Performance Assessment of Classification Algorithms on Early Detection of Liver Syndrome.

Journal: Journal of healthcare engineering
Published Date:

Abstract

In the recent era, a liver syndrome that causes any damage in life capacity is exceptionally normal everywhere throughout the world. It has been found that liver disease is exposed more in young people as a comparison with other aged people. At the point when liver capacity ends up, life endures just up to 1 or 2 days scarcely, and it is very hard to predict such illness in the early stage. Researchers are trying to project a model for early prediction of liver disease utilizing various machine learning approaches. However, this study compares ten classifiers including A1DE, NB, MLP, SVM, KNN, CHIRP, CDT, Forest-PA, J48, and RF to find the optimal solution for early and accurate prediction of liver disease. The datasets utilized in this study are taken from the UCI ML repository and the GitHub repository. The outcomes are assessed via RMSE, RRSE, recall, specificity, precision, G-measure, F-measure, MCC, and accuracy. The exploratory outcomes show a better consequence of RF utilizing the UCI dataset. Assessing RF using RMSE and RRSE, the outcomes are 0.4328 and 87.6766, while the accuracy of RF is 72.1739% that is also better than other employed classifiers. However, utilizing the GitHub dataset, SVM beats other employed techniques in terms of increasing accuracy up to 71.3551%. Moreover, the comprehensive outcomes of this exploration can be utilized as a reference point for further research studies that slight assertion concerning the enhancement in extrapolation through any new technique, model, or framework can be benchmarked and confirmed.

Authors

  • Rashid Naseem
    Department of IT and Computer Science, Pak-Austria Fachhochschule Institute of Applied Sciences and Technology, Haripur, Pakistan.
  • Bilal Khan
    Department of Computer Science, City University of Science and Information Technology, Peshawar, Pakistan.
  • Muhammad Arif Shah
    Department of IT and Computer Science, Pak-Austria Fachhochschule Institute of Applied Sciences and Technology, Haripur, Pakistan.
  • Karzan Wakil
    Research Center, Sulaimani Polytechnic University, Sulaimani 46001 Kurdistan Region, Sulaymaniyah, Iraq.
  • Atif Khan
    Department of Urology, Applied Technology Laboratory for Advanced Surgery (ATLAS) Program at Roswell Park Cancer Institute, Buffalo, NY.
  • Wael Alosaimi
    Department of Information Technology, College of Computers and Information Technology, Taif University, P.O.Box 11099, Taif 21944, Saudi Arabia.
  • M Irfan Uddin
    Institute of Computing, Kohat University of Science and Technology, Kohat 26000, Pakistan.
  • Badar Alouffi
    Department of Computer Science, College of Computers and Information Technology, Taif University, P.O.Box 1109, Taif 21944, Saudi Arabia.