Beta Inflated Regression Models on the Physical and Mental Health of Nigerian Stroke Survivors

K. Oritogun, O. Oyewole
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Abstract

Background: Stroke is one of the major public health problems worldwide. Physical and mental health data of stroke survivors are often expressed in proportions. Therefore, the Beta Regression models family for data between zero and one will be appropriate. Objectives: To identify a suitable model and the likely risk factors of physical and mental health of stroke survivors. Method: Secondary data of stroke survivors from two tertiary health Institutions in Ogun State, Nigeria, were analysed. Inflated Beta (BEINF) and Inflated-at-one-Beta (BEINF1) models were compared using Deviance (DEV), Akaike Information Criterion (AIC) and Bayesian Information Criteria (BIC) for model selection. The model with minimum DEV, AIC and BIC was considered to be better. Results: The deviance (-86.0604,), AIC (-46.0604) and BIC (6.4391) values of the BEINF1 model for physical health and the deviance (-20.1217), AIC (19.8783) and BIC (72.3778) values of BEINF1 model for mental health were smaller than BEINF models. Therefore, BEINF1 was the better model to identify the health risk factors of stroke survivors. Age, marital status, diastolic blood pressure, disability duration and systolic blood pressure had a significant association with physical health, while BMI had a significant positive association with mental health.  Conclusion: The beta-inflated-at-one (BEINF1) model is suitable for identifying health risk factors of stroke survivors when the outcome variable is a proportion. Both demographic and clinical characteristics were significantly associated with the health of stroke survivors. This study would assist researchers in knowing the appropriate model for analysing proportion or percentage response variables.
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尼日利亚中风幸存者身心健康的Beta膨胀回归模型
背景:脑卒中是世界范围内主要的公共卫生问题之一。中风幸存者的身心健康数据通常以比例表示。因此,数据介于0和1之间的Beta回归模型家族将是合适的。目的:探讨脑卒中幸存者身心健康的适宜模型及可能的危险因素。方法:对来自尼日利亚奥贡州两所三级卫生机构的脑卒中幸存者的二级资料进行分析。采用Deviance (DEV)、赤池信息准则(AIC)和贝叶斯信息准则(BIC)对膨胀Beta (BEINF)和膨胀-at- 1 Beta (BEINF1)模型进行比较。认为DEV、AIC、BIC最小的模型效果较好。结果:BEINF1模型对身体健康的偏差值(-86.0604)、AIC(-46.0604)和BIC(6.4391)均小于BEINF1模型对心理健康的偏差值(-20.1217)、AIC(19.8783)和BIC(72.3778)。因此,BEINF1是识别脑卒中幸存者健康危险因素的较好模型。年龄、婚姻状况、舒张压、残疾持续时间和收缩压与身体健康显著相关,BMI与心理健康显著正相关。结论:当结果变量为比例时,β -膨胀- 1 (BEINF1)模型适用于脑卒中幸存者健康危险因素的识别。人口统计学和临床特征都与中风幸存者的健康显著相关。这项研究将有助于研究人员了解分析比例或百分比响应变量的适当模型。
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0.10
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审稿时长
20 weeks
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