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三种数据挖掘模型预测糖尿病或糖尿病前期的危险因素比较。

Comparison of three data mining models for predicting diabetes or prediabetes by risk factors.

机构信息

Department of Health Service Management, Public Health School of Sun Yat-Sen University, People's Republic of China.

出版信息

Kaohsiung J Med Sci. 2013 Feb;29(2):93-9. doi: 10.1016/j.kjms.2012.08.016. Epub 2012 Oct 16.


DOI:10.1016/j.kjms.2012.08.016
PMID:23347811
Abstract

The purpose of this study was to compare the performance of logistic regression, artificial neural networks (ANNs) and decision tree models for predicting diabetes or prediabetes using common risk factors. Participants came from two communities in Guangzhou, China; 735 patients confirmed to have diabetes or prediabetes and 752 normal controls were recruited. A standard questionnaire was administered to obtain information on demographic characteristics, family diabetes history, anthropometric measurements and lifestyle risk factors. Then we developed three predictive models using 12 input variables and one output variable from the questionnaire information; we evaluated the three models in terms of their accuracy, sensitivity and specificity. The logistic regression model achieved a classification accuracy of 76.13% with a sensitivity of 79.59% and a specificity of 72.74%. The ANN model reached a classification accuracy of 73.23% with a sensitivity of 82.18% and a specificity of 64.49%; and the decision tree (C5.0) achieved a classification accuracy of 77.87% with a sensitivity of 80.68% and specificity of 75.13%. The decision tree model (C5.0) had the best classification accuracy, followed by the logistic regression model, and the ANN gave the lowest accuracy.

摘要

本研究旨在比较逻辑回归、人工神经网络(ANNs)和决策树模型在使用常见风险因素预测糖尿病或糖尿病前期方面的性能。参与者来自中国广州的两个社区;共招募了 735 名确诊为糖尿病或糖尿病前期的患者和 752 名正常对照者。采用标准问卷获取人口统计学特征、家族糖尿病史、人体测量学指标和生活方式危险因素信息。然后,我们使用问卷信息中的 12 个输入变量和一个输出变量开发了三个预测模型;我们根据准确性、敏感性和特异性评估了这三个模型。逻辑回归模型的分类准确率为 76.13%,敏感性为 79.59%,特异性为 72.74%。ANN 模型的分类准确率为 73.23%,敏感性为 82.18%,特异性为 64.49%;决策树(C5.0)的分类准确率为 77.87%,敏感性为 80.68%,特异性为 75.13%。决策树模型(C5.0)的分类准确率最高,其次是逻辑回归模型,而 ANN 的准确率最低。

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本文引用的文献

[1]
Lifestyle factors and risk for new-onset diabetes: a population-based cohort study.

Ann Intern Med. 2011-9-6

[2]
Association between passive and active smoking and incident type 2 diabetes in women.

Diabetes Care. 2011-2-25

[3]
Comparison of different anthropometric measures as predictors of diabetes incidence in a Chinese population.

Diabetes Res Clin Pract. 2011-2-21

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Prevalence and risk factors of diabetes in a community-based study in North India: the Chandigarh Urban Diabetes Study (CUDS).

Diabetes Metab. 2010-12-30

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Application of data mining to the identification of critical factors in patient falls using a web-based reporting system.

Int J Med Inform. 2010-11-5

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Associations of alcohol consumption with diabetes mellitus and impaired fasting glycemia among middle-aged and elderly Chinese.

BMC Public Health. 2010-11-19

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Metabolism. 2010-9-16

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Can neural network able to estimate the prognosis of epilepsy patients according to risk factors?

J Med Syst. 2009-3-28

[9]
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Diabetes Care. 2010-7-27

[10]
Smoking is a strong risk factor for non-vertebral fractures in women with diabetes: the Tromsø Study.

Osteoporos Int. 2010-7-6

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