Gene-gene and gene-environment interactions play an important role in the etiological pathway of many complex diseases. However, common statistical methods like regression models have problems to capture the complex interplay between genetic and non-genetic factors. Artificial neural networks provide a great flexibility to model functional relationships and thus are a promising statistical tool to handle the complexity of biological interactions. The aim of this thesis is to explore the ability of neural networks to capture different structures of gene-gene and gene-environment interactions and to identify gene-gene interactions in simulation studies. In addition, the consistency of the estimated weights is investigated for non-identified n...
The susceptibility of complex diseases are characterised by numerous genetic, lifestyle, and environ...
Objective: To model the potential interaction between previously identified biomarkers in children s...
Background Discovering causal genetic variants from large genetic association studies poses many dif...
Gene-gene and gene-environment interactions play an important role in the etiological pathway of man...
Gene-gene and gene-environment interactions play an important role in the etiological pathway of man...
Abstract. The identification of genes that influence the risk of common, complex diseases primarily ...
In this paper we provide a brief introduction to three computational methods involving non-linear ne...
Abstract During the past two decades, the field of human genetics has experienced an information exp...
This paper introduces a novel connectionist approach to neural network modelling that integrates dyn...
High-throughput technologies in biomedical sciences, including gene microarrays, supposed to revolut...
© Springer International Publishing AG 2017. In genetic epidemiology, epistasis has been the subject...
We present new results from Computational Neurogenetic Modeling to aid discoveries of complex gene i...
The complexity of phenotype-genotype mapping are characterised by non-linear interactions between ge...
The genetic basis of a complex trait often involves the function of multiple genetic factors, their ...
The identification of disease-related genes and disease mechanisms is an important research goal; ma...
The susceptibility of complex diseases are characterised by numerous genetic, lifestyle, and environ...
Objective: To model the potential interaction between previously identified biomarkers in children s...
Background Discovering causal genetic variants from large genetic association studies poses many dif...
Gene-gene and gene-environment interactions play an important role in the etiological pathway of man...
Gene-gene and gene-environment interactions play an important role in the etiological pathway of man...
Abstract. The identification of genes that influence the risk of common, complex diseases primarily ...
In this paper we provide a brief introduction to three computational methods involving non-linear ne...
Abstract During the past two decades, the field of human genetics has experienced an information exp...
This paper introduces a novel connectionist approach to neural network modelling that integrates dyn...
High-throughput technologies in biomedical sciences, including gene microarrays, supposed to revolut...
© Springer International Publishing AG 2017. In genetic epidemiology, epistasis has been the subject...
We present new results from Computational Neurogenetic Modeling to aid discoveries of complex gene i...
The complexity of phenotype-genotype mapping are characterised by non-linear interactions between ge...
The genetic basis of a complex trait often involves the function of multiple genetic factors, their ...
The identification of disease-related genes and disease mechanisms is an important research goal; ma...
The susceptibility of complex diseases are characterised by numerous genetic, lifestyle, and environ...
Objective: To model the potential interaction between previously identified biomarkers in children s...
Background Discovering causal genetic variants from large genetic association studies poses many dif...