Machine Learning, Big Data, and IoT for Medical Informatics focuses on the latest techniques adopted in the field of medical informatics. In medical informatics, machine learning, big data, and IOT-based techniques play a significant role in disease diagnosis and its prediction. In the medical field, the structure of data is equally important for accurate predictive analytics due to heterogeneity of data such as ECG data, X-ray data, and image data. Thus, this book focuses on the usability of machine learning, big data, and IOT-based techniques in handling structured and unstructured data. It also emphasizes on the privacy preservation techniques of medical data. This volume can be used as a reference book for scientists, researchers, practitioners, and academicians working in the field of intelligent medical informatics. In addition, it can also be used as a reference book for both undergraduate and graduate courses such as medical informatics, machine learning, big data, and IoT.
Les mer
1. Predictive analytics and machine learning for medical informatics: A survey of tasks and techniques 2. Geolocation-aware IoT and cloud-fog-based solutions for healthcare 3. Machine learning vulnerability in medical imaging 4. Skull stripping and tumor detection using 3D U-Net 5. Cross color dominant deep autoencoder for quality enhancement of laparoscopic video: A hybrid deep learning and range-domain filtering-based approach 6. Estimating the respiratory rate from ECG and PPG using machine learning techniques 7. Machine learning-enabled Internet of Things for medical informatics 8. Edge detection-based segmentation for detecting skin lesions 9. A review of deep learning approaches in glove-based gesture classification 10. An ensemble approach for evaluating the cognitive performance of human population at high altitude 11. Machine learning in expert systems for disease diagnostics in human healthcare 12. An entropy-based hybrid feature selection approach for medical datasets 13. Machine learning for optimizing healthcare resources 14. Interpretable semi-supervised classifier for predicting cancer stages 15. Applications of blockchain technology in smart healthcare: An overview 16. Prediction of leukemia by classification and clustering techniques 17. Performance evaluation of fractal features toward seizure detection from electroencephalogram signals 18. Integer period discrete Fourier transform-based algorithm for the identification of tandem repeats in the DNA sequences 19. A blockchain solution for the privacy of patients' medical data 20. A novel approach for securing e-health application in a cloud environment 21. An ensemble classifier approach for thyroid disease diagnosis using the AdaBoostM algorithm 22. A review of deep learning models for medical diagnosis 23. Machine learning in precision medicine
Les mer
Provides a thorough accounting of semantic information and structure of data with simple and straightforward examples.
Explains the uses of CNN, Deep Learning and extreme machine learning concepts for the design and development of predictive diagnostic systems. Includes several privacy preservation techniques for medical data. Presents the integration of Internet of Things with predictive diagnostic systems for disease diagnosis. Offers case studies and applications relating to machine learning, big data, and health care analysis.
Les mer

Produktdetaljer

ISBN
9780128217771
Publisert
2021-06-16
Utgiver
Elsevier Science Publishing Co Inc; Academic Press Inc
Vekt
930 gr
Høyde
235 mm
Bredde
191 mm
Aldersnivå
P, 06
Språk
Product language
Engelsk
Format
Product format
Heftet
Antall sider
458

Series edited by

Om bidragsyterne

Dr. Pardeep Kumar is a Professor in the Department of Computer Science & Engineering at Jaypee University of Information Technology (JUIT), Wakanaghat. With more than 17 years of extensive experience in higher education, Dr. Kumar has served as Executive General Chair of 2016 Fourth International Conference on Parallel, Distributed and Grid Computing (PDGC) and 2024 Eighth International Conference on Parallel, Distributed and Grid Computing (PDGC) , Guest Editor of Special Issue on "Robust and Secure Data Hiding Techniques for Telemedicine Applications", Multimedia Tools and Applications: An International Journal, Lead Guest Editor of Special Issue on "Recent Developments in Parallel, Distributed and Grid Computing for Big Data", published in International Journal of Grid and Utility Computing, Guest Editor of Special Issue on "Advanced Techniques in Multimedia Watermarking", published in International Journal of Information and Computer Security. Dr. Kumar is an Associate Editor of IEEE Access Journal. Dr. Kumar’s research focus includes machine & deep learning optimized Internet of Things (IOT) solutions to real life complex problems; blockchain, Internet of Things, data science and artificial intelligence for smart cities including AI driven health and medical informatics, big data analytics. Dr. Kumar is an Associate Professor in the Department of Computer Engineering, School of Technology Management and Engineering, NMIMS University, Chandigarh Campus, Mumbai, India. Prior to joining NMIMS University, Dr. Kumar was associated with Jaypee University of Information Technology (JUIT), Wakanaghat, Himachal Pradesh, India. He completed his PhD in Computer Science & Engineering from Birla institute of Technology, Mesra, Ranchi. He has more than 17 years of teaching and research experience, has published over 120 research papers in reputed journals, edited more than eight books, and has presented at various national and international conferences. His primary area of research includes medical informatics, meta-heuristic algorithms, data clustering, swarm intelligence, pattern recognition, medical data analytics. Mohamed A. Tawhid earned his PhD in Applied Mathematics from the University of Maryland Baltimore County, Maryland, United States. From 2000 to 2002, he was a postdoctoral fellow at the Faculty of Management, McGill University, Montreal, Quebec, Canada. Currently, he is a Professor at Thompson Rivers University, Kamloops, British Columbia, Canada. He has published more than 75 peer-reviewed research papers, 13 book chapters and edited four special issues in international journals. He has also co-authored a book published by Springer. His research has been funded by Natural Sciences and Engineering Research Council (NSERC) grants. Moreover, he has served on several journals' editorial boards and worked on several industrial projects in Canada. Fatos Xhafa, PhD in Computer Science, is Full Professor at the Technical University of Catalonia (UPC), Barcelona, Spain. He has held various tenured and visiting professorship positions. He was a Visiting Professor at the University of Surrey, UK (2019/2020), Visiting Professor at the Birkbeck College, University of London, UK (2009/2010) and a Research Associate at Drexel University, Philadelphia, USA (2004/2005). He was a Distinguished Guest Professor at Hubei University of Technology, China, for the duration of three years (2016-2019). Prof. Xhafa has widely published in peer reviewed international journals, conferences/workshops, book chapters, edited books and proceedings in the field (H-index 55). He has been awarded teaching and research merits by the Spanish Ministry of Science and Education, by IEEE conferences and best paper awards. Prof. Xhafa has an extensive editorial service. He is founder and Editor-In-Chief of Internet of Things - Journal - Elsevier (Scopus and Clarivate WoS Science Citation Index) and of International Journal of Grid and Utility Computing, (Emerging Sources Citation Index), and AE/EB Member of several indexed Int'l Journals. Prof. Xhafa is a member of IEEE Communications Society, IEEE Systems, Man & Cybernetics Society and Founder Member of Emerging Technical Subcommittee of Internet of Things. His research interests include IoT and Cloud-to-thing continuum computing, massive data processing and collective intelligence, optimization, security and trustworthy computing and machine learning, among others. He can be reached at fatos@cs.upc.edu. Please visit also http://www.cs.upc.edu/~fatos/ and at http://dblp.uni-trier.de/pers/hd/x/Xhafa:Fatos