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Prediction Using Logistic Regression Analysis of Peripheral Vascular Disease

机译:外周血血管疾病逻辑回归分析预测

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Logisic regression model is to study the response variable is an important analytical method for non-continuous variables. Linear regression models and quantitative analysis is one of the most commonly used data mining methods of statistical analysis, linear regression analysis but generally require the response is a continuous variable, the data distribution is normal conditions. This study used logistic regression analysis to predict the study of peripheral vascular disease in the carotid atherosclerosis disease prediction model was established to provide scientific basis for the clinical treatment of peripheral vascular disease.
机译:逻辑回归模型是研究响应变量是非连续变量的重要分析方法。线性回归模型和定量分析是统计分析最常用的数据挖掘方法之一,线性回归分析,但通常需要响应是连续变量,数据分布是正常条件。本研究采用了物流回归分析来预测外周血血管疾病的研究在颈动脉粥样硬化疾病预测模型中,为外周血血管疾病的临床治疗提供科学依据。

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