Computational adaptive holographic fluorescence microscopy based on the stochastic parallel gradient descent algorithm.
Wenxue ZhangTianlong ManMinghua ZhangLu ZhangYuhong WanPublished in: Biomedical optics express (2022)
Optical aberrations introduced by sample or system elements usually degrade the image quality of a microscopic imaging system. Computational adaptive optics has unique advantages for 3D biological imaging since neither bulky wavefront sensors nor complicated indirect wavefront sensing procedures are required. In this paper, a stochastic parallel gradient descent computational adaptive optics method is proposed for high-efficiency aberration correction in the fluorescent incoherent digital holographic microscope. The proposed algorithm possesses the advantage of parallelly estimating various aberrations with fast convergence during the iteration; thus, the wavefront aberration is corrected quickly, and the original object image is retrieved accurately. Owing to its high-efficiency adaptive optimization, the proposed method exhibits better performances for a 3D sample with complex and anisotropic optical aberration. The proposed method can be a powerful tool for the visualization of dynamic events that happen inside cells or thick tissues.
Keyphrases
- high efficiency
- high resolution
- image quality
- deep learning
- high speed
- machine learning
- single molecule
- copy number
- induced apoptosis
- computed tomography
- mass spectrometry
- gene expression
- cell cycle arrest
- working memory
- quantum dots
- magnetic resonance imaging
- fluorescence imaging
- cell proliferation
- dual energy
- diffusion weighted imaging
- label free
- neural network
- photodynamic therapy
- low cost