Çevik, Mesut

Loading...
Profile Picture
Name Variants
Çevik, Mesut
M.,Çevik
M. Çevik
Mesut, Çevik
Cevik, Mesut
M.,Cevik
M. Cevik
Mesut, Cevik
Cevik, M.
Job Title
Öğr. Gör
Email Address
Mesut.cevık@khas.edu.tr
Main Affiliation
Computer Engineering
Status
Former Staff
Website
ORCID ID
Scopus Author ID
Turkish CoHE Profile ID
Google Scholar ID
WoS Researcher ID
Scholarly Output

4

Articles

0

Citation Count

0

Supervised Theses

1

Scholarly Output Search Results

Now showing 1 - 2 of 2
  • Conference Object
    Citation - Scopus: 0
    Classification of Adhd Using Ensemble Algorithms With Deep Learning and Hand Crafted Features
    (Institute of Electrical and Electronics Engineers Inc., 2019) Cicek, G.; Çevik, Mesut; Cevik, M.; Akan, A.
    Attention Deficit Hyperactivity (ADHD) is a common neurodevelopmental disorder that typically appears in early childhood. Methods developed for diagnosing gives different results at different times. This is a major obstacle in the diagnosis of disease. Diagnosis model of ADHD must be unique, objective, and reliable. In this study, comparative evaluations of both manual and deep features for classification of structural magnetic resonance images is presented. For this purpose, datasets of NPIstanbul Neuropsychiatry Hospital and public datasets of ADHD-200 is used. In order to characterize MRI images First Order, Second Order statictical features and the Alexnet architecture is used. Images are classified with the ensemble algorithm. In order to determine classification performance, accuracy, sensitivity, specificity, tp rate, fp rate and F-measure values are taken into consideration. It was observed that the combination of three manually extracted data sets yielded more successful results in characterizing the data. © 2019 IEEE.
  • Conference Object
    Citation - WoS: 0
    Classification of Adhd Using Ensemble Algorithms With Deep Learning and Hand Crafted Features
    (IEEE, 2019) Çiçek, Gülay; Çevik, Mesut; Çevik, Mesut; Akan, Aydın
    Attention Deficit Hyperactivity (ADHD) is a common neurodevelopmental disorder that typically appears in early childhood. Methods developed for diagnosing gives different results at different times. This is a major obstacle in the diagnosis of disease. Diagnosis model of ADHD must be unique, objective, and reliable. In this study, comparative evaluations of both manual and deep features for classification of structural magnetic resonance images is presented. For this purpose, datasets of NPIstanbul Neuropsychiatry Hospital and public datasets of ADHD-200 is used. In order to characterize MRI images First Order, Second Order statictical features and the Alexnet architecture is used. Images are classified with the ensemble algorithm. In order to determine classification performance, accuracy, sensitivity, specificity, tp rate, fp rate and F-measure values are taken into consideration. It was observed that the combination of three manually extracted data sets yielded more successful results in characterizing the data.