Gates joint locally connected network for accurate and robust reconstruction in optical molecular tomography

IF 2.3 3区 医学 Q2 OPTICS Journal of Innovative Optical Health Sciences Pub Date : 2023-11-04 DOI:10.1142/s179354582350027x
Minghua Zhao, Yahui Xiao, Jiaqi Zhang, Xin Cao, Lin Wang
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Abstract

Optical molecular tomography (OMT) is a potential pre-clinical molecular imaging technique with applications in a variety of biomedical areas, which can provide non-invasive quantitative three-dimensional (3D) information regarding tumor distribution in living animals. The construction of optical transmission models and the application of reconstruction algorithms in traditional model-based reconstruction processes have affected the reconstruction results, resulting in problems such as low accuracy, poor robustness, and long-time consumption. Here, a gates joint locally connected network (GLCN) method is proposed by establishing the mapping relationship between the inside source distribution and the photon density on surface directly, thus avoiding the extra time consumption caused by iteration and the reconstruction errors caused by model inaccuracy. Moreover, gates module was composed of the concatenation and multiplication operators of three different gates. It was embedded into the network aiming at remembering input surface photon density over a period and allowing the network to capture neurons connected to the true source selectively by controlling three different gates. To evaluate the performance of the proposed method, numerical simulations were conducted, whose results demonstrated good performance in terms of reconstruction positioning accuracy and robustness.
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用于光学分子层析成像精确和鲁棒重建的Gates联合局部连接网络
光学分子断层扫描(OMT)是一种潜在的临床前分子成像技术,应用于各种生物医学领域,可以提供活体动物肿瘤分布的非侵入性定量三维(3D)信息。传统的基于模型的重建过程中,由于光传输模型的构建和重建算法的应用,影响了重建结果,存在精度低、鲁棒性差、消耗时间长等问题。本文提出了一种栅极联合局部连接网络(GLCN)方法,通过直接建立内部源分布与表面光子密度之间的映射关系,避免了迭代带来的额外时间消耗和模型不准确带来的重建误差。此外,门模块由三个不同门的连接和乘法运算符组成。它被嵌入到网络中,目的是在一段时间内记住输入表面的光子密度,并允许网络通过控制三个不同的门来选择性地捕获连接到真正源的神经元。为了评价该方法的性能,进行了数值仿真,结果表明该方法在重建定位精度和鲁棒性方面具有良好的性能。
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来源期刊
Journal of Innovative Optical Health Sciences
Journal of Innovative Optical Health Sciences OPTICS-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
4.50
自引率
20.00%
发文量
69
审稿时长
>12 weeks
期刊介绍: JIOHS serves as an international forum for the publication of the latest developments in all areas of photonics in biology and medicine. JIOHS will consider for publication original papers in all disciplines of photonics in biology and medicine, including but not limited to: -Photonic therapeutics and diagnostics- Optical clinical technologies and systems- Tissue optics- Laser-tissue interaction and tissue engineering- Biomedical spectroscopy- Advanced microscopy and imaging- Nanobiophotonics and optical molecular imaging- Multimodal and hybrid biomedical imaging- Micro/nanofabrication- Medical microsystems- Optical coherence tomography- Photodynamic therapy. JIOHS provides a vehicle to help professionals, graduates, engineers, academics and researchers working in the field of intelligent photonics in biology and medicine to disseminate information on the state-of-the-art technique.
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