Literature DB >> 20505678

Evaluating the risk of hypertension using an artificial neural network method in rural residents over the age of 35 years in a Chinese area.

Shuqiong Huang1, Yihua Xu, Li Yue, Sheng Wei, Li Liu, Xiumin Gan, Shuihong Zhou, Shaofa Nie.   

Abstract

Hypertension (HTN) has been proven to be associated with an increased risk of cardiovascular diseases. The purpose of the study was to examine risk factors for HTN and to develop a prediction model to estimate HTN risk for rural residents over the age of 35 years. This study was based on a cross-sectional survey of 3054 rural community residents (N=3054). Participants were divided into two groups: a training set (N1=2438) and a validation set (N2=616). The differences between the training set and validation set were not statistically significant. The predictors of HTN risk were identified from the training set using logistic regression analysis. Some risk factors were significantly associated with HTN, such as a high educational level (EL) (odds ratio (OR)=0.744), a predominantly sedentary job (OR=1.090), a positive family history of HTN (OR=1.614), being overweight (OR=1.525), dysarteriotony (OR=1.101), alcohol intake (OR=0.760), a salty diet (OR=1.146), more vegetable and fruit intake (OR=0.882), meat consumption (OR=0.787) and regular physical exercise (OR=0.866). We established the predictive models using logistic regression model (LRM) and artificial neural network (ANN). The accuracy of the models was compared by receiver operating characteristic (ROC) when the models were applied to the validation set. The ANN model (area under the curve (AUC)=0.900+/-0.014) proved better than the LRM (AUC=0.732+/-0.026) in terms of evaluating the HTN risk because it had a larger area under the ROC curve.

Entities:  

Mesh:

Year:  2010        PMID: 20505678     DOI: 10.1038/hr.2010.73

Source DB:  PubMed          Journal:  Hypertens Res        ISSN: 0916-9636            Impact factor:   3.872


  17 in total

Review 1.  Future possibilities for artificial intelligence in the practical management of hypertension.

Authors:  Hiroshi Koshimizu; Ryosuke Kojima; Yasushi Okuno
Journal:  Hypertens Res       Date:  2020-07-13       Impact factor: 3.872

2.  Prediction model and assessment of probability of incident hypertension: the Rural Chinese Cohort Study.

Authors:  Bingyuan Wang; Yu Liu; Xizhuo Sun; Zhaoxia Yin; Honghui Li; Yongcheng Ren; Yang Zhao; Ruiyuan Zhang; Ming Zhang; Dongsheng Hu
Journal:  J Hum Hypertens       Date:  2020-02-27       Impact factor: 3.012

Review 3.  Future Direction for Using Artificial Intelligence to Predict and Manage Hypertension.

Authors:  Chayakrit Krittanawong; Andrew S Bomback; Usman Baber; Sripal Bangalore; Franz H Messerli; W H Wilson Tang
Journal:  Curr Hypertens Rep       Date:  2018-07-06       Impact factor: 5.369

4.  An Artificial Neural Network Approach to Predicting Stroke in Postmenopausal Women.

Authors:  Hyejin Park; Kisok Kim
Journal:  Iran J Public Health       Date:  2022-04       Impact factor: 1.479

Review 5.  Adiposity has a greater impact on hypertension in lean than not-lean populations: a systematic review and meta-analysis.

Authors:  Simin Arabshahi; Doreen Busingye; Asvini K Subasinghe; Roger G Evans; Michaela A Riddell; Amanda G Thrift
Journal:  Eur J Epidemiol       Date:  2014-05-17       Impact factor: 8.082

Review 6.  Artificial Intelligence and Hypertension: Recent Advances and Future Outlook.

Authors:  Thanat Chaikijurajai; Luke J Laffin; Wai Hong Wilson Tang
Journal:  Am J Hypertens       Date:  2020-11-03       Impact factor: 3.080

7.  A discriminant analysis prediction model of non-syndromic cleft lip with or without cleft palate based on risk factors.

Authors:  Huixia Li; Miyang Luo; Jiayou Luo; Jianfei Zheng; Rong Zeng; Qiyun Du; Junqun Fang; Na Ouyang
Journal:  BMC Pregnancy Childbirth       Date:  2016-11-23       Impact factor: 3.007

8.  An artificial neural network prediction model of congenital heart disease based on risk factors: A hospital-based case-control study.

Authors:  Huixia Li; Miyang Luo; Jianfei Zheng; Jiayou Luo; Rong Zeng; Na Feng; Qiyun Du; Junqun Fang
Journal:  Medicine (Baltimore)       Date:  2017-02       Impact factor: 1.889

Review 9.  Fruit and Vegetables Consumption and Risk of Hypertension: A Meta-Analysis.

Authors:  Bingrong Li; Fang Li; Longfei Wang; Dongfeng Zhang
Journal:  J Clin Hypertens (Greenwich)       Date:  2016-01-29       Impact factor: 3.738

10.  Artificial neural network models for early diagnosis of hepatocellular carcinoma using serum levels of α-fetoprotein, α-fetoprotein-L3, des-γ-carboxy prothrombin, and Golgi protein 73.

Authors:  Bo Li; Boan Li; Tongsheng Guo; Zhiqiang Sun; Xiaohan Li; Xiaoxi Li; Lin Chen; Jing Zhao; Yuanli Mao
Journal:  Oncotarget       Date:  2017-07-17
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.