Gao Wei, Huang Yu-Shuang, Wang Ying-De
Department of Gastroenterology, the First Affiliated Hospital of Dalian Medical University, Dalian, Liaoning Province, 116011, China.
Dalian Public Health Clinical Center, Liaoning Province, Dalian, China.
BMC Gastroenterol. 2024 Dec 23;24(1):471. doi: 10.1186/s12876-024-03569-1.
Esophageal and gastric varices hemorrhage (EGVH) is a life-threatening condition with the 6-week mortality rate of 15-25%. Up to 60% of patients with EGVH may experience rebleeding with a mortality rate of 33%. The existing scoring systems, such as RS scoring system (Rockall score, RS) and GBS scoring system (Glasgow-Blatchford score, GBS), have limitations in predicting the risk of rebleeding. Our study was to construct and validate a novel predictive model for the risk of rebleeding in patients with EGVH and to compare the predictive power of the predictive model with GBS and pRS.
Data of patients with EGVH was collected in the First Affiliated Hospital of Dalian Medical University from January 2016 to June 2020. Binary logistic and stepwise regression was performed to construct a predictive model. We compared the predictive power of the new predictive model to the GBS and pRS scoring systems.
Clinical data from a total of 265 patients with EGVH was collected. Six factors including systolic blood pressure, transfusion requirement, CA199, platelet count, upper esophageal varices and severity of esophageal varices were included in our new predictive model. The AUCs of the specificity of the predictive model, GBS and pRS are 0.82, 0.60 and 0.56.
This study successfully constructed a predictive model for the risk of rebleeding in patients with EGVH. This predictive model demonstrated higher predictive ability than pRS and GBS scoring systems for assessing rebleeding risk in EGVH patients.
食管胃静脉曲张出血(EGVH)是一种危及生命的疾病,6周死亡率为15% - 25%。高达60%的EGVH患者可能再次出血,死亡率为33%。现有的评分系统,如RS评分系统(Rockall评分,RS)和GBS评分系统(格拉斯哥 - 布拉奇福德评分,GBS),在预测再出血风险方面存在局限性。我们的研究旨在构建并验证一种用于预测EGVH患者再出血风险的新型预测模型,并将该预测模型与GBS和pRS的预测能力进行比较。
收集大连医科大学附属第一医院2016年1月至2020年6月期间EGVH患者的数据。采用二元逻辑回归和逐步回归构建预测模型。我们将新的预测模型与GBS和pRS评分系统的预测能力进行比较。
共收集了265例EGVH患者的临床数据。我们的新预测模型纳入了包括收缩压、输血需求、CA199、血小板计数、食管上段静脉曲张和食管静脉曲张严重程度在内的六个因素。预测模型、GBS和pRS的特异性AUC分别为0.82、0.60和0.56。
本研究成功构建了一种用于预测EGVH患者再出血风险的预测模型。该预测模型在评估EGVH患者再出血风险方面显示出比pRS和GBS评分系统更高的预测能力。