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Cerebral blood flow measurements with 15O-water PET using a non-invasive machine-learning-derived arterial input function
2021
Journal of Cerebral Blood Flow and Metabolism
Cerebral blood flow (CBF) can be measured with dynamic positron emission tomography (PET) of 15O-labeled water by using tracer kinetic modelling. However, for quantification of regional CBF, an arterial input function (AIF), obtained from arterial blood sampling, is required. In this work we evaluated a novel, non-invasive approach for input function prediction based on machine learning (MLIF), against AIF for CBF PET measurements in human subjects. Twenty-five subjects underwent two 10 min
doi:10.1177/0271678x21991393
fatcat:n665d3fvbrhozn37wxaw3epzxu