逻辑回归分析在确定与中风相关的重要风险因素方面的潜在作用

M. Aboonq
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摘要

目的:本研究论文旨在阐明和分析导致特定人群发生中风的各种风险因素。材料与方法:本研究对 2015 年行为风险因素监测系统(BRFSS)数据集进行了横断面分析。BRFSS是一个基于电话的年度调查系统,旨在收集美国成年人的行为风险因素信息。本研究使用的数据集包括从 2015 年 BRFSS 中获得的 70,692 个观测值。其中包括 21 个潜在风险因素的信息以及表示是否发生中风的二元结果变量。数据分析使用 Google Colab 进行,这是一个支持 Python 编程语言及其库的云平台。结果:逻辑回归分析显示,心脏病或心脏病发作(p <0.001)、高血压(p <0.001)、高胆固醇(p <0.001)和行走困难(p <0.001)与中风的关联性最强。其他与中风有明显关联的风险因素包括糖尿病、吸烟、水果食用量、蔬菜食用量、一般健康观念、精神健康、身体健康、年龄、教育程度和收入。值得注意的是,一些风险因素,包括胆固醇检查、体育锻炼、获得医疗保健的机会和不看医生,与中风的关系在统计学上并不显著。结论:研究结果表明,心脏病或心脏病发作、高血压、高胆固醇和行走困难与中风的关系最为密切。
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Potential Role of Logistic Regression Analysis to Identify Significant Risk Factors Associated with Stroke
Objectives : This research paper aims to clarify and analyse the various risk factors contributing to the occurrence of stroke in a specific population. Material and methods : This study employed a cross-sectional analysis of the 2015 Behavioral Risk Factor Surveillance System (BRFSS) dataset. The BRFSS is an annual telephone-based survey system designed to gather information about behavioural risk factors among adults across the United States. The dataset used in this study consisted of 70,692 observations obtained from the 2015 BRFSS. It included information on 21 potential risk factors and a binary outcome variable indicating the presence or absence of a stroke. The data analysis was conducted using Google Colab, a cloud-based platform that supports the programming language Python and its libraries. Results : The logistic regression analysis revealed that the strongest associations with stroke were observed for heart disease or heart attack (p <0.001), high blood pressure (p < 0.001), high cholesterol (p < 0.001) and difficulties in walking (p < 0.001). Other risk factors that showed significant associations with stroke were diabetes, smoking, fruit consumption, vegetable consumption, general health perception, mental health, physical health, age, education and income. It is important to note that some risk factors, including cholesterol check, physical activity, access to healthcare and absence of doctor visits, did not exhibit statistically significant associations with stroke. Conclusion : The findings revealed that heart disease or heart attack, high blood pressure, high cholesterol and difficulties in walking exhibited the strongest associations with stroke.
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