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Deep learning for accelerating Radon inversion in single-cells tomographic phase imaging flow cytometry

Academic Article
Publication Date:
2024
abstract:
Tomographic phase microscopy (TPM) in flow cytometry is an emerging imaging technology completely stain-free and able to provide unique 3D biophysical data. However, the required throughput for TPM would correspond to a very huge amount of volumetric data to be processed. To date, the most accurate Radon inversion algorithms for tomographic reconstructions are based on iterative methods aided by regularizations, thus providing high performance but at the cost of a demanding computation time. To balance the trade-off between reconstruction performance and reconstruction speed, learning-based approaches have been successfully introduced, thus demonstrating high accuracy in solving the Radon inversion problem. However, the complexity of the proposed models remains a bottleneck due to the high computational resources still required for the training phase. Here we show that, employing a multi-scale fully convolutional Context Aggregation Network (CAN) model, a significant speeding-up of the Radon inversion computation can be achieved. Compared to other conventional encoder-decoder networks such as U-Net, the proposed method has proven to be accurate, faster and particularly suitable for on-board processing. Moreover, we show the generalization capacity of CAN by training the network with simulated tomographic data and testing the learned model on experimental tomographic data
Iris type:
01.01 Articolo in rivista
Keywords:
Tomographic phase microscopy; digital holography; flow cytometry; deep learning
List of contributors:
Ferraro, Pietro; Miccio, Lisa; Memmolo, Pasquale; Bianco, Vittorio
Authors of the University:
BIANCO VITTORIO
FERRARO PIETRO
MEMMOLO PASQUALE
MICCIO LISA
Handle:
https://iris.cnr.it/handle/20.500.14243/452836
Published in:
OPTICS AND LASERS IN ENGINEERING
Journal
  • Overview

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URL

https://doi.org/10.1016/j.optlaseng.2023.107873
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