Live cell imaging of cellular dynamics in poplar wood using computational cannula microscopy

This study presents significant advancements in computational cannula microscopy for live imaging of cellular dynamics in poplar wood tissues. Leveraging machine-learning models such as pix2pix for image reconstruction, we achieved high-resolution imaging with a field of view of using a -core diamet...

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Veröffentlicht in:Applied optics (2004) 2024-10, Vol.63 (28), p.G47
Hauptverfasser: Ingold, Alexander, Mishra, Gayatri, Sorenson, Reed, Groover, Andrew, Sieburth, Leslie, Menon, Rajesh
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Sprache:eng
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Zusammenfassung:This study presents significant advancements in computational cannula microscopy for live imaging of cellular dynamics in poplar wood tissues. Leveraging machine-learning models such as pix2pix for image reconstruction, we achieved high-resolution imaging with a field of view of using a -core diameter probe. Our method allows for real-time image reconstruction at 0.29 s per frame with a mean absolute error of 0.07. We successfully captured cellular-level dynamics in vivo , demonstrating morphological changes at resolutions as small as . We implemented two types of probabilistic neural network models to quantify confidence levels in the reconstructed images. This approach facilitates context-aware, human-in-the-loop analysis, which is crucial for in vivo imaging where ground-truth data is unavailable. Using this approach we demonstrated deep in vivo computational imaging of living plant tissue with high confidence (disagreement score ). This work addresses the challenges of imaging live plant tissues, offering a practical and minimally invasive tool for plant biologists.
ISSN:1559-128X
2155-3165
DOI:10.1364/AO.523456