Classification-based framework for binarization on mice eye image in vivo with optical coherence tomography.
Fei MaCuixia DaiJing MengYing LiJingxiu ZhaoYuanke ZhangShengbo WangXueting ZhangRonghua ChengPublished in: Journal of biophotonics (2022)
Optical coherence tomography (OCT) angiography has drawn much attention in the medical imaging field. Binarization plays an important role in quantitative analysis of eye with optical coherence tomography. To address the problem of few training samples and contrast-limited scene, we proposed a new binarization framework with specific-patch SVM (SPSVM) for low-intensity OCT image, which is open and classification-based framework. This new framework contains two phases: training model and binarization threshold. In the training phase, firstly, the patches of target and background from few training samples are extracted as the ROI and the background, respectively. Then, PCA is conducted on all patches to reduce the dimension and learn the eigenvector subspace. Finally, the classification model is trained from the features of patches to get the target value of different patches. In the testing phase, the learned eigenvector subspace is conducted on the pixels of each patch. The binarization threshold of patch is obtained with the learned SVM model. We acquire a new OCT mice eye (OCT-ME) database, which is publicly available at https://mip2019.github.io/spsvm. Extensive experiments were performed to demonstrate the effectiveness of the proposed SPSVM framework.
Keyphrases
- optical coherence tomography
- deep learning
- diabetic retinopathy
- machine learning
- optic nerve
- virtual reality
- high resolution
- healthcare
- randomized controlled trial
- magnetic resonance
- systematic review
- minimally invasive
- type diabetes
- high fat diet induced
- metabolic syndrome
- computed tomography
- working memory
- mass spectrometry
- adipose tissue
- insulin resistance
- contrast enhanced