Literature DB >> 28173535

Fractal Analysis May Improve the Preoperative Identification of Atypical Meningiomas.

Marcin Czyz1, Hesham Radwan1, Jian Y Li1, Christopher G Filippi1, Tomasz Tykocki2, Michael Schulder1.   

Abstract

Background: There is no objective and readily accessible method for the preoperative determination of atypical characteristics of a meningioma grade. Objective: To evaluate the feasibility of using fractal analysis as an adjunctive tool to conventional radiological techniques in visualizing histopathological features of meningiomas.
Methods: A group of 27 patients diagnosed with atypical (WHO grade II) meningioma and a second group of 27 patients with benign (WHO grade I) meningioma were enrolled in the study. Preoperative brain magnetic resonance (MR) studies (T1-wieghted, post-gadolinium) were processed and analyzed to determine the average fractal dimension (FDa) and maximum fractal dimension (FDm) of the contrast-enhancing region of the tumor using box-count method. FDa and FDm as well as particular radiological features were included in the logistic regression model as possible predictors of malignancy.
Results: The cohort consisted of 34 women and 20 men, mean age of 62 ± 15 yr. Fractal analysis showed good interobserver reproducibility (Kappa >0.70). Both FDa and FDm were significantly higher in the atypical compared to the benign meningioma group (P < .0001). Multivariate logistic regression model reached statistical significance with P = .0001 and AUC = 0.87. The FDm, which was greater than 1.31 (odds ratio [OR], 12.30; P = .039), and nonskull base localization (OR, .052; P = .015) were confirmed to be statistically significant predictors of the atypical phenotype.
Conclusion: Fractal analysis of preoperative MR images appears to be a feasible adjunctive diagnostic tool in identifying meningiomas with potentially aggressive clinical behavior.
Copyright © 2016 by the Congress of Neurological Surgeons

Entities:  

Keywords:  Meningioma; Fractal analysis; Atypical; Preoperative imaging

Mesh:

Year:  2017        PMID: 28173535     DOI: 10.1093/neuros/nyw030

Source DB:  PubMed          Journal:  Neurosurgery        ISSN: 0148-396X            Impact factor:   4.654


  5 in total

1.  The Potential Value of Preoperative MRI Texture and Shape Analysis in Grading Meningiomas: A Preliminary Investigation.

Authors:  Peng-Fei Yan; Ling Yan; Ting-Ting Hu; Dong-Dong Xiao; Zhen Zhang; Hong-Yang Zhao; Jun Feng
Journal:  Transl Oncol       Date:  2017-06-24       Impact factor: 4.243

2.  Development of a predictive model of growth hormone deficiency and idiopathic short stature in children.

Authors:  Mengdi Cong; Shi Qiu; Rongpin Li; Haiyan Sun; Lining Cong; Zhenzhou Hou
Journal:  Exp Ther Med       Date:  2021-03-17       Impact factor: 2.447

Review 3.  Recent advances in managing/understanding meningioma.

Authors:  Nawal Shaikh; Karan Dixit; Jeffrey Raizer
Journal:  F1000Res       Date:  2018-04-24

4.  Diagnostic nomogram model for predicting preoperative pathological grade of meningioma.

Authors:  Shijun Peng; Zhihua Cheng; Zhilin Guo
Journal:  Transl Cancer Res       Date:  2021-09       Impact factor: 1.241

5.  Predicting the risk of postoperative recurrence and high-grade histology in patients with intracranial meningiomas using routine preoperative MRI.

Authors:  Dorothee Cäcilia Spille; Alborz Adeli; Peter B Sporns; Katharina Heß; Eileen Maria Susanne Streckert; Caroline Brokinkel; Christian Mawrin; Werner Paulus; Walter Stummer; Benjamin Brokinkel
Journal:  Neurosurg Rev       Date:  2020-04-23       Impact factor: 3.042

  5 in total

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