医学
心房颤动
列线图
曲线下面积
拜瑞妥
队列
逻辑回归
内科学
接收机工作特性
华法林
作者
Jiana Chen,Meina Lv,Wenlin Xu,Feilong Zhang,Nianxu Huang,Xia Chen,Wang Zhang,Wei Hu,Jun Su,Hengfen Dai,Ping Gu,Xiaohong Huang,Xiaoming Du,Ruijuan Li,Qiaowei Zheng,Xiangsheng Lin,Yanxia Zhang,Haibo Liu,Min Zhang,Xiumei Liu,Zhu Zhu,Jianjun Sun,Jinhua Zhang
标识
DOI:10.1016/j.ijcard.2023.02.017
摘要
Our aim was to identify factors associated with major bleeding in patients with atrial fibrillation (AF) on direct oral anticoagulants (DOACs) and to construct and externally validate a predictive model that would provide a validated tool for clinical assessment of major bleeding.In the development cohort, prediction model was built by logistic regression, the area under the curve (AUC), and Nomogram. External validation, analytical identification and calibration of the model using AUC, calibration curves and Hosmer-Lemeshow test.The development cohort consisted of 4209 patients from 7 centers and the external validation cohort consisted of 1800 patients from 12 centers. Multifactorial analysis showed that age > 65 years, history of bleeding, anemia, vascular disease, antiplatelet therapy/non-steroidal anti-inflammatory drugs and rivaroxaban were independent risk factors for major bleeding, and gastrointestinal protective agents was a protective factor. The Alfalfa-MB model was constructed using these seven factors (AUC = 0.807), and in the external validation cohort, the model showed good discriminatory power (AUC = 0.743) and good calibration (Hosmer-Lemeshow test P value of 0.205). The predictive power of the six bleeding scores was ORBIT (AUC = 0.706), HAS-BLED (AUC = 0.648), ATRIA (AUC = 0.645), HEMORR2 HAGES (AUC = 0.632), ABC (AUC = 0.619) and Shireman (AUC = 0.599) in descending order.Based on 7 factors, we derived and externally validated a predictive model for major bleeding with DOACs in patients with AF (Alfalfa-MB). The model has good predictive value and may be an effective tool to help reduce the occurrence of major bleeding in patients with DOACs.
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