Data Modelling and Analytics for the Internet of Medical Things
Herausgeber: Pandey, Rajiv; Chiong, Raymond; Maurya, Pratibha
Data Modelling and Analytics for the Internet of Medical Things
Herausgeber: Pandey, Rajiv; Chiong, Raymond; Maurya, Pratibha
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The Internet of Medical Things (IoMT) is transforming the management of diseases, improving diseases diagnosis and treatment methods, and reducing healthcare cost and errors. This book integrates the architectural, conceptual, and technological aspects of IoMT, providing the reader with a comprehensive grasp of the IoMT landscape.
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The Internet of Medical Things (IoMT) is transforming the management of diseases, improving diseases diagnosis and treatment methods, and reducing healthcare cost and errors. This book integrates the architectural, conceptual, and technological aspects of IoMT, providing the reader with a comprehensive grasp of the IoMT landscape.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 306
- Erscheinungstermin: 22. Dezember 2023
- Englisch
- Abmessung: 234mm x 156mm x 19mm
- Gewicht: 640g
- ISBN-13: 9781032414232
- ISBN-10: 1032414235
- Artikelnr.: 69032564
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 306
- Erscheinungstermin: 22. Dezember 2023
- Englisch
- Abmessung: 234mm x 156mm x 19mm
- Gewicht: 640g
- ISBN-13: 9781032414232
- ISBN-10: 1032414235
- Artikelnr.: 69032564
Rajiv Pandey, Senior Member IEEE, is a faculty member at Amity Institute of Information Technology, Amity University, Uttar Pradesh, Lucknow Campus, India. Pratibha Maurya is an assistant professor at Amity Institute of Information Technology, Amity University, Uttar Pradesh, Lucknow Campus, India. Raymond Chiong is currently an associate professor with the University of Newcastle, Australia.
Part I. IoMT Datasets and Storage. 1. Remote Health Monitoring in the Era
of the Internet of Medical Things. 2. Diabetic health care data analytics
and application. 3. Blockchain for Handling Medical Data. 4. Cloud
computing for complex IoMT data. 5. The potential of IoMT Devices in Early
Detection of Suicidal Ideation. Part II. Machine Learning for Medical
Things. 6. Artificial Intelligence and Internet of Medical Things in the
Diagnosis and Prediction of Disease. 7. Predicting Cardiovascular Diseases
Using Machine Learning: A Systematic Review of the Literature. 8.
Identification of Unipolar Depression Using Boosting Algorithms. 9.
Development of EEG based Identification of Learning Disability using
Machine Learning Algorithms. 10. Deep Learning Approaches for IoMT. 11
Machine Learning and Deep Learning Techniques to Classify Depressed
Patients from Healthy, Using Brain Signals from Electroencephalogram (EEG).
12. Dimensionality Reduction for IoMT Devices Using PCA. 13. Face Mask
Detection System. Part III. IoMT: Data Analytics and Use Cases. 14. An
IoT-based Real-time ECG Monitoring Platform for Multiple Patients. 15.
Study on Anomaly Detection in Clinical Laboratory Data Using Internet of
Medical Things. 16. Computational Intelligence Framework for Improving
Quality of Life in Cancer Patients. 17. Major Depressive Disorder Detection
using Data Science and Wearable Connected Devices.
of the Internet of Medical Things. 2. Diabetic health care data analytics
and application. 3. Blockchain for Handling Medical Data. 4. Cloud
computing for complex IoMT data. 5. The potential of IoMT Devices in Early
Detection of Suicidal Ideation. Part II. Machine Learning for Medical
Things. 6. Artificial Intelligence and Internet of Medical Things in the
Diagnosis and Prediction of Disease. 7. Predicting Cardiovascular Diseases
Using Machine Learning: A Systematic Review of the Literature. 8.
Identification of Unipolar Depression Using Boosting Algorithms. 9.
Development of EEG based Identification of Learning Disability using
Machine Learning Algorithms. 10. Deep Learning Approaches for IoMT. 11
Machine Learning and Deep Learning Techniques to Classify Depressed
Patients from Healthy, Using Brain Signals from Electroencephalogram (EEG).
12. Dimensionality Reduction for IoMT Devices Using PCA. 13. Face Mask
Detection System. Part III. IoMT: Data Analytics and Use Cases. 14. An
IoT-based Real-time ECG Monitoring Platform for Multiple Patients. 15.
Study on Anomaly Detection in Clinical Laboratory Data Using Internet of
Medical Things. 16. Computational Intelligence Framework for Improving
Quality of Life in Cancer Patients. 17. Major Depressive Disorder Detection
using Data Science and Wearable Connected Devices.
Part I. IoMT Datasets and Storage. 1. Remote Health Monitoring in the Era
of the Internet of Medical Things. 2. Diabetic health care data analytics
and application. 3. Blockchain for Handling Medical Data. 4. Cloud
computing for complex IoMT data. 5. The potential of IoMT Devices in Early
Detection of Suicidal Ideation. Part II. Machine Learning for Medical
Things. 6. Artificial Intelligence and Internet of Medical Things in the
Diagnosis and Prediction of Disease. 7. Predicting Cardiovascular Diseases
Using Machine Learning: A Systematic Review of the Literature. 8.
Identification of Unipolar Depression Using Boosting Algorithms. 9.
Development of EEG based Identification of Learning Disability using
Machine Learning Algorithms. 10. Deep Learning Approaches for IoMT. 11
Machine Learning and Deep Learning Techniques to Classify Depressed
Patients from Healthy, Using Brain Signals from Electroencephalogram (EEG).
12. Dimensionality Reduction for IoMT Devices Using PCA. 13. Face Mask
Detection System. Part III. IoMT: Data Analytics and Use Cases. 14. An
IoT-based Real-time ECG Monitoring Platform for Multiple Patients. 15.
Study on Anomaly Detection in Clinical Laboratory Data Using Internet of
Medical Things. 16. Computational Intelligence Framework for Improving
Quality of Life in Cancer Patients. 17. Major Depressive Disorder Detection
using Data Science and Wearable Connected Devices.
of the Internet of Medical Things. 2. Diabetic health care data analytics
and application. 3. Blockchain for Handling Medical Data. 4. Cloud
computing for complex IoMT data. 5. The potential of IoMT Devices in Early
Detection of Suicidal Ideation. Part II. Machine Learning for Medical
Things. 6. Artificial Intelligence and Internet of Medical Things in the
Diagnosis and Prediction of Disease. 7. Predicting Cardiovascular Diseases
Using Machine Learning: A Systematic Review of the Literature. 8.
Identification of Unipolar Depression Using Boosting Algorithms. 9.
Development of EEG based Identification of Learning Disability using
Machine Learning Algorithms. 10. Deep Learning Approaches for IoMT. 11
Machine Learning and Deep Learning Techniques to Classify Depressed
Patients from Healthy, Using Brain Signals from Electroencephalogram (EEG).
12. Dimensionality Reduction for IoMT Devices Using PCA. 13. Face Mask
Detection System. Part III. IoMT: Data Analytics and Use Cases. 14. An
IoT-based Real-time ECG Monitoring Platform for Multiple Patients. 15.
Study on Anomaly Detection in Clinical Laboratory Data Using Internet of
Medical Things. 16. Computational Intelligence Framework for Improving
Quality of Life in Cancer Patients. 17. Major Depressive Disorder Detection
using Data Science and Wearable Connected Devices.