Accurate quantification of cerebral blood flow (CBF) is essential for the
diagnosis and assessment of a wide range of neurological diseases. Positron
emission tomography (PET) with radiolabeled water (15O-water) is considered the
gold-standard for the measurement of CBF in humans. PET imaging, however, is
not widely available because of its prohibitive costs and use of short-lived
radiopharmaceutical tracers that typically require onsite cyclotron production.
Magnetic resonance imaging (MRI), in contrast, is more readily accessible and
does not involve ionizing radiation. This study presents a convolutional
encoder-decoder network with attention mechanisms to predict gold-standard
15O-water PET CBF from multi-sequence MRI scans, thereby eliminating the need
for radioactive tracers. Inputs to the prediction model include several
commonly used MRI sequences (T1-weighted, T2-FLAIR, and arterial spin
labeling). The model was trained and validated using 5-fold cross-validation in
a group of 126 subjects consisting of healthy controls and cerebrovascular
disease patients, all of whom underwent simultaneous 15O−waterPET/MRI.Theresultsshowthatsuchamodelcansuccessfullysynthesizehigh−qualityPETCBFmeasurements(withanaverageSSIMof0.924andPSNRof38.8dB)andismoreaccuratecomparedtoconcurrentandpreviousPETsynthesismethods.WealsodemonstratetheclinicalsignificanceoftheproposedalgorithmbyevaluatingtheagreementforidentifyingthevascularterritorieswithabnormallylowCBF.SuchmethodsmayenablemorewidespreadandaccurateCBFevaluationinlargercohortswhocannotundergoPETimagingduetoradiationconcerns,lackofaccess,orlogisticchallenges.