As very large studies of complex neuroimaging phenotypes become more common, human quality assessment of MRI-derived data remains one of the last major bottlenecks. Few attempts have so far been made to address this issue with machine learning. In this work, we optimize predictive models of quality for meshes representing deep brain structure shapes. We use standard vertex-wise and global shape features computed homologously across 19 cohorts and over 7500 human-rated subjects, training kernelized Support Vector Machine and Gradient Boosted Decision Trees classifiers to detect meshes of failing quality. Our models generalize across datasets and diseases, reducing human workload by 30-70%, or equivalently hundreds of human rater hours for da...
Large medical imaging data sets are becoming increasingly available. A common challenge in these dat...
Radiogenomics use non-invasively obtained imaging data, such as magnetic resonance imaging (MRI), to...
Brain morphometry from magnetic resonance imaging (MRI) is commonly used for estimating imaging biom...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
We present several deep learning models for assessing the morphometric fidelity of deep grey matter ...
International audiencePurpose While 3D MR spectroscopic imaging (MRSI) provides valuable spatial met...
International audienceMany studies on machine learning (ML) for computer-aided diagnosis have so far...
Despite the pervasive growth of deep neural networks in medical image analysis, methods to monitor a...
This report presents an overview of how machine learning is rapidly advancing clinical translational...
The last two decades have seen tremendous advances in our understanding of human brain structure and...
The need for bioinformatic methods is increasing due to the need to extract conclusions from high-th...
In recent years, Alzheimer’s disease (AD) diagnosis using neuroimaging and deep learning has drawn g...
Large medical imaging data sets are becoming increasingly available. A common challenge in these dat...
Radiogenomics use non-invasively obtained imaging data, such as magnetic resonance imaging (MRI), to...
Brain morphometry from magnetic resonance imaging (MRI) is commonly used for estimating imaging biom...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
As very large studies of complex neuroimaging phenotypes become more common, human quality assessmen...
We present several deep learning models for assessing the morphometric fidelity of deep grey matter ...
International audiencePurpose While 3D MR spectroscopic imaging (MRSI) provides valuable spatial met...
International audienceMany studies on machine learning (ML) for computer-aided diagnosis have so far...
Despite the pervasive growth of deep neural networks in medical image analysis, methods to monitor a...
This report presents an overview of how machine learning is rapidly advancing clinical translational...
The last two decades have seen tremendous advances in our understanding of human brain structure and...
The need for bioinformatic methods is increasing due to the need to extract conclusions from high-th...
In recent years, Alzheimer’s disease (AD) diagnosis using neuroimaging and deep learning has drawn g...
Large medical imaging data sets are becoming increasingly available. A common challenge in these dat...
Radiogenomics use non-invasively obtained imaging data, such as magnetic resonance imaging (MRI), to...
Brain morphometry from magnetic resonance imaging (MRI) is commonly used for estimating imaging biom...