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A Novel Parametric Model for the Prediction and Analysis of the COVID-19 Casualties.一种用于预测和分析新冠病毒病死亡病例的新型参数模型。
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Explainable Machine Learning for Early Assessment of COVID-19 Risk Prediction in Emergency Departments.用于急诊科COVID-19风险预测早期评估的可解释机器学习
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Diagnosing Coronavirus Disease 2019 (COVID-19): Efficient Harris Hawks-Inspired Fuzzy K-Nearest Neighbor Prediction Methods.诊断2019冠状病毒病(COVID-19):基于高效哈里斯鹰优化的模糊K近邻预测方法
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Classification of COVID-19 individuals using adaptive neuro-fuzzy inference system.使用自适应神经模糊推理系统对新冠肺炎患者进行分类
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Clinical risk scores for the early prediction of severe outcomes in patients hospitalized for COVID-19.用于预测 COVID-19 住院患者严重结局的临床风险评分。
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COVID-19 cases prediction by using hybrid machine learning and beetle antennae search approach.基于混合机器学习和甲虫触角搜索算法的新型冠状病毒肺炎病例预测
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Deep Learning applications for COVID-19.用于新冠肺炎的深度学习应用。
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Deep-LSTM ensemble framework to forecast Covid-19: an insight to the global pandemic.用于预测新冠疫情的深度长短期记忆网络集成框架:对全球大流行的洞察
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Analysis and best parameters selection for person recognition based on gait model using CNN algorithm and image augmentation.基于卷积神经网络(CNN)算法和图像增强的步态模型的人体识别分析与最佳参数选择
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基于双列目标特征投影的径向核回归深度信念神经学习用于新冠病毒肺炎预测

Biserial targeted feature projection based radial kernel regressive deep belief neural learning for covid-19 prediction.

作者信息

Subash Chandra Bose S, Vinoth Kumar A, Premkumar Anitha, Deepika M, Gokilavani M

机构信息

Department of Information Technology, Guru Nanak College, Velachery, Chennai, Tamil Nadu India.

Department of Electronics and Communication Engineering, Dr MGR Educational and Research Institute, Chennai, Tamil Nadu India.

出版信息

Soft comput. 2023;27(3):1651-1662. doi: 10.1007/s00500-022-06943-x. Epub 2022 Mar 31.

DOI:10.1007/s00500-022-06943-x
PMID:35378723
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8968782/
Abstract

Coronavirus disease 2019 (COVID-19) is a highly infectious viral disease caused by the novel SARS-CoV-2 virus. Different prediction techniques have been developed to predict the coronavirus disease's existence in patients. However, the accurate prediction was not improved and time consumption was not minimized. In order to address these existing problems, a novel technique called Biserial Targeted Feature Projection-based Radial Kernel Regressive Deep Belief Neural Learning (BTFP-RKRDBNL) is introduced to perform accurate disease prediction with lesser time consumption. The BTFP-RKRDBNL techniques perform disease prediction with the help of different layers such as two visible layers namely input and layer and two hidden layers. Initially, the features and data are collected from the dataset and transmitted to the input layer. The Point Biserial Correlative Target feature projection is used to select relevant features and other irrelevant features are removed with minimizing the disease prediction time. Then the relevant features are sent to the hidden layer 2. Next, Radial Kernel Regression is applied to analyze the training features and testing disease features to identify the disease with higher accuracy and a lesser false positive rate. Experimental analysis is planned to measure the prediction accuracy, sensitivity, and specificity, and prediction time for different numbers of patients. The result illustrates that the method increases the prediction accuracy, sensitivity, and specificity by 10, 6, and 21% and reduces the prediction time by 10% as compared to state-of-the-art works.

摘要

2019冠状病毒病(COVID-19)是一种由新型SARS-CoV-2病毒引起的高传染性病毒性疾病。已经开发了不同的预测技术来预测冠状病毒病在患者中的存在情况。然而,预测的准确性并未提高,且时间消耗也未最小化。为了解决这些现有问题,引入了一种名为基于双列靶向特征投影的径向核回归深度信念神经学习(BTFP-RKRDBNL)的新技术,以在更短的时间消耗下进行准确的疾病预测。BTFP-RKRDBNL技术借助不同的层来进行疾病预测,例如两个可见层,即输入层和中间层,以及两个隐藏层。最初,从数据集中收集特征和数据并传输到输入层。使用点二列相关靶向特征投影来选择相关特征,并在最小化疾病预测时间的同时去除其他不相关特征。然后将相关特征发送到隐藏层2。接下来,应用径向核回归来分析训练特征和测试疾病特征,以更高的准确率和更低的假阳性率识别疾病。计划进行实验分析,以测量不同数量患者的预测准确率、敏感性和特异性以及预测时间。结果表明,与现有技术相比,该方法的预测准确率、敏感性和特异性分别提高了10%、6%和21%,预测时间减少了10%。