Abstract
Liver disease continues to be a major global health concern, accounting for a considerable portion of global mortality. It results in a variety of symptoms such aberrant nerve function, blood in the cough or vomit, renal and liver failure, jaundice, and liver encephalopathy. It is caused by a myriad of variables that influence the liver, including obesity, untreated hepatitis infection, and alcohol misuse. In order to effectively treat liver infections, early detection is essential, and sensor- based medical technology is frequently used in modern medical procedures to identify illnesses. But diagnosing a condition can be expensive and difficult. Thus, the purpose of this paper is to compare the effectiveness of different machine learning algorithms in order to judge how well they function and have what potential to categorize liver diseases.
Publisher
International Journal of Innovative Science and Research Technology
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