Title of article :
Dynamic Recommendation: Disease Prediction and Prevention Using Recommender System
Author/Authors :
Nasiri, Mahdi Iran University of Science and Technology (IUST), Tehran , Minaei, Behrouz Iran University of Science and Technology (IUST), Tehran , Kiani, Amir Department of Mathematics and Computer Science - Amir Kabir University of Technology, Tehran
Abstract :
Background: In today’s world, chronic diseases are predominant health problems and cause
heavy burden on society; therefore early diagnosis and even prediction of the disease is a way to
reduce this burden. In this project, we tried to use recommender system to predict which other
diseases a chronic patient is susceptible for.
Methods: In this study, through a dynamic recommender system, we evaluated patients’
treatment destiny during the time.
Results: It was shown that our method increased accuracy and reduced error compared with
other recommendation methods in disease prediction.
Conclusion: Compared to current usual methods, in our method we used previous patients’
characteristics as one of the factorization variables to predict destiny of future patients.
Furthermore, using this method, we can predict which complication or disease the patient
would suffer from first in future. Therefore, we can manage policies toward disease burden
reduction by implementing prevention programs.
Keywords :
Recommender system , Disease prediction , Collaborative filtering , Data mining , Treatment
Journal title :
International Journal of Basic Science in Medicine (IJBSM)