Weakly supervised classification of aortic valve malformations using unlabeled cardiac MRI sequences.
Jason A FriesParoma VarmaVincent S ChenKe XiaoHeliodoro TejedaPriyanka SahaJared DunnmonHenry ChubbShiraz MaskatiaMadalina FiterauScott DelpEuan A AshleyChristopher RéJames R PriestPublished in: Nature communications (2019)
Biomedical repositories such as the UK Biobank provide increasing access to prospectively collected cardiac imaging, however these data are unlabeled, which creates barriers to their use in supervised machine learning. We develop a weakly supervised deep learning model for classification of aortic valve malformations using up to 4,000 unlabeled cardiac MRI sequences. Instead of requiring highly curated training data, weak supervision relies on noisy heuristics defined by domain experts to programmatically generate large-scale, imperfect training labels. For aortic valve classification, models trained with imperfect labels substantially outperform a supervised model trained on hand-labeled MRIs. In an orthogonal validation experiment using health outcomes data, our model identifies individuals with a 1.8-fold increase in risk of a major adverse cardiac event. This work formalizes a deep learning baseline for aortic valve classification and outlines a general strategy for using weak supervision to train machine learning models using unlabeled medical images at scale.
Keyphrases
- aortic valve
- machine learning
- deep learning
- big data
- transcatheter aortic valve replacement
- artificial intelligence
- transcatheter aortic valve implantation
- aortic valve replacement
- aortic stenosis
- left ventricular
- convolutional neural network
- electronic health record
- contrast enhanced
- healthcare
- high resolution
- emergency department
- diffusion weighted imaging
- gene expression
- resistance training
- dna methylation
- high speed
- data analysis
- atrial fibrillation
- optical coherence tomography
- fluorescence imaging
- computed tomography