A rapid literature review on ensemble algorithms for COVID-19 classification using image-based exams

Elaine Pinto Portela, O. Cortes, Josenildo Costa da Silva
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引用次数: 0

Abstract

The world recently has faced the COVID-19 pandemic, a disease caused by the severe acute respiratory syndrome. The main features of this disease are the rapid spread and high-level mortality. The illness led to the rapid development of a vaccine that we know can fight against the virus; however, we do not know the actual vaccine’s effectiveness. Thus, the early detection of the disease is still necessary to provide a suitable course of action. To help with early detection, intelligent methods such as machine learning and computational intelligence associated with computer vision algorithms can be used in a fast and efficient classification process, especially using ensemble methods that present similar efficiency to traditional machine learning algorithms in the worst-case scenario. In this context, this review aims to answer four questions: (i) the most used ensemble technique, (ii) the accuracy those methods reached, (iii) the classes involved in the classification task, (iv) the main machine learning algorithms and models, and (v) the dataset used in the experiments.
基于图像检查的COVID-19分类集成算法的快速文献综述
世界最近面临新冠肺炎大流行,这是一种由严重急性呼吸综合征引起的疾病。这种疾病的主要特点是传播迅速,死亡率高。这种疾病导致了一种我们知道可以对抗病毒的疫苗的快速开发;然而,我们不知道疫苗的实际有效性。因此,对该疾病的早期检测对于提供合适的行动方案仍然是必要的。为了帮助早期检测,可以在快速高效的分类过程中使用智能方法,如机器学习和与计算机视觉算法相关的计算智能,特别是使用在最坏情况下表现出与传统机器学习算法相似效率的集成方法。在这种情况下,这篇综述旨在回答四个问题:(i)最常用的集成技术,(ii)这些方法达到的准确性,(iii)分类任务中涉及的类别,(iv)主要的机器学习算法和模型,以及(v)实验中使用的数据集。
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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CiteScore
3.30
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