Publication | Open Access
High compression deep learning based single-pixel hyperspectral macroscopic fluorescence lifetime imaging in vivo
31
Citations
31
References
2020
Year
Convolutional Neural NetworkEngineeringBiomedical EngineeringTissue ImagingComputational ImagingBioimagingTranslational Molecular ImagingRadiation OncologyBiophysicsNovel Imaging MethodBiomedicineImagingBiophotonicsDeep LearningComputational Optical ImagingHigh CompressionOptical ImagingLifetime ReconstructionsBiomedical ImagingBiomedical PhotonicsSingle PixelMedicineCell Imaging
Single pixel imaging frameworks facilitate the acquisition of high-dimensional optical data in biological applications with photon starved conditions. However, they are still limited to slow acquisition times and low pixel resolution. Herein, we propose a convolutional neural network for fluorescence lifetime imaging with compressed sensing at high compression (NetFLICS-CR), which enables in vivo applications at enhanced resolution, acquisition and processing speeds, without the need for experimental training datasets. NetFLICS-CR produces intensity and lifetime reconstructions at 128 × 128 pixel resolution over 16 spectral channels while using only up to 1% of the required measurements, therefore reducing acquisition times from ∼2.5 hours at 50% compression to ∼3 minutes at 99% compression. Its potential is demonstrated in silico, in vitro and for mice in vivo through the monitoring of receptor-ligand interactions in liver and bladder and further imaging of intracellular delivery of the clinical drug Trastuzumab to HER2-positive breast tumor xenografts. The data acquisition time and resolution improvement through NetFLICS-CR, facilitate the translation of single pixel macroscopic flurorescence lifetime imaging (SP-MFLI) for in vivo monitoring of lifetime properties and drug uptake.
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