Gao Hua, Sun Xiaolong, Li Wen, Gao Qiong, Zhang Jing, Zhang Yi, Ma Yue, Yang Xiai, Kang Xiaogang, Jiang Wen
a Department of Neurology , Xijing Hospital, Fourth Military Medical University , Xi'an , China.
b Department of Rehabilitation Medicine , Xijing Hospital, Fourth Military Medical University , Xi'an , China.
Neurol Res. 2018 Jul;40(7):532-540. doi: 10.1080/01616412.2018.1451431. Epub 2018 Mar 16.
Objective Stroke due to atrial fibrillation (AF) is common and frequently devastating. However, there is no specific tool to accurately estimate the risk of mortality. This study aims to develop and validate a comprehensive risk score for predicting 30-day mortality in the patients with AF-related stroke. Methods A retrospective multi-center clinical study was performed based on the data from the project of secondary prevention of stroke in patients with nonvalvular AF in Shaanxi province, China. A total of 1077 consecutive patients were randomly classified into derivation (66.7%, n = 718) and internal validation cohort (33.3%, n = 359). Independent predictors of 30-day mortality were obtained using univariate and multivariable analyses. The area under the receiver operating characteristic curve (AUROC) and the Hosmer-Lemeshow test were used to assess model discrimination and calibration, respectively. Results Two hundred patients (18.6%) of 1077 participants died within 30 days. An 8-point score was generated from the five independent predictors for 30-day mortality including Glasgow Coma Scale, pneumonia, midline shift on brain images, blood glucose, and female sex, which was named GPS-GF. The resulting score showed good discrimination (AUROC) and well calibrated (Hosmer-Lemeshow test) in the derivation (0.909; p = 0.102) and internal validation cohort (0.922; p = 0.153). Compared with iScore, the GPS-GF score exhibited remarkably better discriminative power and predictive accuracy regarding the 30-day mortality in patients with AF-related stroke. Conclusion The GPS-GF score is a simple and valid tool for predicting 30-day mortality in patients with AF-related stroke.
目的 心房颤动(AF)所致卒中很常见,且往往具有严重破坏性。然而,尚无准确估计死亡风险的特异性工具。本研究旨在开发并验证一个综合风险评分,以预测AF相关性卒中患者的30天死亡率。方法 基于中国陕西省非瓣膜性AF患者卒中二级预防项目的数据进行一项回顾性多中心临床研究。共1077例连续患者被随机分为推导队列(66.7%,n = 718)和内部验证队列(33.3%,n = 359)。采用单因素和多因素分析获得30天死亡率的独立预测因素。分别使用受试者工作特征曲线下面积(AUROC)和Hosmer-Lemeshow检验评估模型的辨别力和校准度。结果 1077例参与者中有200例(18.6%)在30天内死亡。从包括格拉斯哥昏迷量表、肺炎、脑影像中线移位、血糖和女性性别这五个30天死亡率的独立预测因素中得出一个8分评分,命名为GPS-GF。所得评分在推导队列(0.909;p = 0.102)和内部验证队列(0.922;p = 0.153)中显示出良好的辨别力(AUROC)和良好的校准度(Hosmer-Lemeshow检验)。与iScore相比,GPS-GF评分在AF相关性卒中患者30天死亡率方面表现出显著更好的辨别力和预测准确性。结论 GPS-GF评分是预测AF相关性卒中患者30天死亡率的一种简单有效的工具。