Detection of Nonalcoholic Fatty Liver Disease Using Deep Learning Algorithms

Authors

DOI:

https://doi.org/10.32996/jcsts.2023.5.4.15

Abstract

Some occasional drinkers develop Nonalcoholic Fatty Liver Disease (NAFLD). Hepatocytes are the key indication of NAFLD. Western nations are seeing rising non-alcoholic fatty liver disease (NAFLD). About 25% of Americans have this chronic liver condition. Recent research estimates that 33.66 percent of Bangladeshi adults have fatty liver disease, affecting over 45 million people. This illness is a major cause of liver-related deaths. Thus, minimizing fatty liver disease risk is crucial. Failure to diagnose fatty liver early may cause serious medical consequences. This study examines fatty liver signs and disorders to help diagnose diabetes early. This study shows the association between fatty liver symptoms and illness to help diagnose early. Deep learning categorization methods are widely utilized to build patient risk prediction models. In this study, “used” was utilized. This article uses numerous deep learning approaches to predict fatty liver disease. Convolutional, Long Short-Team Memory, Recurrent, and Multilayer perception neural network designs were mentioned. This study calculates AUC, shows correlation matrices, and visualizes features, and the optimum method. Deep learning achieved 71% accuracy in a highly categorized environment.

Author Biographies

  • Sakib Rokoni, Department of Computer Science and Engineering BRAC University, Dhaka, Bangladesh

    Sakib Rokoni , Department Of Computer Science and Engineering BRAC University,
    66 Mohakhali, Dhaka, Bangladesh.
    Sakib Rokoni was born in Sirajganj, Rajshahi, Bangladesh. He received the Bachelor's
    degree in Computer Science and Engineering from Daffodil International University,
    Bangladesh, in 2023. Recently he got hired by a renowned IT company named Intelsense
    AI Limited as a Software Engineer. He has been working with the company
    from 01 September 2022 to 31 April 2023.
    He is currently pursuing the Master’s degree in Computer Science and Engineering from
    Brac University , Dhaka , Bangladesh. His current research interests include Machine learning, Deep Learning, Artificial intelligence, NLP, Computer Vision, FSO Networking.

  • Protik Kanu , Department of Computer Science and Engineering United International University, Dhaka, Bangladesh

    Protik Kanu has completed his BSc in Computer Science and Engineering from United International University, Bangladesh. He is currently working as an Information technology business analyst in MetLife Bangladesh. He is passionate about research & analytical activities. His areas of interest in research are cloud computing, Machine Learning, and informatics.

  • Urmi Ghosh , Department of Computer Science and Engineering Daffodil International University, Birulia, Savar, Dhaka, Bangladesh

    Urmi Ghosh is an undergraduate with a BSc. in Computer Science & Engineering and years of experience in Web Design & Developing. She is passionate about research & analytical activities. Her areas of interest in Machine Learning and Deep Learning.

  • Labib Rokoni , Department of Computer Science and Engineering BRAC University, Dhaka, Bangladesh

    Labib Rokoni, Department Of Electrical and Electronic Engineering, BRAC University,
    66 Mohakhali, Dhaka, Bangladesh.
    Labib Rokoni was born in Sirajganj, Rajshahi, Bangladesh. He is currently pursuing his Bachelor's
    degree in Electrical and Electronic Engineering in BRAC University,
    Bangladesh. His current research interests include Power Systems and Control Theory, Condition monitoring of electrical equipment, VLSI, Electronic System Design, Signal Processing and Machine Learning.

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Published

2023-12-03

Issue

Section

Research Article

How to Cite

Rokoni, S., Chistee, S. S., Kanu , P., Ghosh , U., Raian, A. A., & Rokoni , L. (2023). Detection of Nonalcoholic Fatty Liver Disease Using Deep Learning Algorithms. Journal of Computer Science and Technology Studies, 5(4), 150-159. https://doi.org/10.32996/jcsts.2023.5.4.15