A1 Refereed original research article in a scientific journal
Quantitative evaluation of unsupervised clustering algorithms for dynamic total-body PET image analysis
Authors: Rainio, Oona; Jaakkola, Maria K.; Klén, Riku
Publisher: Informa UK Limited
Publication year: 2025
Journal: Journal of Medical Engineering and Technology
Journal name in source: Journal of Medical Engineering & Technology
Journal acronym: J Med Eng Technol
ISSN: 0309-1902
eISSN: 1464-522X
DOI: https://doi.org/10.1080/03091902.2025.2466834(external)
Web address : https://doi.org/10.1080/03091902.2025.2466834(external)
Background
Recently, dynamic total-body positron emission tomography (PET) imaging has become possible due to new scanner devices. However, there is still little research systematically evaluating clustering algorithms for processing of dynamic total-body PET images.
Materials and methodsHere, we compare the performance of 15 unsupervised clustering methods, including K-means either by itself or after principal component analysis (PCA) or independent component analysis (ICA), Gaussian mixture model (GMM), fuzzy c-means (FCM), agglomerative clustering, spectral clustering, and several newer clustering algorithms, for classifying time activity curves (TACs) in dynamic PET images. We use dynamic total-body 15O-water PET images of 30 patients. To evaluate the clustering algorithms in a quantitative way, we use them to classify 5000 TACs from each image based on whether the curve is taken from brain, right heart ventricle, right kidney, lower right lung lobe, or urinary bladder.
ResultsAccording to our results, the best methods are GMM, FCM, and ICA combined with mini batch K-means, which classified the TACs with a median accuracies of 89%, 83%, and 81%, respectively, in a processing time of half a second or less.
ConclusionGMM, FCM, and ICA with mini batch K-means show promise for dynamic total-body PET analysis.
Funding information in the publication:
The data used in the research was collected and processed in addition to the authors by Juhani Knuuti, Antti Saraste, Juha Rinne, Lauri Nummenmaa, Teemu Maaniitty, Hidehiro Iida, Vesa Oikonen, Sergey Nesterov, Jarmo Teuho, Henri Kärpijoki, Jouni Tuisku, Sarah Bär, Louhi Heli, and Reetta Siekkinen as part of the KOVERI project funded by Finnish Cardiovascular Foundation, State research funding, Finnish Cultural Foundation, and Research Council of Finland.