Title: Optimizing Prediction of Liver Disease Using Machine Learning Algorithms
Abstract: Chapter 10 Optimizing Prediction of Liver Disease Using Machine Learning Algorithms Rachna, Rachna Department of Computer Science and Engineering, Sonipat, IndiaSearch for more papers by this authorTanish Jain, Tanish Jain Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this authorDeepak Shandilya, Deepak Shandilya Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this authorShivangi Gagneja, Shivangi Gagneja Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this author Rachna, Rachna Department of Computer Science and Engineering, Sonipat, IndiaSearch for more papers by this authorTanish Jain, Tanish Jain Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this authorDeepak Shandilya, Deepak Shandilya Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this authorShivangi Gagneja, Shivangi Gagneja Department of Computer Science and Engineering, Mohali, IndiaSearch for more papers by this author Book Editor(s):Sandeep Kumar, Sandeep Kumar CSE Department, Koneru Lakshmaiah Education Vaddeswaram, Andhra Pradesh, IndiaSearch for more papers by this authorAnuj Sharma, Anuj Sharma Maharshi Dayanand University, Rohtak, IndiaSearch for more papers by this authorNavneet Kaur, Navneet Kaur Chandigarh University, Gharuan, Mohali, IndiaSearch for more papers by this authorLokesh Pawar, Lokesh Pawar Chandigarh University, Gharuan, Mohali, IndiaSearch for more papers by this authorRohit Bajaj, Rohit Bajaj Chandigarh University, Gharuan, Mohali, IndiaSearch for more papers by this author First published: 07 February 2024 https://doi.org/10.1002/9781394175376.ch10 AboutPDFPDF ToolsRequest permissionExport citationAdd to favoritesTrack citation ShareShareShare a linkShare onEmailFacebookTwitterLinkedInRedditWechat Summary On the right side of the abdomen, directly behind the ribs, is an organ called the liver, located just under the ribs on the right side of the stomach. It is essential for the body's detoxification process and the digestion of meals. Viruses, drinking alcohol, and being overweight can all cause liver disorders. The consequences of liver disorders vary based on the root cause of liver problems and can get worse if not diagnosed early. Based on symptoms, including yellowing of the skin and eyes, abdominal discomfort and swelling, and dark urine color. Researchers use machine learning to help them identify and categorize liver problems. Yet, missing values in medical data may lead to imbalanced study conclusions and make it challenging to forecast and assess the data. Therefore, to increase prediction accuracy and reduce overfitting, employ an algorithm like random forest, which utilizes averaging several decision tree classifiers to different attributes of the liver disorder dataset. The overall performance was improved to 73.3% after multiple simulations and the input of inconsistencies. 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Publication Year: 2024
Publication Date: 2024-02-07
Language: en
Type: other
Indexed In: ['crossref']
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