Classification Thalassemia Data Using Fuzzy Kernel C-Means (FKCM) Method

  • Zuherman Rustam
  • Febrisa Dhewi Ramadhany
  • Titin Siswantining
  • Fajar Subroto
  • Aditya Suryansyah

Abstract

:This study will investigate thalassemia. Thalassemia is a disease of blood disorders in red blood cells caused by genetic factors that cause red blood cells (hemoglobin) are not able to function properly. This disease causes a lot of death because it can not be cured, so to prevent the occurrence of thalassemia can do a prenatal test or early detection to determine people who have thalassemia. This study will separate a number of data using thalassemia classification technique to differentiate patients with thalassemia and normal patients by using the Fuzzy Kernel C-Means method. The results obtained show that FKCM has far better performance compared to FCM in classifying thalassemia data. FCM has an accuracy rate of 100% with an execution time of 0.80 seconds, while FKCM has an accuracy rate of 100% with an execution time of 0.19 seconds.

Published
2019-10-08
How to Cite
Rustam, Z., Ramadhany, F. D., Siswantining, T., Subroto, F., & Suryansyah, A. (2019). Classification Thalassemia Data Using Fuzzy Kernel C-Means (FKCM) Method. International Journal of Advanced Science and Technology, 28(8s), 20 - 27. Retrieved from http://sersc.org/journals/index.php/IJAST/article/view/831