Breast Cancer Surgery Survivability Prediction Using Bayesian Network and Support Vector Machines

Dania Abed Aljawad, Ebtesam Alqahtani, Ghaidaa AL-Kuhaili, Nada Qamhan, Noof Alghamdi, Saleh Alrashedi, Jamal Alhiyafi, Sunday O. Olatunji

Research output: Contribution to conferencePresentation

Abstract

Predicting the survival status of patients who will undergo breast cancer surgery is highly important, where it indicates whether conducting a surgery is the best solution for the presented medical case or not. Since this is a case of life or death, the need to explore better prediction techniques to ensure accurate survival status prediction cannot be overemphasized. In this paper we evaluate the performance of support vector machine (SVM) and Bayesian network (BN) in predicting the survival state of breast cancer patients after having a surgery. The experiments on both techniques have been carried out using Weka software package. Empirical results from simulations showed that support vector machine outperformed Bayesian network in this task, where support vector machine achieved better accuracy of 74.44% while Bayesian network had its best accuracy of 67.56%.
Original languageAmerican English
DOIs
StatePublished - Apr 24 2017
Event2017 International Conference on Informatics, Health Technology (ICIHT) -
Duration: Apr 24 2017 → …

Conference

Conference2017 International Conference on Informatics, Health Technology (ICIHT)
Period4/24/17 → …

Disciplines

  • Cancer Biology
  • Computer Sciences

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