Machine learning-based prediction model for hypofibrinogenemia after tigecycline therapy.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jianping Zhu, Rui Zhao, Zhenwei Yu, Liucheng Li, Jiayue Wei, Yan Guan
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引用次数: 0

Abstract

Background: In clinical practice, the incidence of hypofibrinogenemia (HF) after tigecycline (TGC) treatment significantly exceeds the probability claimed by drug manufacturers.

Objective: We aimed to identify the risk factors for TGC-associated HF and develop prediction and survival models for TGC-associated HF and the timing of TGC-associated HF.

Methods: This single-center retrospective cohort study included 222 patients who were prescribed TGC. First, we used binary logistic regression to screen the independent factors influencing TGC-associated HF, which were used as predictors to train the extreme gradient boosting (XGBoost) model. Receiver operating characteristic curve (ROC), calibration curve, decision curve analysis (DCA), and clinical impact curve analysis (CICA) were used to evaluate the performance of the model in the verification cohort. Subsequently, we conducted survival analysis using the random survival forest (RSF) algorithm. A consistency index (C-index) was used to evaluate the accuracy of the RSF model in the verification cohort.

Results: Binary logistic regression identified nine independent factors influencing TGC-associated HF, and the XGBoost model was constructed using these nine predictors. The ROC and calibration curves showed that the model had good discrimination (areas under the ROC curves (AUC) = 0.792 [95% confidence interval (CI), 0.668-0.915]) and calibration ability. In addition, DCA and CICA demonstrated good clinical practicability of this model. Notably, the RSF model showed good accuracy (C-index = 0.746 [95%CI, 0.652-0.820]) in the verification cohort. Stratifying patients treated with TGC based on the RSF model revealed a statistically significant difference in the mean survival time between the low- and high-risk groups.

Conclusions: The XGBoost model effectively predicts the risk of TGC-associated HF, whereas the RSF model has advantages in risk stratification. These two models have significant clinical practical value, with the potential to reduce the risk of TGC therapy.

基于机器学习的替加环素治疗后低纤维蛋白原血症预测模型
背景:在临床实践中,替加环素(TGC)治疗后低纤维蛋白原血症(HF)的发生率大大超过了药品生产商声称的概率:我们旨在确定 TGC 相关高纤维蛋白血症的风险因素,并建立 TGC 相关高纤维蛋白血症的预测和生存模型,以及 TGC 相关高纤维蛋白血症的发生时间:这项单中心回顾性队列研究纳入了222名处方TGC的患者。首先,我们使用二元逻辑回归筛选出影响TGC相关性HF的独立因素,并将其作为预测因子来训练极端梯度提升(XGBoost)模型。在验证队列中,我们使用接收者操作特征曲线(ROC)、校准曲线、决策曲线分析(DCA)和临床影响曲线分析(CICA)来评估模型的性能。随后,我们使用随机生存森林(RSF)算法进行了生存分析。一致性指数(C-index)用于评估 RSF 模型在验证队列中的准确性:二元逻辑回归确定了影响 TGC 相关高频的九个独立因素,并利用这九个预测因子构建了 XGBoost 模型。ROC 和校准曲线显示,该模型具有良好的区分度(ROC 曲线下面积(AUC)= 0.792 [95% 置信区间(CI),0.668-0.915])和校准能力。此外,DCA 和 CICA 证明该模型具有良好的临床实用性。值得注意的是,RSF 模型在验证队列中显示出良好的准确性(C 指数 = 0.746 [95%CI, 0.652-0.820])。根据 RSF 模型对接受 TGC 治疗的患者进行分层后发现,低风险组和高风险组的平均生存时间在统计学上存在显著差异:结论:XGBoost 模型能有效预测 TGC 相关心房颤动的风险,而 RSF 模型在风险分层方面具有优势。这两种模型具有重要的临床实用价值,有望降低TGC治疗的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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