Detection of Nonalcoholic Fatty Liver Disease Using Deep Learning Algorithms

Sakib Rokoni, Sihab Sarar Chistee, Protik Kanu, Urmi Ghosh, Ashik Ahamed Raian, Labib Rokoni
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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.
利用深度学习算法检测非酒精性脂肪肝
一些偶尔饮酒的人会患上非酒精性脂肪性肝病。肝细胞是NAFLD的关键指征。西方国家的非酒精性脂肪性肝病(NAFLD)呈上升趋势。大约25%的美国人患有这种慢性肝病。最近的研究估计,33.66%的孟加拉国成年人患有脂肪肝,影响超过4500万人。这种疾病是肝脏相关死亡的主要原因。因此,尽量减少脂肪肝疾病的风险是至关重要的。未能及早诊断脂肪肝可能导致严重的医疗后果。这项研究检查了脂肪肝的症状和紊乱,以帮助早期诊断糖尿病。这项研究显示了脂肪肝症状和疾病之间的联系,有助于早期诊断。深度学习分类方法被广泛用于建立患者风险预测模型。在本研究中,使用了“used”。本文使用多种深度学习方法来预测脂肪肝疾病。提到了卷积、长短时记忆、循环和多层感知神经网络设计。研究了AUC的计算、相关矩阵的显示、特征的可视化,并给出了优化方法。深度学习在高度分类的环境中达到了71%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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