An improved approach for predicting the risk for incident coronary heart disease (CHD) could lead to substantial improvements in cardiovascular health. Previously, we have shown that genetic and epigenetic loci could predict CHD status more sensitively than conventional risk factors. Herein, we examine whether similar machine learning approaches could be used to develop a similar panel for predicting incident CHD. Training and test sets consisted of 1180 and 524 individuals, respectively. Data mining techniques were employed to mine for predictive biosignatures in the training set. An ensemble of Random Forest models consisting of four genetic and four epigenetic loci was trained on the training set and subsequently evaluated on the test se...
BACKGROUND: More accurate coronary heart disease (CHD) prediction, specifically in middle-aged men, ...
Coronary artery disease (CAD) is the leading global cause of mortality and has substantial heritabil...
We examined whether a panel of SNPs, systematically selected from genome-wide association studies (G...
<div><p>An improved method for detecting coronary heart disease (CHD) could have substantial clinica...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
Data mining is a field of computer science that combines statistical analysis and machine learning t...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
AIMS: Genetics plays an important role in coronary heart disease (CHD) but the clinical utility of g...
AIMS: Genetics plays an important role in coronary heart disease (CHD) but the clinical utility of g...
We use UK Biobank data to train predictors for 65 blood and urine markers such as HDL, LDL, lipoprot...
We examined whether a panel of SNPs, systematically selected from genome-wide association studies (G...
Background Recent evidence highlights the epidemiological value of blood DNA methylation (DNAm) as s...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
More accurate coronary heart disease (CHD) prediction, specifically in middle-aged men, is needed to...
It is still unclear how genetic information, provided as single-nucleotide polymorphisms (SNPs), can...
BACKGROUND: More accurate coronary heart disease (CHD) prediction, specifically in middle-aged men, ...
Coronary artery disease (CAD) is the leading global cause of mortality and has substantial heritabil...
We examined whether a panel of SNPs, systematically selected from genome-wide association studies (G...
<div><p>An improved method for detecting coronary heart disease (CHD) could have substantial clinica...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
Data mining is a field of computer science that combines statistical analysis and machine learning t...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
AIMS: Genetics plays an important role in coronary heart disease (CHD) but the clinical utility of g...
AIMS: Genetics plays an important role in coronary heart disease (CHD) but the clinical utility of g...
We use UK Biobank data to train predictors for 65 blood and urine markers such as HDL, LDL, lipoprot...
We examined whether a panel of SNPs, systematically selected from genome-wide association studies (G...
Background Recent evidence highlights the epidemiological value of blood DNA methylation (DNAm) as s...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
More accurate coronary heart disease (CHD) prediction, specifically in middle-aged men, is needed to...
It is still unclear how genetic information, provided as single-nucleotide polymorphisms (SNPs), can...
BACKGROUND: More accurate coronary heart disease (CHD) prediction, specifically in middle-aged men, ...
Coronary artery disease (CAD) is the leading global cause of mortality and has substantial heritabil...
We examined whether a panel of SNPs, systematically selected from genome-wide association studies (G...