Brain imaging research enjoys increasing adoption of supervised machine learning for single-participant disease classification. Yet, the success of these algorithms likely depends on population diversity, including demographic differences and other factors that may be outside of primary scientific interest. Here, we capitalize on propensity scores as a composite confound index to quantify diversity due to major sources of population variation. We delineate the impact of population heterogeneity on the predictive accuracy and pattern stability in 2 separate clinical cohorts: the Autism Brain Imaging Data Exchange (ABIDE, n = 297) and the Healthy Brain Network (HBN, n = 551). Across various analysis scenarios, our results uncover the extent t...
International audienceResting-state functional Magnetic Resonance Imaging (R-fMRI) holds the promise...
Despite its central role in revealing the neurobiological mechanisms of behavior, neuroimaging resea...
Background: Autism spectrum disorder (ASD) affects the brain connectivity at different levels. Nonet...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
In a recent review, it was suggested that much larger cohorts are needed to prove the diagnostic val...
peer reviewedAlgorithmic biases that favor majority populations pose a key challenge to the applica...
Modern neuroimaging techniques allow us to investigate the brain in vivo and in high resolution, pro...
Neuroimaging allows for the non-invasive study of the brain in rich detail. Data-driven discovery of...
Algorithmic biases that favor majority populations pose a key challenge to the application of machin...
Machine learning (ML) plays an important role in precision medicine. However, algorithmic biases tha...
Autism Spectrum Disorder (ASD) is a heterogeneous condition that affects individuals with various ...
The analysis of brain-imaging data requires complex processing pipelines to support findings on brai...
International audienceResting-state functional Magnetic Resonance Imaging (R-fMRI) holds the promise...
Despite its central role in revealing the neurobiological mechanisms of behavior, neuroimaging resea...
Background: Autism spectrum disorder (ASD) affects the brain connectivity at different levels. Nonet...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
In a recent review, it was suggested that much larger cohorts are needed to prove the diagnostic val...
peer reviewedAlgorithmic biases that favor majority populations pose a key challenge to the applica...
Modern neuroimaging techniques allow us to investigate the brain in vivo and in high resolution, pro...
Neuroimaging allows for the non-invasive study of the brain in rich detail. Data-driven discovery of...
Algorithmic biases that favor majority populations pose a key challenge to the application of machin...
Machine learning (ML) plays an important role in precision medicine. However, algorithmic biases tha...
Autism Spectrum Disorder (ASD) is a heterogeneous condition that affects individuals with various ...
The analysis of brain-imaging data requires complex processing pipelines to support findings on brai...
International audienceResting-state functional Magnetic Resonance Imaging (R-fMRI) holds the promise...
Despite its central role in revealing the neurobiological mechanisms of behavior, neuroimaging resea...
Background: Autism spectrum disorder (ASD) affects the brain connectivity at different levels. Nonet...