Meng Zirui, Wang Minjin, Guo Shuo, Zhou Yanbing, Zheng Mingxue, Liu Miaonan, Chen Yongyu, Yang Zhumiao, Zhao Bi, Ying Binwu
Department of Laboratory Medicine, West China Hospital, Sichuan University, Chengdu, China.
Department of Neurology, West China Hospital, Sichuan University, Chengdu, China.
Front Aging Neurosci. 2021 Jul 8;13:630437. doi: 10.3389/fnagi.2021.630437. eCollection 2021.
Timely diagnosis of ischemic stroke (IS) in the acute phase is extremely vital to achieve proper treatment and good prognosis. In this study, we developed a novel prediction model based on the easily obtained information at initial inspection to assist in the early identification of IS.
A total of 627 patients with IS and other intracranial hemorrhagic diseases from March 2017 to June 2018 were retrospectively enrolled in the derivation cohort. Based on their demographic information and initial laboratory examination results, the prediction model was constructed. The least absolute shrinkage and selection operator algorithm was used to select the important variables to form a laboratory panel. Combined with the demographic variables, multivariate logistic regression was performed for modeling, and the model was encapsulated within a visual and operable smartphone application. The performance of the model was evaluated on an independent validation cohort, formed by 304 prospectively enrolled patients from June 2018 to May 2019, by means of the area under the curve (AUC) and calibration.
The prediction model showed good discrimination (AUC = 0.916, cut-off = 0.577), calibration, and clinical availability. The performance was reconfirmed in the more complex emergency department. It was encapsulated as the Stroke Diagnosis Aid app for smartphones. The user can obtain the identification result by entering the values of the variables in the graphical user interface of the application.
The prediction model based on laboratory and demographic variables could serve as a favorable supplementary tool to facilitate complex, time-critical acute stroke identification.
急性缺血性卒中(IS)的及时诊断对于实现恰当治疗和良好预后极为重要。在本研究中,我们基于初次检查时易于获取的信息开发了一种新型预测模型,以协助早期识别IS。
回顾性纳入2017年3月至2018年6月期间共627例IS及其他颅内出血性疾病患者作为推导队列。基于其人口统计学信息和初次实验室检查结果构建预测模型。使用最小绝对收缩和选择算子算法选择重要变量以形成实验室指标组合。结合人口统计学变量进行多因素逻辑回归建模,并将模型封装在一个可视化且可操作的智能手机应用程序中。通过曲线下面积(AUC)和校准,在由2018年6月至2019年5月前瞻性纳入的304例患者组成的独立验证队列中评估该模型的性能。
该预测模型显示出良好的区分度(AUC = 0.916,截断值 = 0.577)、校准度和临床实用性。在更复杂的急诊科中再次证实了其性能。它被封装为智能手机的卒中诊断辅助应用程序。用户通过在应用程序的图形用户界面中输入变量值即可获得识别结果。
基于实验室和人口统计学变量的预测模型可作为一种有利的辅助工具,以促进复杂、时间紧迫的急性卒中识别。