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...
Recently, deep learning has unlocked unprecedented success in various domains, especially using imag...
International audienceMany studies on machine learning (ML) for computer-aided diagnosis have so far...
Psychiatry currently lacks objective quantitative measures to guide the clinician in choosing the pr...
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...
Human ratings are abstract representations of segmentation quality. To approximate human quality rat...
Machine learning algorithms underpin modern diagnostic-aiding software, which has proved valuable in...
Big Data promises to advance science through data-driven discovery. However, many standard lab proto...
Objective: Deploying an automatic segmentation model in practice should require rigorous quality a...
PURPOSE To investigate and compare human judgment and machine learning tools for quality assessme...
Deep learning implementations using convolutional neural nets have recently demonstrated promise in ...
Recently, deep learning has unlocked unprecedented success in various domains, especially using imag...
International audienceMany studies on machine learning (ML) for computer-aided diagnosis have so far...
Psychiatry currently lacks objective quantitative measures to guide the clinician in choosing the pr...
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...
Human ratings are abstract representations of segmentation quality. To approximate human quality rat...
Machine learning algorithms underpin modern diagnostic-aiding software, which has proved valuable in...
Big Data promises to advance science through data-driven discovery. However, many standard lab proto...
Objective: Deploying an automatic segmentation model in practice should require rigorous quality a...
PURPOSE To investigate and compare human judgment and machine learning tools for quality assessme...
Deep learning implementations using convolutional neural nets have recently demonstrated promise in ...
Recently, deep learning has unlocked unprecedented success in various domains, especially using imag...
International audienceMany studies on machine learning (ML) for computer-aided diagnosis have so far...
Psychiatry currently lacks objective quantitative measures to guide the clinician in choosing the pr...