Deep learning-enhanced light-field imaging with continuous validation

被引:0
|
作者
Nils Wagner
Fynn Beuttenmueller
Nils Norlin
Jakob Gierten
Juan Carlos Boffi
Joachim Wittbrodt
Martin Weigert
Lars Hufnagel
Robert Prevedel
Anna Kreshuk
机构
[1] European Molecular Biology Laboratory,Cell Biology and Biophysics Unit
[2] Heidelberg University,Collaboration for joint PhD degree between EMBL and Heidelberg University, Faculty of Biosciences
[3] Lund University,Department of Experimental Medical Science
[4] Lund University,Lund Bioimaging Centre
[5] Heidelberg University,Centre for Organismal Studies
[6] University Hospital Heidelberg,Department of Pediatric Cardiology
[7] School of Life Sciences,Institute of Bioengineering
[8] EPFL,Developmental Biology Unit
[9] European Molecular Biology Laboratory,Molecular Medicine Partnership Unit (MMPU)
[10] Epigenetics and Neurobiology Unit,Department of Informatics
[11] European Molecular Biology Laboratory,undefined
[12] European Molecular Biology Laboratory,undefined
[13] Technical University of Munich,undefined
[14] Munich School for Data Science (MUDS),undefined
来源
Nature Methods | 2021年 / 18卷
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摘要
Visualizing dynamic processes over large, three-dimensional fields of view at high speed is essential for many applications in the life sciences. Light-field microscopy (LFM) has emerged as a tool for fast volumetric image acquisition, but its effective throughput and widespread use in biology has been hampered by a computationally demanding and artifact-prone image reconstruction process. Here, we present a framework for artificial intelligence–enhanced microscopy, integrating a hybrid light-field light-sheet microscope and deep learning–based volume reconstruction. In our approach, concomitantly acquired, high-resolution two-dimensional light-sheet images continuously serve as training data and validation for the convolutional neural network reconstructing the raw LFM data during extended volumetric time-lapse imaging experiments. Our network delivers high-quality three-dimensional reconstructions at video-rate throughput, which can be further refined based on the high-resolution light-sheet images. We demonstrate the capabilities of our approach by imaging medaka heart dynamics and zebrafish neural activity with volumetric imaging rates up to 100 Hz.
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页码:557 / 563
页数:6
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