2021
DOI: 10.1016/j.susoc.2021.04.003
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Applications of Artificial Intelligence (AI) for cardiology during COVID-19 pandemic

Abstract: Background and aims Artificial Intelligence (AI) shows extensive capabilities to impact different healthcare areas during the COVID-19 pandemic positively. This paper tries to assess the capabilities of AI in the field of cardiology during the COVID-19 pandemic. This technology is useful to provide advanced technology-based treatment in cardiology as it can help analyse and measure the functioning of the human heart. Methods We have studied a good number of research pap… Show more

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Cited by 31 publications
(21 citation statements)
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References 104 publications
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“…It helps to identify various health conditions and activities of users for smart home and healthcare applications. In [96] the authors tried to access the capabilities of AI for predicting congestive heart failure for the COVID-19 patients. AI can help to provide advanced cardiac treatment, and to analyze-/ measure the functioning of the human heart.…”
Section: A Things Layermentioning
confidence: 99%
“…It helps to identify various health conditions and activities of users for smart home and healthcare applications. In [96] the authors tried to access the capabilities of AI for predicting congestive heart failure for the COVID-19 patients. AI can help to provide advanced cardiac treatment, and to analyze-/ measure the functioning of the human heart.…”
Section: A Things Layermentioning
confidence: 99%
“…Pinter et al [106] Multi-layered perceptron Predictions of mortality rate and infected cases Aminu et al [107] Deep neural networks Detection of people with COVID-19 Magar et al [108] Ensemble techniques Virus-antibody sequence analysis and patients' Identification Zeng et al [109] Extreme Gradient Boosting (XGBoost) Forecasting of patient survival probability Ashraf et al [110] Machine & deep learning models Predict the severity of disease or chances of death Shah et al [111] Convolutional neural network (CNN) COVID-19 detection from X-ray images Prakash et al [112] Autoregressive Integrated Moving Average Impact analysis of various policies Rathod et al [113] AI Prediction models Effective crisis preparedness and management Ullah et al [114] Logistic Regression and Support Vector Machine Classification of patients with/without COVID-19 Rathod et al [115] SVM, RProp, and Decision tree Detection of abnormal data for effective analysis Hu et al [116] Spectral Clustering (SC) algorithm Feasible analysis model for the treatment & diagnosis Rashed et al [117] Long short-term memory (LSTM) network Provides public awareness about the risks of COVID-19 Singh et al [118] ResNet152V2 and VGG16 CNN Reduce the high false-negative results of the RT-PCR Saverino et al [119] Digital and artificial intelligence platform (DAIP) Changes implementation in rehabilitation services Peddinti et al [120] Convolutional Neural Network (CNN) Detection of COVID-19 cases in public places Malla et al [121] Ensemble deep learning model Real-time sentiment analysis of COVID-19 data Lella et al [122] Convolutional Neural Network (CNN) model Respiratory sound classification for patient identification Haleem et al [123] Artificial neuronal networks (ANN) Predictions of survival of COVID-19 patients Hashimi et al [124] Deep learning models Tracking and identifying potential virus spreaders Amaral et al [125] Artificial neuronal networks (ANN) forecasting and monitoring the progress of Covid-19 Zgheib et al [126] Collection of ensemble learning methods Detecting COVID-19 virus based on patient's demographics Ferrari et al [127] Bayesian framework Predictions about the behavior of the COVID-19 epidemic Almalki et al [128] COVID Inception-ResNet model (CoVIRNet) Automatic diagnosis of the COVID-19 patients Umair et al …”
Section: Ai Technique Used Purpose In the Context Of Covid-19 Pandemicmentioning
confidence: 99%
“…Therefore, technologies with virtual reality (VR) [ 5 ], the internet of things (IoT), remote health monitoring systems [ 6 ], and artificial intelligence (AI) are used to prevent the spread of the epidemic and to facilitate its resolution. AI with various machine learning and deep learning algorithms can help in the field of health with applications and prevent the spread of the virus or take precautions [ 7 10 ].…”
Section: Introductionmentioning
confidence: 99%