Hypertension Risk Prediction Based on SNPs by Machine Learning Models

随机森林 决策树 机器学习 支持向量机 人工神经网络 人工智能 计算机科学 排名(信息检索) 遗传算法 极限学习机 疾病 回归 数据挖掘 统计 医学 内科学 数学
作者
Mehrdad Kargari,S. Ali Lajevardi,Maryam Sadat Daneshpour,Mahdi Akbarzadeh
出处
期刊:Current Bioinformatics [Bentham Science Publishers]
卷期号:18 (1): 55-62 被引量:2
标识
DOI:10.2174/1574893617666221011093322
摘要

Background: Hypertension is one of the most significant underlying ailments of cardiovascular disease; hence, methods that can accurately reveal the risk of hypertension at an early age are essential. Also, one of the most critical personal health objectives is to improve disease prediction accuracy by examining genetic variants. Objective: Therefore, various clinical and genetically based methods are used to predict the disease; however, the critical issue with these methods is the high number of input variables as genetic markers with small samples. One approach that can be used to solve this problem is machine learning. Methods: This study was conducted on participants' genetic markers in 20-year research of cardiometabolic genetics in Tehran (TCGS). Various machine learning methods were used, including linear regression, neural network, random forest, decision tree, and support vector machine. The top ten genetic markers were identified using importance-based ranking methods, including information gain, gain ratio, Gini index, χ², relief, and FCBF. Results: A model based on a neural network with AUC 89% was presented. This model has an accuracy and an f-measure of 0.89, which shows the quality. The final results indicate the success of the machine learning approach.
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