Detecting CTP truncation artifacts in acute stroke imaging from the arterial input and the vascular output functions.

PloS one(2023)

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摘要
Machine learning models fed with AIF and VOF features accurately detected unreliable stroke lesion measurements due to insufficient acquisition duration. The AIFcoverage was the most predictive feature of truncation and identified unreliable short scans almost as good as machine learning. We conclude that AIF/VOF based classifiers are more accurate than the scans' duration for detecting truncation. These methods could be transferred to perfusion analysis software in order to increase the interpretability of CTP outputs.
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关键词
ctp truncation artifacts,acute stroke,vascular output functions,arterial input
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