Statistical machine learning has played a key role in many areas, such as biology, health sciences, finance and genetics. Important tasks in computational genetics include disease prediction, capturing shapes within images, computation of genetic sharing between pairs of individuals, genome-wide association studies and image clustering. This thesis develops several learning methods to address these computational genetics problems. Firstly, motivated by the need for fast computation of genetic sharing among pairs of individuals, we propose the fastest algorithms for computing the kinship coefficient of a set of individuals with a known large pedigree. {Moreover, we consider the possibility that the founders of the known pedigree may thems...
As the extent of human genetic variation becomes more fully characterized, the research community is...
In the field of neuroimaging genetics, brain images are used as phenotypes in the search for geneti...
We propose a non-parametric regression methodology, Random Forests on Distance Matrices (RFDM), for ...
We propose a unified Bayesian framework for detecting genetic variants associated with disease by ex...
International audienceBrain imaging is a natural intermediate phenotype to understand the link betwe...
Established approaches in imaging genetics and genome wide association studies (GWAS) such as univar...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Imaging genetics is an emerging methodology that combines genetic information with imaging-derived m...
This dissertation develops statistical and computational methods for human genetics. We considerprob...
Whereas Mendel used breeding experiments and painstakingly counted peas, modern biology increasingly...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Biomedical sciences have seen radical growth in recent decades, inspired by a plethora of technologi...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
Genomic malformations are believed to be the driving factors of many diseases. Therefore, understand...
Imaging genetics deals with relationships between genetic variation and imaging variables, often in ...
As the extent of human genetic variation becomes more fully characterized, the research community is...
In the field of neuroimaging genetics, brain images are used as phenotypes in the search for geneti...
We propose a non-parametric regression methodology, Random Forests on Distance Matrices (RFDM), for ...
We propose a unified Bayesian framework for detecting genetic variants associated with disease by ex...
International audienceBrain imaging is a natural intermediate phenotype to understand the link betwe...
Established approaches in imaging genetics and genome wide association studies (GWAS) such as univar...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Imaging genetics is an emerging methodology that combines genetic information with imaging-derived m...
This dissertation develops statistical and computational methods for human genetics. We considerprob...
Whereas Mendel used breeding experiments and painstakingly counted peas, modern biology increasingly...
As the extent of human genetic variation becomes more fully characterized, the research community is...
Biomedical sciences have seen radical growth in recent decades, inspired by a plethora of technologi...
A major milestone in modern biology was the complete sequencing of the human genome. But it produced...
Genomic malformations are believed to be the driving factors of many diseases. Therefore, understand...
Imaging genetics deals with relationships between genetic variation and imaging variables, often in ...
As the extent of human genetic variation becomes more fully characterized, the research community is...
In the field of neuroimaging genetics, brain images are used as phenotypes in the search for geneti...
We propose a non-parametric regression methodology, Random Forests on Distance Matrices (RFDM), for ...