Prediction of Omicron Virus Using Combined Extended Convolutional and Recurrent Neural Networks Technique on CT-Scan Images.

Q3 Immunology and Microbiology
Anand Kumar Gupta, Asadi Srinivasulu, Kamal Kant Hiran, Goddindla Sreenivasulu, Sivaram Rajeyyagari, Madhusudhana Subramanyam
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引用次数: 1

Abstract

COVID-19 has sparked a global pandemic, with a variety of inflamed instances and deaths increasing on an everyday basis. Researchers are actively increasing and improving distinct mathematical and ML algorithms to forecast the infection. The prediction and detection of the Omicron variant of COVID-19 brought new issues for the health fraternity due to its ubiquity in human beings. In this research work, two learning algorithms, namely, deep learning (DL) and machine learning (ML), were developed to forecast the Omicron virus infections. Automatic disease prediction and detection have become crucial issues in medical science due to rapid population growth. In this research study, a combined Extended CNN-RNN research model was developed on a chest CT-scan image dataset to predict the number of +ve and -ve cases of Omicron virus infections. The proposed research model was evaluated and compared against the existing system utilizing a dataset of 16,733-sample training and testing CT-scan images collected from the Kaggle repository. This research article aims to introduce a combined ML and DL technique based on the combination of an Extended Convolutional Neural Network (ECNN) and an Extended Recurrent Neural Network (ERNN) to diagnose and predict Omicron virus-infected cases automatically using chest CT-scan images. To overcome the drawbacks of the existing system, this research proposes a combined research model that is ECNN-ERNN, where ECNN is used for the extraction of deep features and ERNN is used for exploration using extracted features. A dataset of 16,733 Omicron computer tomography images was used as a pilot assessment for this proposed prototype. The investigational experiment results show that the projected prototype provides 97.50% accuracy, 98.10% specificity, 98.80% of AUC, and 97.70% of F1-score. To the last, the study outlines the advantages being offered by the proposed model with respect to other existing models by comparing different parameters of validation such as accuracy, error rate, data size, time complexity, and execution time.

Abstract Image

Abstract Image

Abstract Image

结合扩展卷积和循环神经网络技术在ct扫描图像上预测组粒病毒。
COVID-19引发了全球大流行,各种炎症病例和死亡人数每天都在增加。研究人员正在积极地增加和改进不同的数学和机器学习算法来预测感染。新冠病毒欧米克隆变体的预测和检测由于其在人类中的普遍存在,给卫生界带来了新的问题。本研究开发了深度学习(DL)和机器学习(ML)两种学习算法来预测欧米克隆病毒感染。由于人口的快速增长,疾病的自动预测和检测已成为医学科学的关键问题。在本研究中,在胸部ct扫描图像数据集上开发了一个扩展CNN-RNN联合研究模型,用于预测+ve和-ve欧米克隆病毒感染病例的数量。利用从Kaggle存储库收集的16,733个样本训练和测试ct扫描图像数据集,对所提出的研究模型进行了评估,并与现有系统进行了比较。本文旨在介绍一种基于扩展卷积神经网络(ECNN)和扩展递归神经网络(ERNN)相结合的机器学习和深度学习技术,利用胸部ct扫描图像自动诊断和预测欧米克隆病毒感染病例。为了克服现有系统的不足,本研究提出了一种组合研究模型ECNN-ERNN,其中ECNN用于提取深层特征,ERNN用于利用提取的特征进行探索。一个包含16733张Omicron计算机断层扫描图像的数据集被用作该原型的试点评估。调查实验结果表明,投影原型的准确率为97.50%,特异性为98.10%,AUC为98.80%,f1评分为97.70%。最后,通过比较不同的验证参数,如准确性、错误率、数据大小、时间复杂度和执行时间,研究概述了所提出的模型相对于其他现有模型所提供的优势。
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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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
51
审稿时长
18 weeks
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