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  4. Convolutional neural network advances in demosaicing for fluorescent cancer imaging with color-near-infrared sensors.
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Convolutional neural network advances in demosaicing for fluorescent cancer imaging with color-near-infrared sensors.

Journal
Journal of Biomedical Optics
Date Issued
2024-07
Author(s)
Jin Y
Singhal S
Nie S
Gruev V
DOI
10.1117/1.jbo.29.7.076005
Abstract
Significance: Single-chip imaging devices featuring vertically stacked photodiodes and pixelated spectral filters are advancing multi-dye imaging methods for cancer surgeries, though this innovation comes with a compromise in spatial resolution. To mitigate this drawback, we developed a deep convolutional neural network (CNN) aimed at demosaicing the color and near-infrared (NIR) channels, with its performance validated on both pre-clinical and clinical datasets.

Aim: We introduce an optimized deep CNN designed for demosaicing both color and NIR images obtained using a hexachromatic imaging sensor.

Approach: A residual CNN was fine-tuned and trained on a dataset of color images and subsequently assessed on a series of dual-channel, color, and NIR images to demonstrate its enhanced performance compared with traditional bilinear interpolation.

Results: Our optimized CNN for demosaicing color and NIR images achieves a reduction in the mean square error by 37% for color and 40% for NIR, respectively, and enhances the structural dissimilarity index by 37% across both imaging modalities in pre-clinical data. In clinical datasets, the network improves the mean square error by 35% in color images and 42% in NIR images while enhancing the structural dissimilarity index by 39% in both imaging modalities.

Conclusions: We showcase enhancements in image resolution for both color and NIR modalities through the use of an optimized CNN tailored for a hexachromatic image sensor. With the ongoing advancements in graphics card computational power, our approach delivers significant improvements in resolution that are feasible for real-time execution in surgical environments.

Keywords: bioinspired sensors; cancer surgery; convolutional neural network; demosaicing; image-guided surgery; near-infrared imaging.
Subjects

bioinspired sensors

cancer surgery

convolutional neural ...

demosaicing

image-guided surgery

near-infrared imaging...

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