Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools

Background: The liver controls the metabolic process of our physiological system. The hepatic portal system is the pathway via which food and other ingredients we ingest enter the liver. The liver is a digestive gland or organ that secretes and controls bilirubin, transaminase enzymes, and several o...

Full description

Bibliographic Details
Main Authors: Gireesh NAMINENI, Krupanidhi SREERAMA
Format: Article
Language:English
Published: Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca 2023-09-01
Series:Applied Medical Informatics
Subjects:
Online Access:https://ami.info.umfcluj.ro/index.php/AMI/article/view/938
_version_ 1797669528739512320
author Gireesh NAMINENI
Krupanidhi SREERAMA
author_facet Gireesh NAMINENI
Krupanidhi SREERAMA
author_sort Gireesh NAMINENI
collection DOAJ
description Background: The liver controls the metabolic process of our physiological system. The hepatic portal system is the pathway via which food and other ingredients we ingest enter the liver. The liver is a digestive gland or organ that secretes and controls bilirubin, transaminase enzymes, and several other biochemical components. As a result, the liver is a crucial organ in human physiology. Various natural and acquired disorders connected with the liver, such as inflammation, fibrosis, jaundice, cirrhosis, and others, cause liver damage and ultimately death. Methods: The cirrhosis dataset was obtained from the URL https://www.kaggle.com/datasets/fedesoriano/cirrhosis-prediction-dataset?resource=download. WEKA, an ML software package, was used to analyze the dataset. The Random Forest algorithm (a tree classifier) and the Multilayer Perceptron algorithm (a function classifier) were selected in the WEKA tool to examine the eight attributes in the cirrhosis dataset. The chosen eight features are mostly responsible for diagnosing liver cirrhosis. Ascites, hepatomegaly, edema, bilirubin, albumin, alkaline phosphatase, serum glutamic oxaloacetic transaminase, and prothrombin are among them. The first 199 instances from the dataset were chosen for the current investigation. Results: The Random Forest algorithm produced a correlation coefficient of 0.9664 with a least mean absolute error of 0.2284, indicating that the data in the cirrhosis dataset is uniform and corresponds to the disease phases of cirrhosis. The multilayer perceptron technique produced a correlation coefficient of 0.3226 with a mean absolute error of 0.8921, indicating that the Random Forest approach is well suited to investigate the accuracy of the attributes of cirrhosis. Conclusion: Eight clinical features that made up the etiology of cirrhosis were taken into account in the current study, and the Random Forest algorithm confirmed their statistical validity.
first_indexed 2024-03-11T20:45:43Z
format Article
id doaj.art-c31caeb2538b4b90a46e711f47d4a900
institution Directory Open Access Journal
issn 2067-7855
language English
last_indexed 2024-03-11T20:45:43Z
publishDate 2023-09-01
publisher Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca
record_format Article
series Applied Medical Informatics
spelling doaj.art-c31caeb2538b4b90a46e711f47d4a9002023-10-01T11:36:44ZengIuliu Hatieganu University of Medicine and Pharmacy, Cluj-NapocaApplied Medical Informatics2067-78552023-09-0145Suppl. S1S24S241045Analysis of the Attributes of Liver Cirrhosis using the Machine Learning ToolsGireesh NAMINENI0Krupanidhi SREERAMA1Mohan Babu UniversityDepartment of Biotechnology, Vignan’s Foundation for Science, Technology and Research, VadlamudiBackground: The liver controls the metabolic process of our physiological system. The hepatic portal system is the pathway via which food and other ingredients we ingest enter the liver. The liver is a digestive gland or organ that secretes and controls bilirubin, transaminase enzymes, and several other biochemical components. As a result, the liver is a crucial organ in human physiology. Various natural and acquired disorders connected with the liver, such as inflammation, fibrosis, jaundice, cirrhosis, and others, cause liver damage and ultimately death. Methods: The cirrhosis dataset was obtained from the URL https://www.kaggle.com/datasets/fedesoriano/cirrhosis-prediction-dataset?resource=download. WEKA, an ML software package, was used to analyze the dataset. The Random Forest algorithm (a tree classifier) and the Multilayer Perceptron algorithm (a function classifier) were selected in the WEKA tool to examine the eight attributes in the cirrhosis dataset. The chosen eight features are mostly responsible for diagnosing liver cirrhosis. Ascites, hepatomegaly, edema, bilirubin, albumin, alkaline phosphatase, serum glutamic oxaloacetic transaminase, and prothrombin are among them. The first 199 instances from the dataset were chosen for the current investigation. Results: The Random Forest algorithm produced a correlation coefficient of 0.9664 with a least mean absolute error of 0.2284, indicating that the data in the cirrhosis dataset is uniform and corresponds to the disease phases of cirrhosis. The multilayer perceptron technique produced a correlation coefficient of 0.3226 with a mean absolute error of 0.8921, indicating that the Random Forest approach is well suited to investigate the accuracy of the attributes of cirrhosis. Conclusion: Eight clinical features that made up the etiology of cirrhosis were taken into account in the current study, and the Random Forest algorithm confirmed their statistical validity.https://ami.info.umfcluj.ro/index.php/AMI/article/view/938cirrhosisrandom forestmultilayer perceptronwekahealthcare digital ecosystem
spellingShingle Gireesh NAMINENI
Krupanidhi SREERAMA
Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
Applied Medical Informatics
cirrhosis
random forest
multilayer perceptron
weka
healthcare digital ecosystem
title Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
title_full Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
title_fullStr Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
title_full_unstemmed Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
title_short Analysis of the Attributes of Liver Cirrhosis using the Machine Learning Tools
title_sort analysis of the attributes of liver cirrhosis using the machine learning tools
topic cirrhosis
random forest
multilayer perceptron
weka
healthcare digital ecosystem
url https://ami.info.umfcluj.ro/index.php/AMI/article/view/938
work_keys_str_mv AT gireeshnamineni analysisoftheattributesoflivercirrhosisusingthemachinelearningtools
AT krupanidhisreerama analysisoftheattributesoflivercirrhosisusingthemachinelearningtools