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Prediction model for the risk of osteoporosis incorporating factors of disease history and living habits in physical examination of population in Chongqing, Southwest China: based on artificial neural network

机译:骨质疏松症患者缺血历史症患者风险的预测模型,在中国西南省重庆人口人口体育习惯中的影响因素:基于人工神经网络

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Osteoporosis is a gradually recognized health problem with risks related to disease history and living habits. This study aims to establish the optimal prediction model by comparing the performance of four prediction models that incorporated disease history and living habits in predicting the risk of Osteoporosis in Chongqing adults. We conduct a cross-sectional survey with convenience sampling in this study. We use a questionnaire From January 2019 to December 2019 to collect data on disease history and adults’ living habits who got dual-energy X-ray absorptiometry. We established the prediction models of osteoporosis in three steps. Firstly, we performed feature selection to identify risk factors related to osteoporosis. Secondly, the qualified participants were randomly divided into a training set and a test set in the ratio of 7:3. Then the prediction models of osteoporosis were established based on Artificial Neural Network (ANN), Deep Belief Network (DBN), Support Vector Machine (SVM) and combinatorial heuristic method (Genetic Algorithm - Decision Tree (GA-DT)). Finally, we compared the prediction models’ performance through accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curve (AUC) to select the optimal prediction model. The univariate logistic model found that taking calcium tablet (odds ratio [OR]?=?0.431), SBP (OR?=?1.010), fracture (OR?=?1.796), coronary heart disease (OR?=?4.299), drinking alcohol (OR?=?1.835), physical exercise (OR?=?0.747) and other factors were related to the risk of osteoporosis. The AUCs of the training set and test set of the prediction models based on ANN, DBN, SVM and GA-DT were 0.901, 0.762; 0.622, 0.618; 0.698, 0.627; 0.744, 0.724, respectively. After evaluating four prediction models’ performance, we selected a three-layer back propagation neural network (BPNN) with 18, 4, and 1 neuron in the input layer, hidden and output layers respectively, as the optimal prediction model. When the probability was greater than 0.330, osteoporosis would occur. Compared with DBN, SVM and GA-DT, the established ANN model had the best prediction ability and can be used to predict the risk of osteoporosis in physical examination of the Chongqing population. The model needs to be further improved through large sample research.
机译:骨质疏松症是与疾病历史和生活习惯有关的风险逐渐认可的健康问题。本研究旨在通过比较四种预测模型的性能来建立最佳预测模型,该致病史和生活习惯在预测重庆成人骨质疏松症的风险中。我们在本研究中采用了方便采样进行横断面调查。我们从2019年1月到2019年12月的调查问卷收集有关疾病历史和成人的生活习惯的数据,他们得到了双能X射线吸收测量。我们在三个步骤中建立了骨质疏松症的预测模型。首先,我们进行了特征选择以识别与骨质疏松症有关的风险因素。其次,合格的参与者随机分为培训集,比率为7:3的测试设定。然后基于人工神经网络(ANN),深度信仰网络(DBN),支持向量机(SVM)和组合启发式方法(遗传算法 - 决策树(GA-DT))建立了骨质疏松症的预测模型。最后,我们通过准确性,灵敏度,特异性和接收器操作特性曲线(AUC)下的区域进行比较预测模型的性能来选择最佳预测模型。单变量的物流模型发现服用钙片(差距[或] =Δ= 0.431),SBP(或?=?1.010),裂缝(或?=?1.796),冠心病(或?=?4.299),饮酒(或?=?1.835),体育锻炼(或?= 0.747)和其他因素与骨质疏松症的风险有关。基于ANN,DBN,SVM和GA-DT的预测模型的训练集和测试集的AUC为0.901,0.762; 0.622,0.618; 0.698,0.627; 0.744,0.724分别。在评估四个预测模型的性能之后,我们分别在输入层,隐藏和输出层中选择了18,4和1个神经元的三层背部传播神经网络(BPNN),作为最佳预测模型。当概率大于0.330时,会发生骨质疏松症。与DBN,SVM和GA-DT相比,已建立的ANN模型具有最佳的预测能力,可用于预测重庆人群体检中骨质疏松症的风险。通过大型样本研究需要进一步改善模型。

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