Dijana Capeska Bogatinoska

Work place: University for Information Science & Technology, “St. Paul the Apostle”, Partizanska B.B., 6000 Ohrid, Macedoni

E-mail: dijana.c.bogatinoska@uist.edu.mk

Website:

Research Interests: Engineering, Computational Engineering, Computational Science and Engineering

Biography

Dijana Capeska Bogatinoska is a teaching and research assistant of Computer Science and Engineering at the University for Information Science and Technology “St. Paul the Apostle” Ohrid, Macedonia. She received her M.S. in Computer Science from the University “St. Clement of Ohrid” - Technical Faculty Bitola, and the B. Eng. in Electrical Engineering from the Military Technical Faculty - Belgrade, in the Department of Electronics. Dijana has contributed a considerable number of manuscripts to conferences and congresses in the field of information science and technologies. Currently she is Ph.D. candidate at the University “St. Clement of Ohrid” - Technical Faculty Bitola, in the Computer Science and Engineering Department. She has previous working experience at Eurotec in Prilep, Macedonia, as engineer for preparing printed circuit boards for production, in Euroinvest 11 Oktomvri in Prilep, Macedonia, first as a programmer at the computer science department, later as the head of the computer science department and finally as the manager of the financial and administrative department.

Author Articles
Applied Computational Engineering in Magnetic Resonance Imaging: A Tumor Case Study

By Carlo Ciulla Dijana Capeska Bogatinoska Filip A. Risteski Dimitar Veljanovski

DOI: https://doi.org/10.5815/ijigsp.2014.07.01, Pub. Date: 8 Jun. 2014

This paper solves the biomedical engineering problem of the extraction of complementary and/or additional information related to the depths of the anatomical structures of the human brain tumor imaged with Magnetic Resonance Imaging (MRI). The combined calculation of the signal resilient to interpolation and the Intensity-Curvature Functional provides with the complementary and/or additional information. The steps to undertake for the calculation of the signal resilient to interpolation are: (i) fitting a polynomial function to the signal, (ii) the calculation of the classic-curvature of the signal, (iii) the calculation of the Intensity-Curvature term before interpolation of the signal, (iv) the calculation of the Intensity-Curvature term after interpolation of the signal, (v) the solution of the equation of the two aforementioned Intensity-Curvature terms of the signal provides with the signal resilient to interpolation. The Intensity-Curvature Functional is the result of the ratio between the two Intensity-Curvature terms before and after interpolation. Because of the fact that the signal resilient to interpolation and the Intensity-Curvature Functional are derived through the process of re-sampling the original signal, it is possible to obtain an immense number of images from the original MRI signal. This paper shows the combined use of the signal resilient to interpolation and the Intensity-Curvature Functional in diagnostic settings when evaluating a tumor imaged with MRI. Additionally, the Intensity-Curvature Functional can identify the tumor contour line.

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Computational Intelligence in Magnetic Resonance Imaging of the Human Brain: The Classic-Curvature and the Intensity-Curvature Functional in a Tumor Case Study

By Carlo Ciulla Dijana Capeska Bogatinoska Filip A. Risteski Dimitar Veljanovski

DOI: https://doi.org/10.5815/ijieeb.2014.02.01, Pub. Date: 8 Apr. 2014

This research solves the computational intelligence problem of devising two mathematical engineering tools called Classic-Curvature and Intensity-Curvature Functional. It is possible to calculate the two mathematical engineering tools from any model polynomial function which embeds the property of second-order differentiability. This work presents results obtained with bivariate and trivariate cubic Lagrange polynomials. The use of the Classic-Curvature and the Intensity-Curvature Functional can add complementary information in medical imaging, specifically in Magnetic Resonance Imaging (MRI) of the human brain.

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