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Optical projection tomography reconstruction with few views using highly-generalizable deep learning at sinogram domain

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posted on 2023-09-15, 09:06 authored by Peng Fei, Jiahao Sun, Fang Zhao, binbing liu, Lanxin Zhu
Optical projection tomography (OPT) reconstruction using a minimal number of measured views offers the potential to significantly reduce excitation dosage and greatly enhance temporal resolution in biomedical imaging. However, traditional algorithms for tomographic reconstruction exhibit severe quality degradation, e.g., presence of streak artifacts, when the number of views is reduced. In this study, we introduce a novel domain evaluation method which can evaluate the domain complexity, and thereby validate that the sinogram domain exhibits lower complexity as compared to the conventional spatial domain. Then we achieve robust deep-learning-based reconstruction with a feedback-based data initialization method at sinogram domain, which shows strong generalization ability that notably improves the overall performance for OPT image reconstruction. This learning-based approach, termed SinNet, enables 4-view OPT reconstructions of diverse biological samples with showing robust generalization ability. It surpasses the conventional OPT reconstruction approaches in terms of peak-signal-to-noise ratio (PSNR) and structural similarity (SSIM) metrics, showing its potentials for the augment of widely-used OPT techniques.

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Funder Name

National Key Research and Development Program of China (2022YFC3401102); National Natural Science Foundation of China (T2225014,21874052,21927802,61860206009)

Preprint ID

108216

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