Segmentation of anatomical layers and imaging artifacts in intravascular polarization sensitive optical coherence tomography using attending physician and boundary cardinality losses.
Mohammad Haft-JavaherianMartin VilligerKenichiro OtsukaJoost DaemenPeter LibbyPolina GollandBrett E BoumaPublished in: Biomedical optics express (2024)
Intravascular ultrasound and optical coherence tomography are widely available for assessing coronary stenoses and provide critical information to optimize percutaneous coronary intervention. Intravascular polarization-sensitive optical coherence tomography (PS-OCT) measures the polarization state of the light scattered by the vessel wall in addition to conventional cross-sectional images of subsurface microstructure. This affords reconstruction of tissue polarization properties and reveals improved contrast between the layers of the vessel wall along with insight into collagen and smooth muscle content. Here, we propose a convolutional neural network model, optimized using two new loss terms (Boundary Cardinality and Attending Physician), that takes advantage of the additional polarization contrast and classifies the lumen, intima, and media layers in addition to guidewire and plaque shadows. Our model segments the media boundaries through fibrotic plaques and continues to estimate the outer media boundary behind shadows of lipid-rich plaques. We demonstrate that our multi-class classification model outperforms existing methods that exclusively use conventional OCT data, predominantly segment the lumen, and consider subsurface layers at most in regions of minimal disease. Segmentation of all anatomical layers throughout diseased vessels may facilitate stent sizing and will enable automated characterization of plaque polarization properties for investigation of the natural history and significance of coronary atheromas.
Keyphrases
- optical coherence tomography
- convolutional neural network
- deep learning
- coronary artery
- coronary artery disease
- smooth muscle
- diabetic retinopathy
- percutaneous coronary intervention
- machine learning
- emergency department
- cross sectional
- solar cells
- primary care
- magnetic resonance imaging
- magnetic resonance
- artificial intelligence
- cardiovascular disease
- healthcare
- antiplatelet therapy
- heart failure
- white matter
- type diabetes
- st elevation myocardial infarction
- ultrasound guided
- st segment elevation myocardial infarction
- multiple sclerosis
- aortic stenosis
- wound healing
- fluorescence imaging