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Data Science in the Medical Field

  • Book

  • September 2024
  • Elsevier Science and Technology
  • ID: 5955019

Data science has the potential to influence and improve fundamental services such as the healthcare sector. This book recognizes this fact by analyzing the potential uses of data science in healthcare. Every human body produces 2 TB of data each day. This information covers brain activity, stress level, heart rate, blood sugar level, and many other things. More sophisticated technology, such as data science, allows clinicians and researchers to handle such a massive volume of data to track the health of patients. The book focuses on the potential and the tools of data science to identify the signs of illness at an extremely early stage.

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Table of Contents

1. PPH 4.0: a privacy-preserving health 4.0 framework with machine learning and cellular automata
2. An automatic detection and severity levels of COVID-19 using convolutional neural network models
3. Biosensors and disease diagnostics in medical field
4. Brain tumor recognition and classification techniques
5. Identifying the features and attributes of various artificial intelligence-based healthcare models
6. Classification algorithms and optimization techniques in healthcare systems representation of dataset in medical applications
7. A knowledge discovery framework for COVID-19 disease from PubMed abstract using association rule hypergraph
8. Predictive analysis in healthcare using data science: leveraging big data for improved patient care
9. Data science in medical field: advantages, challenges, and opportunities
10. Decentralizing healthcare through parallel blockchain architecture: transmitting internet of medical things data through smart contracts in telecare medical information systems
11. Machine learning in heart disease prediction
12. U-Net-based approaches for brain tumor segmentation
13. Explainable image recognition models for aiding radiologists in clinical decision making
14. Prediction of heart failure disease using classification algorithms along with performance parameters
15. Cancer survival prediction using artificial intelligence: current status and future prospects
16. Heart disease prediction in pregnant women with diabetes using machine learning
17. Healthcare using image recognition technology
18. Integration of deep learning and blockchain technology for a smart healthcare record management system
19. Internet of things based smart health and attendance monitoring system in an institution for COVID-19
20. Medical diagnosis using image processing techniques
21. Harnessing the potential of predictive analytics and machine learning in healthcare: empowering clinical research and patient care
22. Predictive analysis in healthcare using data science
23. Recommender systems in healthcare-an emerging technology
24. Robotics: challenges and opportunities in healthcare
25. A new era of the healthcare industry using Internet of Medical Things
26. Single cell genomics unleashed: exploring the landscape of endometriosis with machine learning, gene expression profiling, and therapeutic target discovery
27. Analyzing the success of the thriving machine prediction model for Parkinson’s disease prognosis: a comprehensive review

Authors

Seifedine Kadry Department of Computer Science and Mathematics, Lebanese American University, Beirut, Lebanon; Department of Applied Data Science, Noroff University College, Kristiansand, Norway.

Seifedine Kadry is a Professor in the Department of Mathematics and Computer Science, at Norrof University College, in Norway. He has a Bachelor's degree in 1999 from Lebanese University, MS degree in 2002 from Reims University (France) and EPFL (Lausanne), PhD in 2007 from Blaise Pascal University (France), HDR degree in 2017 from Rouen University. At present, his research focuses on data Science, education using technology, system prognostics, stochastic systems, and applied mathematics. He is an ABET program evaluator for computing, and ABET program evaluator for Engineering Tech. He is a Fellow of IET, Fellow of IETE, and Fellow of IACSIT. He is a distinguished speaker of IEEE Computer Society.

Shubham Mahajan Assistant Professor, Amity School of Engineering and Technology (ASET) Amity University, India.

Dr. Shubham Mahajan is a distinguished academic and professional member of prestigious organizations such as IEEE, ACM, and IAENG. He earned his B.Tech. from Baba Ghulam Shah Badshah University, his M.Tech. from Chandigarh University, his Ph.D. from Shri Mata Vaishno Devi University in India, and his Postdoctoral degree in Applied Data Science at Noroff University College in Norway. Currently, he is working as an Assistant Professor at Amity University, Haryana, India.

Dr. Mahajan specializes in artificial intelligence, image processing and segmentation, data mining, and machine learning, holding eleven Indian patents along with one patent each from Australia and Germany.