In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that interact in a nonlinear fashion in their association with disease. Identifying such genomic interactions is important for elucidating the inheritance of complex phenotypes and diseases. In this paper, we introduce a new computational method called Informative Bayesian Model Selection (IBMS) that leverages correlation among variants in GWA data due to the linkage disequilibrium to identify interactions accurately in a computationally efficient manner. IBMS combines several statistical methods including canonical correlation analysis, logistic regression analysis, and a Bayesians statistical measure of evaluating interactions. Compared to BOOST and ...
<div><p>The increasing quantity and quality of functional genomic information motivate the assessmen...
iAbstract In genome-wide association studies (GWAS), researchers analyze the genetic variation acros...
<div><p>The prevailing method of analyzing GWAS data is still to test each marker individually, alth...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
I consider a well-known problem in the field of statistical genetics called a genome-wide associatio...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
Background\ud Identifying genetic interactions in data obtained from genome-wide association studies...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
<div><p>Background</p><p>The problems of correlation and classification are long-standing in the fie...
Background: Identifying genetic interactions in data obtained from genome-wide association studies (...
The recent successes of genome-wide association studies (GWAS) have revealed that many of the replic...
Recent technological advances and remarkable successes have led to genome-wide association studies (...
The increasing quantity and quality of functional genomic information motivate the assessment and in...
<div><p>The increasing quantity and quality of functional genomic information motivate the assessmen...
iAbstract In genome-wide association studies (GWAS), researchers analyze the genetic variation acros...
<div><p>The prevailing method of analyzing GWAS data is still to test each marker individually, alth...
In high-dimensional genome-wide (GWA) data, a key challenge is to detect genomic variants that inter...
I consider a well-known problem in the field of statistical genetics called a genome-wide associatio...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
Background\ud Identifying genetic interactions in data obtained from genome-wide association studies...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
Background\ud \ud The problems of correlation and classification are long-standing in the fields of ...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
<div><p>Background</p><p>The problems of correlation and classification are long-standing in the fie...
Background: Identifying genetic interactions in data obtained from genome-wide association studies (...
The recent successes of genome-wide association studies (GWAS) have revealed that many of the replic...
Recent technological advances and remarkable successes have led to genome-wide association studies (...
The increasing quantity and quality of functional genomic information motivate the assessment and in...
<div><p>The increasing quantity and quality of functional genomic information motivate the assessmen...
iAbstract In genome-wide association studies (GWAS), researchers analyze the genetic variation acros...
<div><p>The prevailing method of analyzing GWAS data is still to test each marker individually, alth...