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Probability maps classify ischemic stroke regions more accurately than CT perfusion summary maps

Authors :
Daan Peerlings
Fasco van Ommen
Edwin Bennink
Jan W. Dankbaar
Birgitta K. Velthuis
Bart J. Emmer
Jan W. Hoving
Charles B. L. M. Majoie
Henk A. Marquering
Hugo W. A. M. de Jong
Radiology and nuclear medicine
ACS - Atherosclerosis & ischemic syndromes
Biomedical Engineering and Physics
Radiology and Nuclear Medicine
ANS - Neurovascular Disorders
Graduate School
ANS - Brain Imaging
ACS - Microcirculation
Source :
European Radiology, 32(9), 6367-6375. Springer Verlag, Peerlings, D, van Ommen, F, Bennink, E, Dankbaar, J W, Velthuis, B K, Emmer, B J, Hoving, J W, Majoie, C B L M, Marquering, H A & de Jong, H W A M 2022, ' Probability maps classify ischemic stroke regions more accurately than CT perfusion summary maps ', European Radiology, vol. 32, no. 9, pp. 6367-6375 . https://doi.org/10.1007/s00330-022-08700-y, European radiology, 32(9), 6367-6375. Springer Verlag
Publication Year :
2022
Publisher :
Springer Science and Business Media LLC, 2022.

Abstract

Objectives To compare single parameter thresholding with multivariable probabilistic classification of ischemic stroke regions in the analysis of computed tomography perfusion (CTP) parameter maps. Methods Patients were included from two multicenter trials and were divided into two groups based on their modified arterial occlusive lesion grade. CTP parameter maps were generated with three methods—a commercial method (ISP), block-circulant singular value decomposition (bSVD), and non-linear regression (NLR). Follow-up non-contrast CT defined the follow-up infarct region. Conventional thresholds for individual parameter maps were established with a receiver operating characteristic curve analysis. Probabilistic classification was carried out with a logistic regression model combining the available CTP parameters into a single probability. Results A total of 225 CTP data sets were included, divided into a group of 166 patients with successful recanalization and 59 with persistent occlusion. The precision and recall of the CTP parameters were lower individually than when combined into a probability. The median difference [interquartile range] in mL between the estimated and follow-up infarct volume was 29/23/23 [52/50/52] (ISP/bSVD/NLR) for conventional thresholding and was 4/6/11 [31/25/30] (ISP/bSVD/NLR) for the probabilistic classification. Conclusions Multivariable probability maps outperform thresholded CTP parameter maps in estimating the infarct lesion as observed on follow-up non-contrast CT. A multivariable probabilistic approach may harmonize the classification of ischemic stroke regions. Key Points • Combining CTP parameters with a logistic regression model increases the precision and recall in estimating ischemic stroke regions. • Volumes following from a probabilistic analysis predict follow-up infarct volumes better than volumes following from a threshold-based analysis. • A multivariable probabilistic approach may harmonize the classification of ischemic stroke regions.

Details

ISSN :
14321084 and 09387994
Volume :
32
Database :
OpenAIRE
Journal :
European Radiology
Accession number :
edsair.doi.dedup.....d7f0119639d4b083a78fec1544b08770
Full Text :
https://doi.org/10.1007/s00330-022-08700-y