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Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN
by
Feng, XinMiao
, Zhang, Jing
, Lu, HongYuan
in
Analysis
/ Artificial neural networks
/ Cardiorespiratory
/ Cardiovascular diseases
/ CNN
/ COVID-19
/ COVID-19 - diagnosis
/ Data collection
/ Data processing
/ Diagnosis
/ Early Diagnosis
/ EKG
/ Electrocardiogram
/ Electrocardiography
/ Electrocardiography - instrumentation
/ Epidemics
/ Evaluation
/ Health care facilities
/ Health Informatics
/ Health policy
/ Health risks
/ Heart beat
/ Heart rate
/ Humans
/ Information Systems and Communication Service
/ IoT
/ Management of Computing and Information Systems
/ Medical policy
/ Medical research
/ Medicine
/ Medicine & Public Health
/ Medicine, Experimental
/ Mortality
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Parameter robustness
/ Parameter sensitivity
/ Patients
/ Pattern analysis
/ Pattern generation
/ Performance evaluation
/ Predictive modeling
/ Public health
/ Remote patient
/ Respiration
/ Respiratory rate
/ Respiratory tract diseases
/ Risk factors
/ Sensitivity analysis
/ Sensor data processing
/ Sensor informatics and disease prediction
/ Sensors
/ Strategic planning (Business)
/ Telemedicine
/ Variability
/ Viral infections
/ Wearable Electronic Devices
/ Wearable technology
2024
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Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN
by
Feng, XinMiao
, Zhang, Jing
, Lu, HongYuan
in
Analysis
/ Artificial neural networks
/ Cardiorespiratory
/ Cardiovascular diseases
/ CNN
/ COVID-19
/ COVID-19 - diagnosis
/ Data collection
/ Data processing
/ Diagnosis
/ Early Diagnosis
/ EKG
/ Electrocardiogram
/ Electrocardiography
/ Electrocardiography - instrumentation
/ Epidemics
/ Evaluation
/ Health care facilities
/ Health Informatics
/ Health policy
/ Health risks
/ Heart beat
/ Heart rate
/ Humans
/ Information Systems and Communication Service
/ IoT
/ Management of Computing and Information Systems
/ Medical policy
/ Medical research
/ Medicine
/ Medicine & Public Health
/ Medicine, Experimental
/ Mortality
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Parameter robustness
/ Parameter sensitivity
/ Patients
/ Pattern analysis
/ Pattern generation
/ Performance evaluation
/ Predictive modeling
/ Public health
/ Remote patient
/ Respiration
/ Respiratory rate
/ Respiratory tract diseases
/ Risk factors
/ Sensitivity analysis
/ Sensor data processing
/ Sensor informatics and disease prediction
/ Sensors
/ Strategic planning (Business)
/ Telemedicine
/ Variability
/ Viral infections
/ Wearable Electronic Devices
/ Wearable technology
2024
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Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN
by
Feng, XinMiao
, Zhang, Jing
, Lu, HongYuan
in
Analysis
/ Artificial neural networks
/ Cardiorespiratory
/ Cardiovascular diseases
/ CNN
/ COVID-19
/ COVID-19 - diagnosis
/ Data collection
/ Data processing
/ Diagnosis
/ Early Diagnosis
/ EKG
/ Electrocardiogram
/ Electrocardiography
/ Electrocardiography - instrumentation
/ Epidemics
/ Evaluation
/ Health care facilities
/ Health Informatics
/ Health policy
/ Health risks
/ Heart beat
/ Heart rate
/ Humans
/ Information Systems and Communication Service
/ IoT
/ Management of Computing and Information Systems
/ Medical policy
/ Medical research
/ Medicine
/ Medicine & Public Health
/ Medicine, Experimental
/ Mortality
/ Neural networks
/ Neural Networks, Computer
/ Pandemics
/ Parameter robustness
/ Parameter sensitivity
/ Patients
/ Pattern analysis
/ Pattern generation
/ Performance evaluation
/ Predictive modeling
/ Public health
/ Remote patient
/ Respiration
/ Respiratory rate
/ Respiratory tract diseases
/ Risk factors
/ Sensitivity analysis
/ Sensor data processing
/ Sensor informatics and disease prediction
/ Sensors
/ Strategic planning (Business)
/ Telemedicine
/ Variability
/ Viral infections
/ Wearable Electronic Devices
/ Wearable technology
2024
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Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN
Journal Article
Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN
2024
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Overview
This research study demonstrates an efficient scheme for early detection of cardiorespiratory complications in pandemics by Utilizing Wearable Electrocardiogram (ECG) sensors for pattern generation and Convolution Neural Networks (CNN) for decision analytics. In health-related outbreaks, timely and early diagnosis of such complications is conclusive in reducing mortality rates and alleviating the burden on healthcare facilities. Existing methods rely on clinical assessments, medical history reviews, and hospital-based monitoring, which are valuable but have limitations in terms of accessibility, scalability, and timeliness, particularly during pandemics. The proposed scheme commences by deploying wearable ECG sensors on the patient’s body. These sensors collect data by continuously monitoring the cardiac activity and respiratory patterns of the patient. The collected raw data is then transmitted securely in a wireless manner to a centralized server and stored in a database. Subsequently, the stored data is assessed using a preprocessing process which extracts relevant and important features like heart rate variability and respiratory rate. The preprocessed data is then used as input into the CNN model for the classification of normal and abnormal cardiorespiratory patterns. To achieve high accuracy in abnormality detection the CNN model is trained on labeled data with optimized parameters. The performance of the proposed scheme is evaluated and gauged using different scenarios, which shows a robust performance in detecting abnormal cardiorespiratory patterns with a sensitivity of 95% and specificity of 92%. Prominent observations, which highlight the potential for early interventions include subtle changes in heart rate variability and preceding respiratory distress. These findings show the significance of wearable ECG technology in improving pandemic management strategies and informing public health policies, which enhances preparedness and resilience in the face of emerging health threats.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
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