Prediction of consistency of intracranial meningiomas based on conventional MRI examination
Authors:
A. Lysak 1; V. Belan 2; M. Jezberová 2; M. Fabian 2; A. Šteňo 1
Authors‘ workplace:
Neurochirurgická klinika LF UK, a Univerzitnej nemocnice Bratislava, Slovensko
1; Dr. Magnet s. r. o., pracovisko Kramáre, Bratislava, Slovensko
2
Published in:
Cesk Slov Neurol N 2024; 87(3): 174-180
Category:
Review Article
doi:
https://doi.org/10.48095/cccsnn2024174
Overview
One of the main factors affecting the resectability of meningiomas is their consistency. Preoperative prediction of the consistency of meningiomas can bring helpful information when planning the operation (e. g., estimating its duration), and, in some cases, it can even be beneficial when deciding on the therapeutic procedure itself. A reliable prediction of consistency could help during the treatment management planning process – e. g., to choose whether surgical treatment or non-surgical procedures (radiosurgery or observation using MRI) should be performed. A reliable prediction could be especially important in cases of extremely hard tumors growing in surgically challenging locations and/ or in elderly polymorbid patients. Unfortunately, this topic has not been sufficiently investigated and a generally accepted method allowing simple, fast and reliable prediction of the meningioma consistency using preoperative MRI is still lacking. Our work aims to provide readers with a brief overview of current knowledge about the possibilities of preoperative prediction of the consistency of meningiomas based on MRI.
Keywords:
Meningioma – prediction – consistency – resectability
Sources
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Paediatric neurology Neurosurgery NeurologyArticle was published in
Czech and Slovak Neurology and Neurosurgery
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