基于半监督机器学习算法的肝脏疾病预测

A. Rani, S. Nishanthini, D. Josephine, H. Venugopal, S. Nissi, V. Jacintha
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引用次数: 0

摘要

近年来,肝病已成为最常见的高致死率疾病之一。由于过度饮酒、吸入有害气体、食用受污染的食品、泡菜、麻醉品等多种因素,肝脏患者正在不断增加。肝脏疾病也会导致各种严重的疾病,包括肝癌。为了提高肝脏疾病分类的效率,本研究提出了一种半监督机器学习算法。正在研究使用肝脏患者数据集来开发预测肝脏疾病的分类算法。本研究采用混合支持向量机和基于K-Means算法的模型对患者的整个肝脏疾病进行检测。慢性肝病被定义为存在至少六个月的肝脏疾病。因此,所考虑的人群将被分类为肝病患者和非肝病患者。使用SVM分类器确定受肝脏疾病影响的个体数量,然后使用混合k均值聚类方法确定肝脏受影响的程度。因此,所提出的混合k -均值聚类模型的输出显示出较高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Liver Disease Prediction using Semi Supervised based Machine Learning Algorithm
Recently, liver disease is emerging as one of the most common diseases with high fatality rate. The number of liver affected patients are steadily increasing due to various factors such as excessive alcohol consumption, inhalation of hazardous fumes, eating tainted food, pickles, and narcotics. Liver disease can also lead to a variety of serious illnesses, including liver cancer. To enhance the process of liver disease classification, a semi supervised machine learning algorithm has been presented in this research work. The use of liver patient datasets in the development of classification algorithms to predict liver disease is being investigated. The proposed study employs hybrid SVM and K-Means algorithm-based model to examine the entire patients’ liver disease. Chronic liver disease is defined as a liver ailment that exist for at least six months. As a result, the considered population will be classifiers as liver disease affected and non-affected people. The SVM classifiers are used to determine the number of liver disease affected individuals, and then the hybrid k means clustering method is used to determine how much of the liver has been affected. As a consequence, the output from the proposed hybrid K-Means clustering model reveals high prediction accuracy.
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