Multihead Attention U‐Net for Magnetic Particle Imaging–Computed Tomography Image Segmentation

dc.contributor.authorAniwat Juhong
dc.contributor.authorBo Li
dc.contributor.authorYifan Liu
dc.contributor.authorChia‐Wei Yang
dc.contributor.authorCheng‐You Yao
dc.contributor.authorDalen Agnew
dc.contributor.authorYu L. Lei
dc.contributor.authorGary D. Luker
dc.contributor.authorHarvey L. Bumpers
dc.contributor.authorXuefei Huang
dc.contributor.authorWibool Piyawattanametha
dc.contributor.authorZhen Qiu
dc.date.accessioned2026-05-08T19:18:04Z
dc.date.issued2024-9-9
dc.description.abstractMagnetic particle imaging (MPI) is an emerging noninvasive molecular imaging modality with high sensitivity and specificity, exceptional linear quantitative ability, and potential for successful applications in clinical settings. Computed tomography (CT) is typically combined with the MPI image to obtain more anatomical information. Herein, a deep learning‐based approach for MPI‐CT image segmentation is presented. The dataset utilized in training the proposed deep learning model is obtained from a transgenic mouse model of breast cancer following administration of indocyanine green (ICG)‐conjugated superparamagnetic iron oxide nanoworms (NWs‐ICG) as the tracer. The NWs‐ICG particles progressively accumulate in tumors due to the enhanced permeability and retention (EPR) effect. The proposed deep learning model exploits the advantages of the multihead attention mechanism and the U‐Net model to perform segmentation on the MPI‐CT images, showing superb results. In addition, the model is characterized with a different number of attention heads to explore the optimal number for our custom MPI‐CT dataset.
dc.identifier.doi10.1002/aisy.202400007
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/16329
dc.publisherAdvanced Intelligent Systems
dc.subjectCharacterization and Applications of Magnetic Nanoparticles
dc.subjectGeomagnetism and Paleomagnetism Studies
dc.subjectMicrofluidic and Bio-sensing Technologies
dc.titleMultihead Attention U‐Net for Magnetic Particle Imaging–Computed Tomography Image Segmentation
dc.typeArticle

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