A case study of Stroke patients in Senegal: application of Generalized extreme value regression model

Aba Dio, E. Deme, Idrissa Sy, A. Diop
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Abstract

Logistic regression model is widely used in many studies to investigate the relationship between a binary response variable Y and a set of potential predictors X. The binary response may represent, for example, the occurrence of some outcome of interest (Y=1 if the outcome occurred and Y=0 otherwise). When the dependent variable Y represents a rare event, the logistic regression model shows relevant drawbacks. In order to overcome these drawbacks we propose the Generalized Extreme Value (GEV) regression model. In particularly, we suggest the quantile function of the GEV distribution as link function. Strokes are a serious pathology and a neurological emergency involving the vital prognosis and the functional prognosis. In Senegal, strokes account for more than 30% of hospitalizations and are responsible for nearly two thirds of mortality. In this work, we use the GVE regression model for binary data to determine the risk factors leading to stroke and to develop a predictive model of life-threatening outcomes in central Sénégal.
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以塞内加尔脑卒中患者为例:广义极值回归模型的应用
在许多研究中,逻辑回归模型被广泛用于研究二元响应变量Y与一组潜在预测因子x之间的关系。二元响应可以代表,例如,一些感兴趣的结果的发生(如果结果发生,Y=1,否则Y=0)。当因变量Y代表罕见事件时,逻辑回归模型显示出相关的缺陷。为了克服这些缺点,我们提出了广义极值(GEV)回归模型。特别地,我们建议将GEV分布的分位数函数作为链接函数。中风是一种严重的病理和神经急症,涉及生命预后和功能预后。在塞内加尔,中风占住院人数的30%以上,并造成近三分之二的死亡。在这项工作中,我们使用二元数据的GVE回归模型来确定导致中风的危险因素,并建立了中部ssamn危及生命的结果的预测模型。
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