首页> 外文期刊>Journal of Kermanshah University of Medical Sciences >Comparison logistic regression and discriminant analysis in identifying the determinants of type 2 diabetes among prediabetes of Kermanshah rural areas
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Comparison logistic regression and discriminant analysis in identifying the determinants of type 2 diabetes among prediabetes of Kermanshah rural areas

机译:比较Logistic回归和判别分析确定克曼沙赫农村地区前驱糖尿病中2型糖尿病的决定因素

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Background: Failure to control diabetes on time leads to irreparable complications in other parts of body such as heart, kidneys, eyes, and etc. As those most susceptible to the disease are pre-diabetic individuals, this study aims to identify the Determinants for diabetes in people with pre-diabetes employing two advanced statistical methods of logistic regression and discriminant analysis. Methods: Data were collected from 17 health centers in the rural area of Kermanshah city. 100 diabetic patients and 100 pre-diabetes persons (controls) were enrolled. Demographic data, body mass index, fasting blood sugar (FBS), oral glucose tolerance test (OGTT), blood pressure, blood lipid levels and daily activity in two separate forms by the staff of Disease control from health records were collected. Logistic regression and discriminant analysis to identify Determinants and ROC curve were used to compare the predictive power of the models. Results: The predictive power of logistic regression and discriminant analysis were 0.884 and 0.80 respectively. Sex (P= 0.027) and FBS (P<0.001) in logistic regression and age (P=0.014), FBS (P<0.001) and OGTT (P<0.001) were significant in the discriminant analysis. Logistic regression model was more sensitive (79%). Conclusion: In this study, logistic regression was more powerful in the separation of patients from pre-diabetic. In communities that have high affinity between case and control groups, identifying differences needs stronger methods. Thus, using these methods recommended in medical studies.
机译:背景:无法及时控制糖尿病会导致身体其他部位(如心脏,肾脏,眼睛等)发生无法弥补的并发症。由于最容易患该病的人群是糖尿病前期个体,因此本研究旨在确定糖尿病的决定因素在患有糖尿病前期人群中,采用了两种先进的逻辑回归和判别分析统计方法。方法:从克曼沙赫市农村地区的17个卫生中心收集数据。纳入了100位糖尿病患者和100位糖尿病前期患者(对照组)。疾病控制人员从健康记录中以两种单独的形式收集了人口统计数据,体重指数,空腹血糖(FBS),口服葡萄糖耐量试验(OGTT),血压,血脂水平和日常活动。使用逻辑回归和判别分析来确定行列式和ROC曲线,以比较模型的预测能力。结果:逻辑回归和判别分析的预测能力分别为0.884和0.80。逻辑分析中的性别(P = 0.027)和FBS(P <0.001)和年龄(P = 0.014),FBS(P <0.001)和OGTT(P <0.001)在判别分析中显着。 Logistic回归模型更为敏感(79%)。结论:在这项研究中,逻辑回归在将患者与糖尿病前期患者分离方面更有效。在病例组和对照组之间具有较高亲和力的社区中,识别差异需要更有效的方法。因此,使用医学研究推荐的这些方法。

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