Qi Hu,1 Martin Hailstone,1 Jingyu Wang,1 Matthew Wincott,1 Huriye Antilgan,1 Richard Parton,1 Danail Stoychev,1 Jacopo Antonello,1 Adam Packer,1 Martin Boothhttps://orcid.org/0000-0002-9525-89811
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Aberrations are a common problem in microscopes resulting in compromised imaging contrast and resolution. Adaptive optics (AO) can correct aberrations but requires either a wavefront sensor or a wavefront-sensorless AO method that requires multiple sample exposures.
We created a machine learning (ML) approach that embeds physical understanding of the imaging process into a sensorless AO method. This enables correction of aberrations with as few as two sample exposures. The method was translated across different microscope modalities. This includes two-photon microscopy and three-photon microscopy of in vivo mouse neural activity, showing robustness to specimen motion and activity related intensity variations.
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Qi Hu, Martin Hailstone, Jingyu Wang, Matthew Wincott, Huriye Antilgan, Richard Parton, Danail Stoychev, Jacopo Antonello, Adam Packer, Martin Booth, "A universal method for sensorless adaptive microscopy: a physics-embedded machine learning approach (Conference Presentation)," Proc. SPIE PC12388, Adaptive Optics and Wavefront Control for Biological Systems IX, PC1238802 (16 March 2023); https://doi.org/10.1117/12.2649347