Medmathematica: advancing cancer segmentation through mathematical modeling

Badarul Azam, Akmal Shafiq and Jumaat, Abdul Kadir and Ibrahim, Shafaf and Wondi, Mohd Hafizz (2025) Medmathematica: advancing cancer segmentation through mathematical modeling. In: E-proceedings of international tinker innovation & entrepreneurship challenge (i-TIEC 2025). International Tinker Innovation & Entrepreneurship Challenge (2nd). Universiti Teknologi MARA Cawangan Johor Kampus Pasir Gudang, Universiti Teknologi MARA, Johor, pp. 570-574. ISBN 978-967-0033-34-1

Abstract

MedMathematica is an innovative computer-aided detection (CAD) system designed to improve the accuracy and efficiency of cancer segmentation in medical imaging. This system employs the novel Selective Local Image Fitting (SLIF) model, a mathematical approach that addresses common challenges in cancer imaging, such as intensity inhomogeneity and low contrast. Unlike traditional methods, MedMathematica segments cancer abnormalities in both color and grayscale images without converting them to grayscale, preserving critical data and enhancing accuracy. Developed to meet the demands of radiologists and healthcare professionals, MedMathematica achieves a high Dice accuracy of 93.32% and a rapid processing time of 0.9483 seconds. Its user-friendly interface ensures accessibility, even for resource-limited healthcare settings. MedMathematica's impact extends beyond healthcare. By enabling early and precise cancer detection, it improves patient outcomes and reduces healthcare costs associated with late-stage treatment. Its commercialization potential includes partnerships with healthcare institutions, medical device companies, and academic research centers, offering scalability and adaptability across global markets. This innovation not only exemplifies the power of mathematical modeling in medicine but also contributes to socioeconomic goals by fostering healthcare innovation, improving public health, and supporting national initiatives like Malaysia’s Shared Prosperity Vision 2030

Metadata

Item Type: Book Section
Creators:
Creators
Email / ID Num.
Badarul Azam, Akmal Shafiq
UNSPECIFIED
Jumaat, Abdul Kadir
UNSPECIFIED
Ibrahim, Shafaf
UNSPECIFIED
Wondi, Mohd Hafizz
UNSPECIFIED
Contributors:
Contribution
Name
Email / ID Num.
Advisor
Zainodin @ Zainuddin, Aznilinda
314217
Subjects: Q Science > QA Mathematics > Instruments and machines > Electronic Computers. Computer Science > Computer software
R Medicine > R Medicine (General) > Computer applications to medicine. Medical informatics
Divisions: Universiti Teknologi MARA, Johor > Pasir Gudang Campus > College of Engineering
Series Name: International Tinker Innovation & Entrepreneurship Challenge
Number: 2nd
Page Range: pp. 570-574
Keywords: Cancer detection, Image segmentation, Mathematical modeling, Medical images, Variational model
Date: 2025
URI: https://ir.uitm.edu.my/id/eprint/120958
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