中均表现出最佳性能。决策曲线分析表明模型在获益与风险之间取得了良好平衡。
α-羟丁酸脱氢酶及其变化斜率以及发病后7 - 10天内的中枢神经症状表现可准确预测SFTS的死亡率。各种算法全面展示了疾病进展情况,并构建了更稳定、高效的模型。