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应用集成分类法诊断猴痘。

Monkeypox diagnosis using ensemble classification.

机构信息

Computer Engineering and Systems Dept., Faculty of Engineering, Mansoura University, Mansoura, Egypt.

Computer Engineering and Systems Dept., Faculty of Engineering, Mansoura University, Mansoura, Egypt.

出版信息

Artif Intell Med. 2023 Sep;143:102618. doi: 10.1016/j.artmed.2023.102618. Epub 2023 Jul 1.

Abstract

The world has recently been exposed to a fierce attack from many viral diseases, such as Covid-19, that exhausted medical systems around the world. Such attack had a negative impact not only on the health status of people or the high death rate, but also had a bad impact on the economic situation, which affected all countries of the world especially the poor and the developing ones. Monkeypox is one of the latest viral diseases that may cause a pandemic in the near future if not dealt and diagnosed with appropriately. This paper provides a new strategy for diagnosing monkeypox, which is called; Accurate Monkeypox Diagnosing Strategy (AMDS). The proposed AMDS consists of two phases, which are; (i) pre-processing and (ii) classification. During the pre-processing phase, the most effective feature are selected using Binary Tiki-Taka Algorithm (BTTA). On the other hand, in the classification phase, ensemble classification is used for diagnosing new cases, which combines evidence from three different new classifiers, namely; (a) Layered K-Nearest Neighbors (LKNN), (b) Statistical Naïve Bayes (SNB), and (c) Deep Learning Classifier (DLC). Moreover, the decisions of the proposed classifiers are merged in a new voting scheme called Fuzzified Voting Scheme (FVS). AMDS has been compared against recent diagnostic strategies. Experimental results have proven that AMDS outperforms other monkeypox diagnostic strategies as it introduces the most accurate diagnosis according to two different datasets.

摘要

世界最近受到了许多病毒性疾病的猛烈攻击,如 COVID-19,这些疾病使世界各地的医疗系统不堪重负。这种攻击不仅对人们的健康状况或高死亡率产生了负面影响,而且对经济状况也产生了不良影响,影响了世界上所有国家,尤其是贫穷和发展中国家。猴痘是最近的一种病毒性疾病,如果不加以适当处理和诊断,可能在不久的将来引发大流行。本文提出了一种诊断猴痘的新策略,称为“准确猴痘诊断策略(AMDS)”。所提出的 AMDS 由两个阶段组成,即:(i)预处理和(ii)分类。在预处理阶段,使用二进制 Tiki-Taka 算法(BTTA)选择最有效的特征。另一方面,在分类阶段,使用集成分类器对新病例进行诊断,该分类器结合了来自三个不同新分类器的证据,分别是:(a)分层 K-最近邻(LKNN),(b)统计朴素贝叶斯(SNB)和(c)深度学习分类器(DLC)。此外,所提出的分类器的决策在称为“模糊投票方案(FVS)”的新投票方案中合并。AMDS 与最近的诊断策略进行了比较。实验结果证明,AMDS 优于其他猴痘诊断策略,因为它根据两个不同的数据集提供了最准确的诊断。

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