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Classification and Prediction on the Effects of Nutritional Intake on Overweight/Obesity, Dyslipidemia, Hypertension and Type 2 Diabetes Mellitus Using Deep Learning Model: 4–7th Korea National Health and Nutrition Examination Survey

机译:营养摄入对超重/肥胖,血脂血症,高血压和2型糖尿病使用深层学习模型的分类和预测:4-7th韩国国家健康与营养考试调查

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摘要

Few studies have been conducted to classify and predict the influence of nutritional intake on overweight/obesity, dyslipidemia, hypertension and type 2 diabetes mellitus (T2DM) based on deep learning such as deep neural network (DNN). The present study aims to classify and predict associations between nutritional intake and risk of overweight/obesity, dyslipidemia, hypertension and T2DM by developing a DNN model, and to compare a DNN model with the most popular machine learning models such as logistic regression and decision tree. Subjects aged from 40 to 69 years in the 4–7th (from 2007 through 2018) Korea National Health and Nutrition Examination Survey (KNHANES) were included. Diagnostic criteria of dyslipidemia (n = 10,731), hypertension (n = 10,991), T2DM (n = 3889) and overweight/obesity (n = 10,980) were set as dependent variables. Nutritional intakes were set as independent variables. A DNN model comprising one input layer with 7 nodes, three hidden layers with 30 nodes, 12 nodes, 8 nodes in each layer and one output layer with one node were implemented in Python programming language using Keras with tensorflow backend. In DNN, binary cross-entropy loss function for binary classification was used with Adam optimizer. For avoiding overfitting, dropout was applied to each hidden layer. Structural equation modelling (SEM) was also performed to simultaneously estimate multivariate causal association between nutritional intake and overweight/obesity, dyslipidemia, hypertension and T2DM. The DNN model showed the higher prediction accuracy with 0.58654 for dyslipidemia, 0.79958 for hypertension, 0.80896 for T2DM and 0.62496 for overweight/obesity compared with two other machine leaning models with five-folds cross-validation. Prediction accuracy for dyslipidemia, hypertension, T2DM and overweight/obesity were 0.58448, 0.79929, 0.80818 and 0.62486, respectively, when analyzed by a logistic regression, also were 0.52148, 0.66773, 0.71587 and 0.54026, respectively, when analyzed by a decision tree. This study observed a DNN model with three hidden layers with 30 nodes, 12 nodes, 8 nodes in each layer had better prediction accuracy than two conventional machine learning models of a logistic regression and decision tree.
机译:很少有研究已进行了分类和预测营养摄入对超重/肥胖,血脂异常,高血压的作用,并键入基于深度学习2型糖尿病(T2DM)如深层神经网络(DNN)。本研究旨在通过开发DNN模型来分类和预测营养摄入和超重/​​肥胖,血脂血症,高血压和T2DM之间的关联,并将DNN模型与最受欢迎的机器学习模型进行比较,例如Logistic回归和决策树。包括4-7th(从2007年至2018年到2018年)韩国国家卫生和营养考试调查(KNHANES)的受试者。血脂异常的诊断标准(N = 10731),高血压(N = 10991),T2DM(N = 3889)和超重/肥胖(N = 10980)被设定为从属变量。营养摄入量被设置为独立变量。包括具有7个节点的一个输入层的DNN模型,具有30个节点的三个隐藏层,12个节点,在每个层中的8个节点,一个输出层,其中一个输出层与一个节点以Python编程语言实现,使用带有TensoRFlow后端的Keras。在DNN中,二进制分类的二进制交叉熵损耗函数与ADAM优化器一起使用。为了避免过度装备,将辍学应用于每个隐藏层。还进行结构方程建模(SEM)以同时估计营养摄入和超重/​​肥胖,血脂血症,高血压和T2DM之间的多变量因果关系。 DNN模型显示出较高的预测准确性,对于血脂血症0.58654,0.79958,用于高速/ T2DM的0.80896,而超重/肥胖为0.62496,与另外两个机器倾斜模型有五倍的交叉验证相比。在通过逻辑回归分析的情况下,分别在0.58448,0.79929,0.80818和0.62486中分别分别进行了0.58448,0.79929,0.80818和0.62486的预测准确度分别,当通过决策树分析,分别为0.52148,0.6673,0.71587和0.54026。该研究观察了具有三个隐藏层的DNN模型,其中具有30个节点,12个节点,每个层中的8个节点具有比逻辑回归和决策树的两个传统机器学习模型更好的预测精度。

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