Recurrent and convolutional neural networks for sequential multispectral optoacoustic tomography (<scp>MSOT</scp>) imaging

dc.contributor.authorAniwat Juhong
dc.contributor.authorBo Li
dc.contributor.authorYifan Liu
dc.contributor.authorCheng_You Yao
dc.contributor.authorChia_Wei Yang
dc.contributor.authorDalen W. Agnew
dc.contributor.authorYu Leo Lei
dc.contributor.authorGary D. Luker
dc.contributor.authorHarvey Bumpers
dc.contributor.authorXuefei Huang
dc.contributor.authorWibool Piyawattanametha
dc.contributor.authorZhen Qiu
dc.date.accessioned2025-07-21T06:09:33Z
dc.date.issued2023-06-29
dc.description.abstractMultispectral optoacoustic tomography (MSOT) is a beneficial technique for diagnosing and analyzing biological samples since it provides meticulous details in anatomy and physiology. However, acquiring high through-plane resolution volumetric MSOT is time-consuming. Here, we propose a deep learning model based on hybrid recurrent and convolutional neural networks to generate sequential cross-sectional images for an MSOT system. This system provides three modalities (MSOT, ultrasound, and optoacoustic imaging of a specific exogenous contrast agent) in a single scan. This study used ICG-conjugated nanoworms particles (NWs-ICG) as the contrast agent. Instead of acquiring seven images with a step size of 0.1 mm, we can receive two images with a step size of 0.6 mm as input for the proposed deep learning model. The deep learning model can generate five other images with a step size of 0.1 mm between these two input images meaning we can reduce acquisition time by approximately 71%.
dc.identifier.doi10.1002/jbio.202300142
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/12617
dc.subjectOptoacoustic imaging
dc.subject.classificationPhotoacoustic and Ultrasonic Imaging
dc.titleRecurrent and convolutional neural networks for sequential multispectral optoacoustic tomography (<scp>MSOT</scp>) imaging
dc.typeArticle

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