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Data Science of Stroke Imaging and Enlightenment of the Penumbra

Overview
Journal Front Neurol
Specialty Neurology
Date 2015 Mar 24
PMID 25798125
Citations 8
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Abstract

Imaging protocols of acute ischemic stroke continue to hold significant uncertainties regarding patient selection for reperfusion therapy with thrombolysis and mechanical thrombectomy. Given that patient inclusion criteria can easily introduce biases that may be unaccounted for, the reproducibility and reliability of the patient screening method is of utmost importance in clinical trial design. The optimal imaging screening protocol for selection in targeted populations remains uncertain. Acute neuroimaging provides a snapshot in time of the brain parenchyma and vasculature. By identifying the at-risk but still viable penumbral tissue, imaging can help estimate the potential benefit of a reperfusion therapy in these patients. This paper provides a perspective about the assessment of the penumbral tissue in the context of acute stroke and reviews several neuroimaging models that have recently been developed to assess the penumbra in a more reliable fashion. The complexity and variability of imaging features and techniques used in stroke will ultimately require advanced data driven software tools to provide quantitative measures of risk/benefit of recanalization therapy and help aid in making the most favorable clinical decisions.

Citing Articles

Evaluation of Ischemic Penumbra in Stroke Patients Based on Deep Learning and Multimodal CT.

Liu C, Qin T, Liu L J Healthc Eng. 2024; 2021:3215107.

PMID: 39290779 PMC: 11407880. DOI: 10.1155/2021/3215107.


The Role of Carbon Dioxide in the Rat Acute Stroke Penumbra.

Yeo L, Arnberg F, Chireh A, Sharma V, Tan B, Gontu V Front Digit Health. 2022; 3:824334.

PMID: 35187526 PMC: 8854855. DOI: 10.3389/fdgth.2021.824334.


Detection of Hyperperfusion on Arterial Spin Labeling using Deep Learning.

Vincent N, Stier N, Yu S, Liebeskind D, Wang D, Scalzo F Proceedings (IEEE Int Conf Bioinformatics Biomed). 2017; 2015:1322-1327.

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Preserved Collateral Blood Flow in the Endovascular M2CAO Model Allows for Clinically Relevant Profiling of Injury Progression in Acute Ischemic Stroke.

Little P, Kvist O, Grankvist R, Jonsson S, Damberg P, Soderman M PLoS One. 2017; 12(1):e0169541.

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Ischemic stroke: experimental models and reality.

Sommer C Acta Neuropathol. 2017; 133(2):245-261.

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