<div><p>An improved method for detecting coronary heart disease (CHD) could have substantial clinical impact. Building on the idea that systemic effects of CHD risk factors are a conglomeration of genetic and environmental factors, we use machine learning techniques and integrate genetic, epigenetic and phenotype data from the Framingham Heart Study to build and test a Random Forest classification model for symptomatic CHD. Our classifier was trained on n = 1,545 individuals and consisted of four DNA methylation sites, two SNPs, age and gender. The methylation sites and SNPs were selected during the training phase. The final trained model was then tested on n = 142 individuals. The test data comprised of individuals removed based on related...
AIMS: Genetics plays an important role in coronary heart disease (CHD) but the clinical utility of g...
Cardiovascular diseases are a major challenge for public health. DNA methylation is a mechanism regu...
Background. Recent evidence highlights the epidemiological value of blood DNA methylation (DNAm) as ...
An improved approach for predicting the risk for incident coronary heart disease (CHD) could lead to...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
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...
We present the use of innovative machine learning techniques in the understanding of Cor-onary Heart...
Congenital Heart Defects (CHDs) are the most common type of human congenital anomaly, representing 0...
Background: Identifying environmentally responsive genetic loci where DNA methylation is associated ...
DNA methylation is an ideal biomarker for many applications, because it has both the stability for p...
Coronary artery disease (CAD) is a complex condition, the development of which involves interaction ...
Background: The integration of different layers of omics information is an opportunity to tackle the...
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...
Cardiovascular diseases are a major challenge for public health. DNA methylation is a mechanism regu...
Background. Recent evidence highlights the epidemiological value of blood DNA methylation (DNAm) as ...
An improved approach for predicting the risk for incident coronary heart disease (CHD) could lead to...
Background Epigenome-wide association studies for cardiometabolic risk factors have discovered multi...
<div><p>We present the use of innovative machine learning techniques in the understanding of Coronar...
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...
We present the use of innovative machine learning techniques in the understanding of Cor-onary Heart...
Congenital Heart Defects (CHDs) are the most common type of human congenital anomaly, representing 0...
Background: Identifying environmentally responsive genetic loci where DNA methylation is associated ...
DNA methylation is an ideal biomarker for many applications, because it has both the stability for p...
Coronary artery disease (CAD) is a complex condition, the development of which involves interaction ...
Background: The integration of different layers of omics information is an opportunity to tackle the...
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...
Cardiovascular diseases are a major challenge for public health. DNA methylation is a mechanism regu...
Background. Recent evidence highlights the epidemiological value of blood DNA methylation (DNAm) as ...