Literature DB >> 29380342

Risk-Predicting Model for Incident of Essential Hypertension Based on Environmental and Genetic Factors with Support Vector Machine.

Zhiyong Pei1,2, Jielin Liu3, Manjiao Liu1,2, Wenchao Zhou1, Pengcheng Yan1,2, Shaojun Wen3, Yubao Chen4,5,6.   

Abstract

Essential hypertension (EH) has become a major chronic disease around the world. To build a risk-predicting model for EH can help to interpose people's lifestyle and dietary habit to decrease the risk of getting EH. In this study, we constructed a EH risk-predicting model considering both environmental and genetic factors with support vector machine (SVM). The data were collected through Epidemiological investigation questionnaire from Beijing Chinese Han population. After data cleaning, we finally selected 9 environmental factors and 12 genetic factors to construct the predicting model based on 1200 samples, including 559 essential hypertension patients and 641 controls. Using radial basis kernel function, predictive accuracy via SVM with function with only environmental factor and only genetic factor were 72.8 and 54.4%, respectively; after considering both environmental and genetic factor the accuracy improved to 76.3%. Using the model via SVM with Laplacian function, the accuracy with only environmental factor and only genetic factor were 76.9 and 57.7%, respectively; after combining environmental and genetic factor, the accuracy improved to 80.1%. The predictive accuracy of SVM model constructed based on Laplacian function was higher than radial basis kernel function, as well as sensitivity and specificity, which were 63.3 and 86.7%, respectively. In conclusion, the model based on SVM with Laplacian kernel function had better performance in predicting risk of hypertension. And SVM model considering both environmental and genetic factors had better performance than the model with environmental or genetic factors only.

Entities:  

Keywords:  Bioinformatics; Predicting model; Support vector machine essential hypertension

Mesh:

Year:  2018        PMID: 29380342     DOI: 10.1007/s12539-017-0271-2

Source DB:  PubMed          Journal:  Interdiscip Sci        ISSN: 1867-1462            Impact factor:   2.233


  5 in total

Review 1.  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

2.  A Study of Machine-Learning Classifiers for Hypertension Based on Radial Pulse Wave.

Authors:  Zhi-Yu Luo; Ji Cui; Xiao-Juan Hu; Li-Ping Tu; Hai-Dan Liu; Wen Jiao; Ling-Zhi Zeng; Cong-Cong Jing; Li-Jie Qiao; Xu-Xiang Ma; Yu Wang; Jue Wang; Ching-Hsuan Pai; Zhen Qi; Zhi-Feng Zhang; Jia-Tuo Xu
Journal:  Biomed Res Int       Date:  2018-11-11       Impact factor: 3.411

3.  CRISPRpred(SEQ): a sequence-based method for sgRNA on target activity prediction using traditional machine learning.

Authors:  Ali Haisam Muhammad Rafid; Md Toufikuzzaman; Mohammad Saifur Rahman; M Sohel Rahman
Journal:  BMC Bioinformatics       Date:  2020-06-01       Impact factor: 3.169

4.  Correlation between miRNA target site polymorphisms in the 3' UTR of AVPR1A and the risk of hypertension in the Chinese Han population.

Authors:  Liuping Zhang; Jinwei Liu; Peng Cheng; Fangchao Lv
Journal:  Biosci Rep       Date:  2019-05-14       Impact factor: 3.840

5.  A risk scoring system to predict the risk of new-onset hypertension among patients with type 2 diabetes.

Authors:  Cheng-Chieh Lin; Chia-Ing Li; Chiu-Shong Liu; Chih-Hsueh Lin; Mu-Cyun Wang; Shing-Yu Yang; Tsai-Chung Li
Journal:  J Clin Hypertens (Greenwich)       Date:  2021-07-12       Impact factor: 3.738

  5 in total

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