An Artificial Intelligence Algorithm to Optimize the Classification of the Hepatitis Type

IF 0.3 Q4 ECONOMICS
Hiba Hathal Khalil, Sabah Manfi Rada
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引用次数: 0

Abstract

Hepatitis is one of the diseases that has become more developed in recent years in terms of the high number of infections. Hepatitis causes inflammation that destroys liver cells, and it occurs as a result of viruses, bacteria, blood transfusions, and others. There are five types of hepatitis viruses, which are (A, B, C, D, E) according to their severity. The disease varies by type. Accurate and early diagnosis is the best way to prevent disease, as it allows infected people to take preventive steps so that they do not transmit the difference to other people, and diagnosis using artificial intelligence gives an accurate and rapid diagnostic result. Where the analytical method of the data relied on the radial basis network to diagnose the disease, in addition to using the classification of the regression tree as well as the use of the genetic algorithm to improve the classification accuracy of both methods and by comparing the methods used to find out the most efficient methods of classification through criteria. Classification error, mean square root error, and average absolute relative error, and concluded that the experimental results are that the methods are good in terms of classification, as they gave results with less classification of error, and that the radial basis network was superior to the classification regression tree, and that the addition of the genetic algorithm led to an improvement classification accuracy. Paper type: Research paper.
一种优化肝炎类型分类的人工智能算法
肝炎是近年来发病率较高的疾病之一。肝炎引起炎症,破坏肝细胞,它是由病毒、细菌、输血和其他因素引起的。肝炎病毒有五种类型,根据其严重程度分为(A、B、C、D、E)。这种疾病因类型而异。准确和早期诊断是预防疾病的最佳途径,因为它使感染者能够采取预防措施,使他们不会将差异传播给其他人,而使用人工智能的诊断可以提供准确和快速的诊断结果。其中对数据的分析方法依赖于径向基网络进行疾病诊断,除了利用回归树的分类以及利用遗传算法来提高两种方法的分类准确率外,还通过对所使用的方法进行比较,通过准则找出最有效的分类方法。分类误差,均平方根误差,平均绝对相对误差,并得出实验结果表明,这些方法在分类方面是好的,因为它们给出的结果分类误差较小,并且径向基网络优于分类回归树,并且遗传算法的加入使得分类精度得到了提高。论文类型:研究论文。
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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自引率
20.00%
发文量
15
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