peer reviewedAlgorithmic biases that favor majority populations pose a key challenge to the application of machine learning for precision medicine. Here, we assessed such bias in prediction models of behavioral phenotypes from brain functional magnetic resonance imaging. We examined the prediction bias using two independent datasets (preadolescent versus adult) of mixed ethnic/racial composition. When predictive models were trained on data dominated by white Americans (WA), out-of-sample prediction errors were generally higher for African Americans (AA) than for WA. This bias toward WA corresponds to more WA-like brain-behavior association patterns learned by the models. When models were trained on AA only, compared to training only on WA ...
It has been rightfully emphasized that the use of AI for clinical decision making could amplify heal...
Machine learning algorithms can sometimes exacerbate health disparities based on ethnicity, gender, ...
Machine learning models are built using training data, which is collected from human experience and ...
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...
Algorithmic biases that favor majority populations pose a key challenge to the application of machin...
While predictive models are expected to play a major role in personalized medicine approaches in the...
The development of connectome-based predictive models of behavioral phenotype has more recently open...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
Convolutional neural networks (CNNs) are increasingly being used to automate the segmentation of bra...
IntroductionThis meta-analysis investigated (1) whether ethnic minority and majority members have a ...
peer reviewedAn increasing number of studies have investigated the relationships between inter-indi...
Introduction This meta-analysis investigated (1) whether ethnic minority and majority members have a...
peer reviewedRelating individual brain patterns to behaviour is fundamental in system neuroscience. ...
It has been rightfully emphasized that the use of AI for clinical decision making could amplify heal...
Machine learning algorithms can sometimes exacerbate health disparities based on ethnicity, gender, ...
Machine learning models are built using training data, which is collected from human experience and ...
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...
Algorithmic biases that favor majority populations pose a key challenge to the application of machin...
While predictive models are expected to play a major role in personalized medicine approaches in the...
The development of connectome-based predictive models of behavioral phenotype has more recently open...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
Brain imaging research enjoys increasing adoption of supervised machine learning for single-particip...
Convolutional neural networks (CNNs) are increasingly being used to automate the segmentation of bra...
IntroductionThis meta-analysis investigated (1) whether ethnic minority and majority members have a ...
peer reviewedAn increasing number of studies have investigated the relationships between inter-indi...
Introduction This meta-analysis investigated (1) whether ethnic minority and majority members have a...
peer reviewedRelating individual brain patterns to behaviour is fundamental in system neuroscience. ...
It has been rightfully emphasized that the use of AI for clinical decision making could amplify heal...
Machine learning algorithms can sometimes exacerbate health disparities based on ethnicity, gender, ...
Machine learning models are built using training data, which is collected from human experience and ...