4.7 Article

Speeding up reconstruction of 3D tomograms in holographic flow cytometry via deep learning

Journal

LAB ON A CHIP
Volume 22, Issue 4, Pages 793-804

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1lc01087e

Keywords

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Funding

  1. PRIN 2017, Morphological Biomarkers for early diagnosis in Oncology (MORFEO) [2017N7R2CJ]

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By introducing a multi-scale fully-convolutional context aggregation network, we have successfully accelerated the reconstruction of phase-contrast tomograms and achieved the goal of obtaining tomograms within a few seconds. Moreover, we have also developed a compact deep convolutional neural network parameterization that fits the low processing hardware resources of lab-on-chip devices.
Tomographic flow cytometry by digital holography is an emerging imaging modality capable of collecting multiple views of moving and rotating cells with the aim of recovering their refractive index distribution in 3D. Although this modality allows us to access high-resolution imaging with high-throughput, the huge amount of time-lapse holographic images to be processed (hundreds of digital holograms per cell) constitutes the actual bottleneck. This prevents the system from being suitable for lab-on-a-chip platforms in real-world applications, where fast analysis of measured data is mandatory. Here we demonstrate a significant speeding-up reconstruction of phase-contrast tomograms by introducing in the processing pipeline a multi-scale fully-convolutional context aggregation network. Although it was originally developed in the context of semantic image analysis, we demonstrate for the first time that it can be successfully adapted to a holographic lab-on-chip platform for achieving 3D tomograms through a faster computational process. We trained the network with input-output image pairs to reproduce the end-to-end holographic reconstruction process, i.e. recovering quantitative phase maps (QPMs) of single cells from their digital holograms. Then, the sequence of QPMs of the same rotating cell is used to perform the tomographic reconstruction. The proposed approach significantly reduces the computational time for retrieving tomograms, thus making them available in a few seconds instead of tens of minutes, while essentially preserving the high-content information of tomographic data. Moreover, we have accomplished a compact deep convolutional neural network parameterization that can fit into on-chip SRAM and a small memory footprint, thus demonstrating its possible exploitation to provide onboard computations for lab-on-chip devices with low processing hardware resources.

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