Dimensionality reduction is a data transformation technique widely used in various fields of genomics research. The application of dimensionality reduction to genotype data is known to capture genetic similarity between individuals, and is used for visualization of genetic variation, identification of population structure as well as ancestry mapping. Among frequently used methods are principal component analysis, which is a linear transform that often misses more fine-scale structures, and neighbor-graph based methods which focus on local relationships rather than large-scale patterns. Deep learning models are a type of nonlinear machine learning method in which the features used in data transformation are decided by the model in a data-dri...
Abstract Background Principal component analysis (PCA) is a standard method to correct for populatio...
Applying deep learning in population genomics is challenging because of computational issues and lac...
The genetic bases of many complex phenotypes are still largely unknown, mostly due to the polygenic ...
Dimensionality reduction is a data transformation technique widely used in various fields of genomic...
Population genetics is transitioning into a data-driven discipline thanks to the availability of lar...
Deep variational autoencoders for population genetics: applications in classification, imputation, d...
The understanding of variations in genome sequences assists us in identifying people who are predisp...
<div><p>The advent of genome-wide dense variation data provides an opportunity to investigate ancest...
The study of genetic variants (GVs) can help find correlating population groups and to identify coho...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
AbstractDimensionality reduction is a common tool for visualization and inference of population stru...
MOTIVATION: Amyotrophic lateral sclerosis (ALS) is a neurodegenerative disease caused by aberrations...
Population structure is an important field of study due to its importance in finding underlying gene...
Abstract Background Principal component analysis (PCA) is a standard method to correct for populatio...
Applying deep learning in population genomics is challenging because of computational issues and lac...
The genetic bases of many complex phenotypes are still largely unknown, mostly due to the polygenic ...
Dimensionality reduction is a data transformation technique widely used in various fields of genomic...
Population genetics is transitioning into a data-driven discipline thanks to the availability of lar...
Deep variational autoencoders for population genetics: applications in classification, imputation, d...
The understanding of variations in genome sequences assists us in identifying people who are predisp...
<div><p>The advent of genome-wide dense variation data provides an opportunity to investigate ancest...
The study of genetic variants (GVs) can help find correlating population groups and to identify coho...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
AbstractDimensionality reduction is a common tool for visualization and inference of population stru...
MOTIVATION: Amyotrophic lateral sclerosis (ALS) is a neurodegenerative disease caused by aberrations...
Population structure is an important field of study due to its importance in finding underlying gene...
Abstract Background Principal component analysis (PCA) is a standard method to correct for populatio...
Applying deep learning in population genomics is challenging because of computational issues and lac...
The genetic bases of many complex phenotypes are still largely unknown, mostly due to the polygenic ...