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首页> 外文期刊>Translational research: the journal of laboratory and clinical medicine >Inconsistency in albuminuria predictors in type 2 diabetes: A comparison between neural network and conditional logistic regression
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Inconsistency in albuminuria predictors in type 2 diabetes: A comparison between neural network and conditional logistic regression

机译:2型糖尿病白蛋白尿预测指标不一致:神经网络和条件对数回归的比较

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Albuminuria is a sensitive marker to predict future cardiovascular events in patients with type 2 diabetes mellitus. However, current studies only use conventional regression models to discover predictors of albuminuria. We have used 2 different statistical models to predict albuminuria in type 2 diabetes mellitus: a multilayer perception neural network and a conditional logistic regression. Neural network models were used to predict the level of albuminuria in patients with type 2 diabetes mellitus, which include a matched case-control study for the population. For each case, we randomly selected 1 control matched by age and body mass index (BMI). The input variables were sex, duration of diabetes, systolic and diastolic blood pressure, glomerular filtration rate, high-density lipoprotein, low-density lipoprotein, triglyceride, high-density lipoprotein/triglyceride ratio, cholesterol, fasting blood sugar, and glycated hemoglobin. Age and BMI were included only in the neural network model. This model included 4 hidden layers and 1 bias. Relative error of predictions was 0.38% in the training group, 0.52% in the testing group, and 1.20% in the holdout group. The most robust predictors of albuminuria were high-density lipoprotein (21%), cholesterol (14.4%), and systolic blood pressure (9.7%). Using the conditional logistic regression model, glomerular filtration rate, time of onset to diabetes, and sex were significant indicators in the onset of albuminuria. Using a neural network model, we show that high-density lipoprotein is the most important factor in predicting albuminuria in type 2 diabetes mellitus. Our neural network model complements the current risk factor models to improve the care of patients with diabetes.
机译:蛋白尿是预测2型糖尿病患者未来心血管事件的敏​​感指标。但是,当前的研究仅使用常规回归模型来发现蛋白尿的预测因子。我们使用了2种不同的统计模型来预测2型糖尿病的蛋白尿:多层感知神经网络和条件逻辑回归。神经网络模型用于预测2型糖尿病患者的蛋白尿水平,其中包括针对人群的匹配病例对照研究。对于每种情况,我们随机选择1个与年龄和体重指数(BMI)相匹配的对照。输入变量包括性别,糖尿病持续时间,收缩压和舒张压,肾小球滤过率,高密度脂蛋白,低密度脂蛋白,甘油三酸酯,高密度脂蛋白/甘油三酸酯比率,胆固醇,空腹血糖和糖化血红蛋白。年龄和BMI仅包含在神经网络模型中。该模型包括4个隐藏层和1个偏差。预测的相对误差在训练组中为0.38%,在测试组中为0.52%,在坚持组中为1.20%。蛋白尿的最有力预测指标是高密度脂蛋白(21%),胆固醇(14.4%)和收缩压(9.7%)。使用条件对数回归模型,肾小球滤过率,糖尿病发作时间和性别是白蛋白尿发作的重要指标。使用神经网络模型,我们显示高密度脂蛋白是预测2型糖尿病蛋白尿的最重要因素。我们的神经网络模型是对当前危险因素模型的补充,以改善糖尿病患者的护理。

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