Emerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These records have great potential to be used for building clinical prediction models. However, a problem in using them is their high dimensionality. Since a lot of information may not be relevant for prediction, the underlying complexity of the prediction models may not be high. A popular way to deal with this problem is to employ feature selection. Lasso and l1-norm based feature selection methods have shown promising results. But, in presence of correlated features, these methods select features that change considerably with small changes in data. This prevents clinicians to obtain a stable feature set, which is crucial for clinical decision making. Grouping ...
We investigate feature stability in the context of clinical prognosis derived from high-dimensional ...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
Modern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently, these r...
AbstractModern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently,...
Selecting a set of features to include in a clinical prediction model is not always a simple task. T...
Abstract: The l1-norm regularization is commonly used when estimating (generalized) lin-ear models w...
Advances in high-throughput technologies and the increasing availability of large- scale patient ele...
To date, the instability of prognostic predictors in a sparse high dimensional model, which hinders ...
The stability matters in clinical prediction models because it makes the model to be interpretable a...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
In high-dimensional data, the performance of various classiers is largely dependent on the selection...
In high-dimensional data, the performance of various classifiers is largely dependent on the selecti...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
We investigate feature stability in the context of clinical prognosis derived from high-dimensional ...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
Modern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently, these r...
AbstractModern healthcare is getting reshaped by growing Electronic Medical Records (EMR). Recently,...
Selecting a set of features to include in a clinical prediction model is not always a simple task. T...
Abstract: The l1-norm regularization is commonly used when estimating (generalized) lin-ear models w...
Advances in high-throughput technologies and the increasing availability of large- scale patient ele...
To date, the instability of prognostic predictors in a sparse high dimensional model, which hinders ...
The stability matters in clinical prediction models because it makes the model to be interpretable a...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
In high-dimensional data, the performance of various classiers is largely dependent on the selection...
In high-dimensional data, the performance of various classifiers is largely dependent on the selecti...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
We investigate feature stability in the context of clinical prognosis derived from high-dimensional ...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...