Development and verification of a nomogram for predicting short-term mortality in elderly ischemic stroke populations

Author:

Jin Guangyong,Hu Wei,Zeng Longhuan,Diao Mengyuan,Chen Hui,Chen Jiayi,Gu Nanyuan,Qiu Kai,Lv Huayao,Pan Lu,Xi Shaosong,Zhou Menglu,Liang Dongcheng,Ma Buqing

Abstract

AbstractStroke is a major healthcare problem worldwide, particularly in the elderly population. Despite limited research on the development of prediction models for mortality in elderly individuals with ischemic stroke, our study aimed to address this knowledge gap. By leveraging data from the Medical Information Mart for Intensive Care IV database, we collected comprehensive raw data pertaining to elderly patients diagnosed with ischemic stroke. Through meticulous screening of clinical variables associated with 28-day mortality, we successfully established a robust nomogram. To assess the performance and clinical utility of our nomogram, various statistical analyses were conducted, including the concordance index, integrated discrimination improvement (IDI), net reclassification index (NRI), calibration curves and decision curve analysis (DCA). Our study comprised a total of 1259 individuals, who were further divided into training (n = 894) and validation (n = 365) cohorts. By identifying several common clinical features, we developed a nomogram that exhibited a concordance index of 0.809 in the training dataset. Notably, our findings demonstrated positive improvements in predictive performance through the IDI and NRI analyses in both cohorts. Furthermore, calibration curves indicated favorable agreement between the predicted and actual incidence of mortality (P > 0.05). DCA curves highlighted the substantial net clinical benefit of our nomogram compared to existing scoring systems used in routine clinical practice. In conclusion, our study successfully constructed and validated a prognostic nomogram, which enables accurate short-term mortality prediction in elderly individuals with ischemic stroke.

Funder

Construction Fund of Medical Key Disciplines of Hangzhou

Project of Hangzhou Science and Technology

Zhejiang Provincial science and technology plan projects of China

Project of Hangzhou Health Science and Technology Program

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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