اکثر مکاتبات کومش از طریق ایمیل سایت می باشد. لطفا Spam ایمیل خود را نیز چک نمایید.
   [Home ] [Archive]   [ فارسی ]  
:: ::
Main Menu
Home::
Journal Information::
Articles archive::
For Authors::
Subscription::
Contact us::
Site Facilities::
Webmail::
Editorial Board::
::
Search in website

Advanced Search
..
Receive site information
Enter your Email in the following box to receive the site news and information.
..
:: Volume 19, Issue 3 (لد 19، شماره 3 (پياپی 67)، تابستان 1396 1396) ::
Koomesh 1396, 19(3): 584-590 Back to browse issues page
Classification of brain stem glioma tumor grade based on MRI findings using support vector machine
Zahra Zolghadr , Hamid Alavi Majd , Fariborz Faeghi , Farhad Niaghi , Nastaran Hajizadeh
Abstract:   (14532 Views)
Introduction: Brain stem glioma is one of the brain tumors forming 10 to 20 percentages of tumors in children and 2 percentages of tumors in adults. It has two grades including high grade and low grade. Relatively, grade diagnosis is done by biopsy. The goal of this study is presenting a classification model based on MRI findings in order to diagnose glioma tumor and also investigating the effect of MRI findings on tumor’s grade. Materials and Methods: In this cross-sectional study, we utilized MRI and pathological information of all 96 patients with glioma tumor in stereotactic biopsy ward of Shohadaye Tajrish hospital (Iran) between 2006-2012. For analysis of data, support vector machine as a precise classification model has fitted which is suitable for dataset with vast predictors or several class variables with low frequencies in some of them. This model has fitted in R software, 3.3.1 version. Results: The validation shows 93 percent total accuracy, 90 percent sensitivity and 93 percent specifity of support vector machine classifier model. Notably, the coefficients show positive correlation between headache, tumor spread in cord, homogeneous appearance, Cystlike appearance, ISO signal in T1 and T2 and low grade tumor and positive correlation between pons conflict, Tumor spread in thalamus, well defined appearance, necrosis appearance, hypersignal in T2 and heterogeneous enhancement with high grade tumor. Conclusion: Support vector machine classification model based on MRI has high accuracy in tumor grade diagnosis.
Keywords: Brain Stem Glioma, MRI, Tumor Grade, Classification, Support Vector Machine
Full-Text [PDF 855 kb]   (1467 Downloads)    
Type of Study: Research | Subject: General
Received: 2016/07/2 | Accepted: 2016/12/27 | Published: 2017/06/21
Send email to the article author

Add your comments about this article
Your username or Email:

CAPTCHA


XML   Persian Abstract   Print


Download citation:
BibTeX | RIS | EndNote | Medlars | ProCite | Reference Manager | RefWorks
Send citation to:

zolghadr Z, Alavi Majd H, Faeghi F, Niaghi F, Hajizadeh N. Classification of brain stem glioma tumor grade based on MRI findings using support vector machine. Koomesh 1396; 19 (3) :584-590
URL: http://koomeshjournal.semums.ac.ir/article-1-3415-en.html


Rights and permissions
Creative Commons License This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Volume 19, Issue 3 (لد 19، شماره 3 (پياپی 67)، تابستان 1396 1396) Back to browse issues page
کومش Koomesh
Persian site map - English site map - Created in 0.06 seconds with 38 queries by YEKTAWEB 4645