Experimentally unsupervised deconvolution for light-sheet microscopy with propagation-invariant beams.
Philip WijesingheStella CorsettiDarren J X ChowShuzo SakataKylie R DunningKishan DholakiaPublished in: Light, science & applications (2022)
Deconvolution is a challenging inverse problem, particularly in techniques that employ complex engineered point-spread functions, such as microscopy with propagation-invariant beams. Here, we present a deep-learning method for deconvolution that, in lieu of end-to-end training with ground truths, is trained using known physics of the imaging system. Specifically, we train a generative adversarial network with images generated with the known point-spread function of the system, and combine this with unpaired experimental data that preserve perceptual content. Our method rapidly and robustly deconvolves and super-resolves microscopy images, demonstrating a two-fold improvement in image contrast to conventional deconvolution methods. In contrast to common end-to-end networks that often require 1000-10,000s paired images, our method is experimentally unsupervised and can be trained solely on a few hundred regions of interest. We demonstrate its performance on light-sheet microscopy with propagation-invariant Airy beams in oocytes, preimplantation embryos and excised brain tissue, as well as illustrate its utility for Bessel-beam LSM. This method aims to democratise learned methods for deconvolution, as it does not require data acquisition outwith the conventional imaging protocol.
Keyphrases
- deep learning
- high resolution
- optical coherence tomography
- single molecule
- high speed
- convolutional neural network
- machine learning
- high throughput
- artificial intelligence
- magnetic resonance
- label free
- electronic health record
- randomized controlled trial
- mass spectrometry
- resistance training
- magnetic resonance imaging
- contrast enhanced
- multiple sclerosis
- brain injury
- working memory
- cerebral ischemia