dc.description.abstract |
Liver Cirrhosis Prediction is a crucial area of research aimed at improving the accuracy
and effectiveness of identifying liver cirrhosis cases. This study explores the
performance of three classification algorithms, namely Naïve Bayes, Random Forest,
and Ada Boost, in predicting liver cirrhosis. The experimental results demonstrate high
accuracy rates for the Naïve Bayes (97.61%) and Random Forest (98.80%) classifiers,
indicating their effectiveness in classifying liver cirrhosis cases. The Naïve Bayes
classifier exhibits an Ill-balanced performance with precision, recall, and f1-score
values of 93, 98, and 95, respectively. The Random Forest classifier surpasses the other
algorithms, achieving superior precision, recall, and f1-scores of 99, 92, and 94,
respectively. The Ada Boost classifier achieved a low accuracy rate of 80.95% with
precision, recall, and f1-score values of 67, 75, and 70, respectively. These findings
highlight the potential of the Naïve Bayes and Random Forest classifiers in liver
cirrhosis prediction, providing valuable insights for healthcare professionals and
researchers. Future research could focus on refining the Ada Boost classifier and
exploring hybrid models or advanced techniques to further enhance the accuracy and
precision of liver cirrhosis prediction models. The successful prediction of liver
cirrhosis can contribute to early intervention and improved patient outcomes in clinical
settings. |
en_US |