Title of article :
A Medical Decision Support System to Assess Risk Factors for Gastric Cancer Based on Fuzzy Cognitive Map
Author/Authors :
Mahmoodi, Abbas Department of Computer Engineering - Yazd Science and Research Branch - Islamic Azad University - Yazd, Iran , Mirzaie, Kamal Department of Computer Engineering - Maybod Branch - Islamic Azad University - Maybod, Iran , Mahmoodi, Maryam Sadat Department of Electrical and Computer Engineering - Faculty of Sepideh Kashani - Birjand Branch - Technical and Vocational University (TVU) - South Khorasan, Iran , Mahmoudi, Mostafa School of Dentistry - Shahid Sadoughi University of Medical Sciences - Yazd, Iran
Abstract :
Gastric cancer (GC), one of the most common cancers around the world, is a multifactorial disease and there are many risk factors
for this disease. Assessing the risk of GC is essential for choosing an appropriate healthcare strategy. There have been very few
studies conducted on the development of risk assessment systems for GC. This study is aimed at providing a medical decision
support system based on soft computing using fuzzy cognitive maps (FCMs) which will help healthcare professionals to decide
on an appropriate individual healthcare strategy based on the risk level of the disease. FCMs are considered as one of the
strongest artificial intelligence techniques for complex system modeling. In this system, an FCM based on Nonlinear Hebbian
Learning (NHL) algorithm is used. The data used in this study are collected from the medical records of 560 patients referring
to Imam Reza Hospital in Tabriz City. 27 effective features in gastric cancer were selected using the opinions of three experts.
The prediction accuracy of the proposed method is 95.83%. The results show that the proposed method is more accurate than
other decision-making algorithms, such as decision trees, Naïve Bayes, and ANN. From the perspective of healthcare
professionals, the proposed medical decision support system is simple, comprehensive, and more effective than previous models
for assessing the risk of GC and can help them to predict the risk factors for GC in the clinical setting.
Keywords :
Risk , Map , Fuzzy , FCMs
Journal title :
Computational and Mathematical Methods in Medicine