The growing role of targeted medicine has led to an increased focus on the development of actionable biomarkers. Current penalized selection methods that are used to identify biomarker panels for classification in high-dimensional data, however, often result in highly complex panels that need careful pruning for practical use. In the framework of regularization methods, a penalty that is a weighted sum of the L1 and L0 norm has been proposed to account for the complexity of the resulting model. In practice, the limitation of this penalty is that the objective function is non-convex, non-smooth, the optimization is computationally intensive and the application to high-dimensional settings is challenging. In this paper, we propose a stepwise ...
BioMark is an R package implementing two meta-strategies for finding biomarkers. For two-class discr...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
The growing role of targeted medicine has led to an increased focus on the development of actionable...
Advances in high-throughput technologies in genomics and imaging yield unprecedentedly large numbers...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
This work presents a novel feature selection method for classication of high dimensional data, such ...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
Various forms of penalty functions have been developed for regularized estimation and variable selec...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
With the genomic revolution and the new era of precision medicine, the identification of biomarkers ...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
BioMark is an R package implementing two meta-strategies for finding biomarkers. For two-class discr...
BioMark is an R package implementing two meta-strategies for finding biomarkers. For two-class discr...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...
The growing role of targeted medicine has led to an increased focus on the development of actionable...
Advances in high-throughput technologies in genomics and imaging yield unprecedentedly large numbers...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
In this cumulative thesis we discuss topics in the area of biomarker selection and cutoff estimation...
This work presents a novel feature selection method for classication of high dimensional data, such ...
High-dimensional data applications often entail the use of various statistical and machine-learning ...
Various forms of penalty functions have been developed for regularized estimation and variable selec...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
With the genomic revolution and the new era of precision medicine, the identification of biomarkers ...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
BioMark is an R package implementing two meta-strategies for finding biomarkers. For two-class discr...
BioMark is an R package implementing two meta-strategies for finding biomarkers. For two-class discr...
The partial area under the receiver operating characteristic curve (PAUC) is a well-established perf...
AbstractIn this paper, the problem of variable selection in classification is considered. On the bas...