AMIKOMNET: Novel Structure for a Deep Learning Model to Enhance COVID-19 Classification Task Performance

Muh Hanafi
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Abstract

Since early 2020, coronavirus has spread extensively throughout the globe. It was first detected in Wuhan, a province in China. Many researchers have proposed various models to solve problems related to COVID-19 detection. As traditional medical approaches take a lot of time to detect the virus and require specific laboratory tests, the adoption of artificial intelligence (AI), including machine learning, might play an important role in handling the problem. A great deal of research has seen the adoption of AI succeed in the early detection of COVID-19 using X-ray images. Unfortunately, the majority of deep learning adoption for COVID-19 detection has the shortcomings of high error detection and high computation costs. In this study, we employed a hybrid model using an auto-encoder (AE) and a convolutional neural network (CNN) (named AMIKOMNET) with a small number of layers and parameters. We implemented an ensemble learning mechanism in the AMIKOMNET model using Adaboost with the aim of reducing error detection in COVID-19 classification tasks. The experimental results for the binary class show that our model achieved high effectiveness, with 96.90% accuracy, 95.06% recall, 94.67% F1-score, and 96.03% precision. The experimental result for the multiclass achieved 95.13% accuracy, 94.93% recall, 95.75% F1-score, and 96.19% precision. The adoption of Adaboost in AMIKOMNET for the binary class increased the effectiveness of the model to 98.45% accuracy, 96.16% recall, 95.70% F1-score, and 96.87% precision. The adoption of Adaboost in AMIKOMNET in the multiclass classification task also saw an increase in performance, with an accuracy of 96.65%, a recall of 94.93%, an F1-score of 95.76%, and a precision of 96.19%. The implementation of AE to handle image feature extraction combined with a CNN used to handle dimensional image feature reduction achieved outstanding performance when compared to previous work using a deep learning platform. Exploiting Adaboost also increased the effectiveness of the AMIKOMNET model in detecting COVID-19.
AMIKOMNET:提高 COVID-19 分类任务性能的深度学习模型新结构
自 2020 年初以来,冠状病毒已在全球广泛传播。它首次在中国武汉被检测到。许多研究人员提出了各种模型来解决与 COVID-19 检测相关的问题。由于传统医学方法需要花费大量时间来检测病毒,并且需要特定的实验室测试,因此采用人工智能(AI),包括机器学习,可能会在处理该问题方面发挥重要作用。大量研究表明,人工智能的应用成功地利用 X 光图像对 COVID-19 进行了早期检测。遗憾的是,大多数用于 COVID-19 检测的深度学习都存在检测错误率高和计算成本高的缺点。在本研究中,我们采用了一种混合模型,该模型使用了自动编码器(AE)和卷积神经网络(CNN)(命名为 AMIKOMNET),层数和参数较少。我们利用 Adaboost 在 AMIKOMNET 模型中实施了一种集合学习机制,目的是减少 COVID-19 分类任务中的错误检测。二元分类的实验结果表明,我们的模型取得了很高的效率,准确率为 96.90%,召回率为 95.06%,F1 分数为 94.67%,精度为 96.03%。多类别的实验结果显示,准确率为 95.13%,召回率为 94.93%,F1 分数为 95.75%,精度为 96.19%。在 AMIKOMNET 中对二元分类采用 Adaboost 后,模型的有效性提高到了 98.45%的准确率、96.16% 的召回率、95.70% 的 F1 分数和 96.87% 的精确度。AMIKOMNET 在多类分类任务中采用 Adaboost 后,性能也有所提高,准确率达到 96.65%,召回率达到 94.93%,F1 分数达到 95.76%,精确率达到 96.19%。与之前使用深度学习平台的工作相比,使用 AE 处理图像特征提取,并结合 CNN 处理图像特征降维,取得了出色的性能。利用 Adaboost 还提高了 AMIKOMNET 模型检测 COVID-19 的效率。
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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