Literature DB >> 32501132

Integrating regional perfusion CT information to improve prediction of infarction after stroke.

Julian Klug1,2, Elisabeth Dirren1, Maria G Preti2,3, Paolo Machi3, Andreas Kleinschmidt1, Maria I Vargas3, Dimitri Van De Ville2,3, Emmanuel Carrera1.   

Abstract

Physiological evidence suggests that neighboring brain regions have similar perfusion characteristics (vascular supply, collateral blood flow). It is largely unknown whether integrating perfusion CT (pCT) information from the area surrounding a given voxel (i.e. the receptive field (RF)) improves the prediction of infarction of this voxel. Based on general linear regression models (GLMs) and using acute pCT-derived maps, we compared the added value of cuboid RF to predict the final infarct. To this aim, we included 144 stroke patients with acute pCT and follow-up MRI, used to delineate the final infarct. Overall, the performance of GLMs to predict the final infarct improved when using RF for all pCT maps (cerebral blood flow, cerebral blood volume, mean transit time and time-to-maximum of the tissue residual function (Tmax)). The highest performance was obtained with Tmax (glm(Tmax); AUC = 0.89 ± 0.03 with RF vs. 0.78 ± 0.02 without RF; p < 0.001) and with a model combining all perfusion parameters (glm(multi); AUC 0.89 ± 0.02 with RF vs. 0.79 ± 0.02 without RF; p < 0.001). These results suggest that prediction of infarction improves by integrating perfusion information from adjacent tissue. This approach may be applied in future studies to better identify ischemic core and penumbra thresholds and improve patient selection for acute stroke treatment.

Entities:  

Keywords:  Machine learning; perfusion imaging; prediction; receptive field; stroke

Mesh:

Year:  2020        PMID: 32501132      PMCID: PMC7922756          DOI: 10.1177/0271678X20924549

Source DB:  PubMed          Journal:  J Cereb Blood Flow Metab        ISSN: 0271-678X            Impact factor:   6.200


  25 in total

Review 1.  Real-time diffusion-perfusion mismatch analysis in acute stroke.

Authors:  Matus Straka; Gregory W Albers; Roland Bammer
Journal:  J Magn Reson Imaging       Date:  2010-11       Impact factor: 4.813

2.  Time-Dependent Computed Tomographic Perfusion Thresholds for Patients With Acute Ischemic Stroke.

Authors:  Christopher D d'Esterre; Mari E Boesen; Seong Hwan Ahn; Pooneh Pordeli; Mohamed Najm; Priyanka Minhas; Paniz Davari; Enrico Fainardi; Marta Rubiera; Alexander V Khaw; Andrea Zini; Richard Frayne; Michael D Hill; Andrew M Demchuk; Tolulope T Sajobi; Nils D Forkert; Mayank Goyal; Ting Y Lee; Bijoy K Menon
Journal:  Stroke       Date:  2015-10-29       Impact factor: 7.914

3.  The meaning and use of the area under a receiver operating characteristic (ROC) curve.

Authors:  J A Hanley; B J McNeil
Journal:  Radiology       Date:  1982-04       Impact factor: 11.105

4.  Artificial neural network prediction of ischemic tissue fate in acute stroke imaging.

Authors:  Shiliang Huang; Qiang Shen; Timothy Q Duong
Journal:  J Cereb Blood Flow Metab       Date:  2010-04-28       Impact factor: 6.200

5.  Predicting tissue outcome in acute human cerebral ischemia using combined diffusion- and perfusion-weighted MR imaging.

Authors:  O Wu; W J Koroshetz; L Ostergaard; F S Buonanno; W A Copen; R G Gonzalez; G Rordorf; B R Rosen; L H Schwamm; R M Weisskoff; A G Sorensen
Journal:  Stroke       Date:  2001-04       Impact factor: 7.914

6.  Prediction of Tissue Outcome and Assessment of Treatment Effect in Acute Ischemic Stroke Using Deep Learning.

Authors:  Anne Nielsen; Mikkel Bo Hansen; Anna Tietze; Kim Mouridsen
Journal:  Stroke       Date:  2018-05-02       Impact factor: 7.914

7.  Boosted Tree Model Reforms Multimodal Magnetic Resonance Imaging Infarct Prediction in Acute Stroke.

Authors:  Michelle Livne; Jens K Boldsen; Irene K Mikkelsen; Jochen B Fiebach; Jan Sobesky; Kim Mouridsen
Journal:  Stroke       Date:  2018-03-14       Impact factor: 7.914

8.  Predicting tissue outcome from acute stroke magnetic resonance imaging: improving model performance by optimal sampling of training data.

Authors:  Kristjana Yr Jonsdottir; Leif Østergaard; Kim Mouridsen
Journal:  Stroke       Date:  2009-07-16       Impact factor: 7.914

9.  Comparison of 10 perfusion MRI parameters in 97 sub-6-hour stroke patients using voxel-based receiver operating characteristics analysis.

Authors:  Søren Christensen; Kim Mouridsen; Ona Wu; Niels Hjort; Henrik Karstoft; Götz Thomalla; Joachim Röther; Jens Fiehler; Thomas Kucinski; Leif Østergaard
Journal:  Stroke       Date:  2009-04-09       Impact factor: 7.914

10.  Optimal Tmax threshold for predicting penumbral tissue in acute stroke.

Authors:  Jean-Marc Olivot; Michael Mlynash; Vincent N Thijs; Stephanie Kemp; Maarten G Lansberg; Lawrence Wechsler; Roland Bammer; Michael P Marks; Gregory W Albers
Journal:  Stroke       Date:  2008-12-24       Impact factor: 7.914

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  3 in total

1.  U-net Models Based on Computed Tomography Perfusion Predict Tissue Outcome in Patients with Different Reperfusion Patterns.

Authors:  Yaode He; Zhongyu Luo; Ying Zhou; Rui Xue; Jiaping Li; Haitao Hu; Shenqiang Yan; Zhicai Chen; Jianan Wang; Min Lou
Journal:  Transl Stroke Res       Date:  2022-01-19       Impact factor: 6.800

2.  Performance of Machine Learning for Tissue Outcome Prediction in Acute Ischemic Stroke: A Systematic Review and Meta-Analysis.

Authors:  Xinrui Wang; Yiming Fan; Nan Zhang; Jing Li; Yang Duan; Benqiang Yang
Journal:  Front Neurol       Date:  2022-07-08       Impact factor: 4.086

Review 3.  Four Decades of Ischemic Penumbra and Its Implication for Ischemic Stroke.

Authors:  Shao-Hua Yang; Ran Liu
Journal:  Transl Stroke Res       Date:  2021-07-05       Impact factor: 6.829

  3 in total

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