In the analysis of current genomic data, application of machine learning and data mining techniques has become more attractive given the rising complexity of the projects. As part of the Genetic Analysis Workshop 19, approaches from this domain were explored, mostly motivated from two starting points. First, assuming an underlying structure in the genomic data, data mining might identify this and thus improve downstream association analyses. Second, computational methods for machine learning need to be developed further to efficiently deal with the current wealth of data. In the course of discussing results and experiences from the machine learning and data mining approaches, six common messages were extracted. These depict the current sta...
This paper summarizes the contributions from the Population-Based Association group at the Genetic A...
Because of the complexity of gene-phenotype relationships machine learning approaches have considera...
Motivation Integration of different omics data could markedly help to identify biological signatures...
In the analysis of current genomic data, application of machine learning and data mining techniques ...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度[[note]]http://gateway.isiknowledge.com/gateway/Gateway...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
Background: Multiple layers of genetic and epigenetic variability are being simultaneously explored ...
Machine learning enables a computer to learn a relationship between two assumingly related types of ...
Genetics Analysis Workshop 17 provided common and rare genetic variants from exome sequencing data a...
The relationship between genetics and phenotype is a complex one that remains poorly understood. Man...
Genetic Analysis Workshop 19 provided a platform for developing and evaluating statistical methods t...
Genome-wide association studies have helped us identify a wealth of genetic variants associated with...
Genome-wide association study (GWAS) aims to discover genetic factors underlying phenotypic traits. ...
Variations present in human genome play a vital role in the emergence of genetic disorders and abnor...
Depuis le premier séquençage du génome humain au début des années 2000, de grandes initiatives se so...
This paper summarizes the contributions from the Population-Based Association group at the Genetic A...
Because of the complexity of gene-phenotype relationships machine learning approaches have considera...
Motivation Integration of different omics data could markedly help to identify biological signatures...
In the analysis of current genomic data, application of machine learning and data mining techniques ...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];有審查制度[[note]]http://gateway.isiknowledge.com/gateway/Gateway...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
Background: Multiple layers of genetic and epigenetic variability are being simultaneously explored ...
Machine learning enables a computer to learn a relationship between two assumingly related types of ...
Genetics Analysis Workshop 17 provided common and rare genetic variants from exome sequencing data a...
The relationship between genetics and phenotype is a complex one that remains poorly understood. Man...
Genetic Analysis Workshop 19 provided a platform for developing and evaluating statistical methods t...
Genome-wide association studies have helped us identify a wealth of genetic variants associated with...
Genome-wide association study (GWAS) aims to discover genetic factors underlying phenotypic traits. ...
Variations present in human genome play a vital role in the emergence of genetic disorders and abnor...
Depuis le premier séquençage du génome humain au début des années 2000, de grandes initiatives se so...
This paper summarizes the contributions from the Population-Based Association group at the Genetic A...
Because of the complexity of gene-phenotype relationships machine learning approaches have considera...
Motivation Integration of different omics data could markedly help to identify biological signatures...