We propose a method to combine several predictors (markers) that are measured repeatedly over time into a composite marker score without assuming a model and only requiring a mild condition on the predictor distribution. Assuming that the first and second moments of the predictors can be decomposed into a time and a marker component via a Kronecker product structure that accommodates the longitudinal nature of the predictors, we develop first-moment sufficient dimension reduction techniques to replace the original markers with linear transformations that contain sufficient information for the regression of the predictors on the outcome. These linear combinations can then be combined into a score that has better predictive performance than a...
<p>(A) Scheme of the prediction power analysis. Residues mutated in CFTR disease cases are shown in ...
Consider a continuous marker for predicting a binary outcome. For example, serum concentration of pr...
We compare simple logistic regression with an alternative robust procedure for constructing linear p...
Motivated by a study conducted to evaluate the associations of 51 inflammatory markers and lung canc...
No single biomarker for cancer is considered adequately sensitive and specific for cancer screening....
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
A widely held viewpoint in the field of predictive biomarkers for disease holds that no single marke...
Most sufficient dimension reduction methods hinge on the existence of finite moments of the predicto...
Continuous predictors are routinely encountered when developing a prognostic model. Investigators, w...
This review article addresses the ROC curve and its advantage over the odds ratio to measure the ass...
When developing prediction models for application in clinical practice, health practitioners usuall...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Gower and Blasius (Quality and Quantity, 39, 2005) proposed the notion of multivariate predictabilit...
Dimension reduction for regression is a prominent issue today because technological advances now all...
<p>(A) Scheme of the prediction power analysis. Residues mutated in CFTR disease cases are shown in ...
Consider a continuous marker for predicting a binary outcome. For example, serum concentration of pr...
We compare simple logistic regression with an alternative robust procedure for constructing linear p...
Motivated by a study conducted to evaluate the associations of 51 inflammatory markers and lung canc...
No single biomarker for cancer is considered adequately sensitive and specific for cancer screening....
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
A widely held viewpoint in the field of predictive biomarkers for disease holds that no single marke...
Most sufficient dimension reduction methods hinge on the existence of finite moments of the predicto...
Continuous predictors are routinely encountered when developing a prognostic model. Investigators, w...
This review article addresses the ROC curve and its advantage over the odds ratio to measure the ass...
When developing prediction models for application in clinical practice, health practitioners usuall...
textabstractThe performance of prediction models can be assessed using a variety of methods and metr...
The performance of prediction models can be assessed using a variety of methods and metrics. Traditi...
Gower and Blasius (Quality and Quantity, 39, 2005) proposed the notion of multivariate predictabilit...
Dimension reduction for regression is a prominent issue today because technological advances now all...
<p>(A) Scheme of the prediction power analysis. Residues mutated in CFTR disease cases are shown in ...
Consider a continuous marker for predicting a binary outcome. For example, serum concentration of pr...
We compare simple logistic regression with an alternative robust procedure for constructing linear p...