Enhancement of OCT en face images by unsupervised deep learning.
Zhuoqun YuanDi YangJingzhu ZhaoYanmei LiangPublished in: Physics in medicine and biology (2024)
The quality of optical coherence tomography (OCT) en face images is crucial for clinical visualization of early disease. As a three dimensional and coherent imaging, defocus and speckle noise are inevitable, which seriously affect evaluation of microstructure of bio-samples in OCT images. The deep learning has demonstrated great potential in OCT refocusing and denoising, but it is limited by the difficulty of sufficient paired training data. We proposed an unsupervised deep learning-based pipeline to enhance the quality of OCT en face images in this paper. The unregistered defocused conventional OCT images and focused speckle-free OCT images were collected by a home-made speckle modulating OCT system to construct the dataset. The image enhancement model was trained with the cycle training strategy. Finally, the speckle noise and defocus were both effectively improved. The experimental results on complex bio-samples indicated that the proposed method is effective and generalized in enhancing the quality of OCT en face images. The proposed unsupervised deep learning method helps to reduce the complexity of data construction, which is conducive to practical applications in OCT bio-sample imaging.
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Keyphrases
- optical coherence tomography
- deep learning
- convolutional neural network
- diabetic retinopathy
- machine learning
- artificial intelligence
- optic nerve
- big data
- high resolution
- multiple sclerosis
- electronic health record
- air pollution
- signaling pathway
- mass spectrometry
- body composition
- quality improvement
- data analysis
- fluorescence imaging