International audienceBackground : With increasing data sizes and more easily available computational methods, neurosciences rely more and more on predictive modeling with machine learning, e.g., to extract disease biomarkers. Yet, a successful prediction may capture a confounding effect correlated with the outcome instead of brain features specific to the outcome of interest. For instance, because patients tend to move more in the scanner than controls, imaging biomarkers of a disease condition may mostly reflect head motion, leading to inefficient use of resources and wrong interpretation of the biomarkers. Results : Here we study how to adapt statistical methods that control for confounds to predictive modeling settings. We review how to...
In many application areas, predictive models are used to support or make important decisions. There ...
In many application areas, predictive models are used to support or make important decisions. There ...
BackgroundMachine learning (ML) approaches are a crucial component of modern data analysis in many f...
International audienceBackground : With increasing data sizes and more easily available computationa...
Dealing with confounds is an essential step in large cohort studies to address problems such as unex...
Over the years, there has been growing interest in using Machine Learning techniques for biomedical ...
International audiencePredictive models applied on brain images can extract imaging biomarkers of pa...
Over the past decade, multivariate “decoding analyses” have become a popular alternative to traditio...
Machine learning (ML) methods are increasingly being used to predict pathologies and biological trai...
Understanding structural changes in the brain that are caused by a particular disease is a major goa...
peer reviewedThe use of Convolutional Neural Networks (CNN) in medical imaging has often outperforme...
This dissertation discusses how predictive models are being used for scientific inquiry. Statistical...
International audienceThe last decades saw dramatic progress in brain research. These advances were ...
IntroductionCarrying out a randomized controlled trial to estimate the causal effects of regional br...
Introduction: Denoising functional magnetic resonance imaging (fMRI) data amounts to extracting the ...
In many application areas, predictive models are used to support or make important decisions. There ...
In many application areas, predictive models are used to support or make important decisions. There ...
BackgroundMachine learning (ML) approaches are a crucial component of modern data analysis in many f...
International audienceBackground : With increasing data sizes and more easily available computationa...
Dealing with confounds is an essential step in large cohort studies to address problems such as unex...
Over the years, there has been growing interest in using Machine Learning techniques for biomedical ...
International audiencePredictive models applied on brain images can extract imaging biomarkers of pa...
Over the past decade, multivariate “decoding analyses” have become a popular alternative to traditio...
Machine learning (ML) methods are increasingly being used to predict pathologies and biological trai...
Understanding structural changes in the brain that are caused by a particular disease is a major goa...
peer reviewedThe use of Convolutional Neural Networks (CNN) in medical imaging has often outperforme...
This dissertation discusses how predictive models are being used for scientific inquiry. Statistical...
International audienceThe last decades saw dramatic progress in brain research. These advances were ...
IntroductionCarrying out a randomized controlled trial to estimate the causal effects of regional br...
Introduction: Denoising functional magnetic resonance imaging (fMRI) data amounts to extracting the ...
In many application areas, predictive models are used to support or make important decisions. There ...
In many application areas, predictive models are used to support or make important decisions. There ...
BackgroundMachine learning (ML) approaches are a crucial component of modern data analysis in many f...