The high throughput of data arising from the complete sequence of the human genome has left statistical geneticists with a rich and extensive information source. The wide availability of software and the increase in computing power has improved the possibilities to access and process such data. One problem is incompleteness of the data: unobserved or partially observed data points due to technical reasons or reasons associated with the patient's status or erroneous measurements of phenotype or genotype, to name a few. When not properly accounted for, these sources of incompleteness may seriously jeopardize the credibility of results from analyses. In this paper we provide some perspectives on the occurrence and analysis of different forms ...
International audienceTo test for association between a disease and a set of linked markers, or to e...
<div><p>Missing data are an unavoidable component of modern statistical genetics. Different array or...
In studies of complex diseases, a common paradigm is to conduct association analysis at markers in r...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
We consider the effect of informative missingness on association tests that use parental genotypes a...
Handling incomplete or missing data is a common aspect of modern statistical methods. In this thesis...
Handling incomplete or missing data is a common aspect of modern statistical methods. In this thesis...
The considerable data-handling requirements for genome wide association studies (GWAS) prohibit indi...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
<div><p>Missing data are an unavoidable component of modern statistical genetics. Different array or...
In studies of complex diseases, a common paradigm is to conduct association analysis at markers in r...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
The high throughput of data arising from the complete sequence of the human genome has left statisti...
We consider the effect of informative missingness on association tests that use parental genotypes a...
Handling incomplete or missing data is a common aspect of modern statistical methods. In this thesis...
Handling incomplete or missing data is a common aspect of modern statistical methods. In this thesis...
The considerable data-handling requirements for genome wide association studies (GWAS) prohibit indi...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
International audienceTo test for association between a disease and a set of linked markers, or to e...
<div><p>Missing data are an unavoidable component of modern statistical genetics. Different array or...
In studies of complex diseases, a common paradigm is to conduct association analysis at markers in r...