TY - JOUR T1 - Deep Learning and Machine Learning Usage in Cirrhosis Prediction: A Comparative Study TT - Deep Learning and Machine Learning Usage in Cirrhosis Prediction: A Comparative Study AU - Karaboğa, Hasan Aykut AU - Gücen, Mustafa Bayram PY - 2025 DA - November Y2 - 2025 DO - 10.34248/bsengineering.1640318 JF - Black Sea Journal of Engineering and Science JO - BSJ Eng. Sci. PB - Karyay Karadeniz Yayımcılık Ve Organizasyon Ticaret Limited Şirketi WT - DergiPark SN - 2619-8991 SP - 1904 EP - 1910 VL - 8 IS - 6 LA - en AB - The cirrhosis disease represents the final stage of hepatitis, characterized by the death of liver cells and irreversible liver damage. Although there are some methods used in the prediction of cirrhosis, especially those utilizing various artificial intelligence techniques, it is still difficult to accurately predict cirrhosis. The aim of this research is to detect cirrhosis by focusing on deep learning methods. In addition to analyzing the performance of deep learning methods for cirrhosis prediction, the study also compares the performance of traditional machine learning algorithms with deep learning techniques. Decision Tree (DT), k-Nearest Neighbors (kNN), Random Forest (RF) and Logistic Regression (LR) algorithms are used in order to achieve these goals. Considering the relatively lower performance of some of these algorithms, Deep Neural Networks performed the classification accurately. In the dataset used in the study, there were 362 patients with cirrhosis and 1023 without cirrhosis. Model performance showed that deep neural networks achieved high classification performance with metrics such as 95.96% accuracy. According to the results, deep learning methods showed strong performance, providing high accuracy and sensitivity for cirrhosis prediction alongside traditional machine learning methods. KW - Cirrhosis KW - Deep neural networks KW - Hepatitis C virus KW - Machine learning KW - Classification KW - Performance evaluation N2 - The cirrhosis disease represents the final stage of hepatitis, characterized by the death of liver cells and irreversible liver damage. Although there are some methods used in the prediction of cirrhosis, especially those utilizing various artificial intelligence techniques, it is still difficult to accurately predict cirrhosis. The aim of this research is to detect cirrhosis by focusing on deep learning methods. In addition to analyzing the performance of deep learning methods for cirrhosis prediction, the study also compares the performance of traditional machine learning algorithms with deep learning techniques. Decision Tree (DT), k-Nearest Neighbors (kNN), Random Forest (RF) and Logistic Regression (LR) algorithms are used in order to achieve these goals. Considering the relatively lower performance of some of these algorithms, Deep Neural Networks performed the classification accurately. In the dataset used in the study, there were 362 patients with cirrhosis and 1023 without cirrhosis. Model performance showed that deep neural networks achieved high classification performance with metrics such as 95.96% accuracy. According to the results, deep learning methods showed strong performance, providing high accuracy and sensitivity for cirrhosis prediction alongside traditional machine learning methods. CR - Arslan RU, Pamuk Z, Kaya C. 2024. Usage of Weka software based on machine learning algorithms for prediction of liver fibrosis/cirrhosis. BSJ Eng Sci, 7(3): 445-456. CR - Bayrak EA, Kırcı P, Ensari T. 2019. Performance analysis of machine learning algorithms and feature selection methods on hepatitis disease. Int J Multidiscip Stud Innov Technol, 3(2): 135–138. CR - Bergstra J, Bengi Y. 2012. 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