2023
DOI: 10.1155/2023/3819587
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Segmentation of Dynamic Total-Body [18F]-FDG PET Images Using Unsupervised Clustering

Maria K. Jaakkola,
Maria Rantala,
Anna Jalo
et al.

Abstract: Clustering time activity curves of PET images have been used to separate clinically relevant areas of the brain or tumours. However, PET image segmentation in multiorgan level is much less studied due to the available total-body data being limited to animal studies. Now, the new PET scanners providing the opportunity to acquire total-body PET scans also from humans are becoming more common, which opens plenty of new clinically interesting opportunities. Therefore, organ-level segmentation of PET images has imp… Show more

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“…However, one should be careful about the positional mismatch between PET and CT images, especially in thoracic and abdominal organs where motion is present. To avoid this issue, Jaakkola et al [96] investigated unsupervised total-body 18 F-FDG PET image segmentation methods based purely on dynamic PET images. They combined k-means with two different preprocessing approaches: principal component analysis and independent component analysis.…”
Section: Tissue Segmentationmentioning
confidence: 99%
“…However, one should be careful about the positional mismatch between PET and CT images, especially in thoracic and abdominal organs where motion is present. To avoid this issue, Jaakkola et al [96] investigated unsupervised total-body 18 F-FDG PET image segmentation methods based purely on dynamic PET images. They combined k-means with two different preprocessing approaches: principal component analysis and independent component analysis.…”
Section: Tissue Segmentationmentioning
confidence: 99%