AI in Disease Detection: Advancements and Applications

AI in Disease Detection: Advancements and Applications

AI in Disease Detection: Advancements and Applications

Author: Rajesh Singh (Editor), Anita Gehlot (Editor), Navjot Rathour (Editor), Shaik Vaseem Akram (Editor)

Publisher finelybook 出版社:‏ ‎ Wiley-IEEE Press

Edition 版本:‏ ‎ 1st edition

Publication Date 出版日期:‏ ‎ 2025-01-29

Language 语言: ‎ English

Print Length 页数: ‎ 400 pages

ISBN-10: ‎ 1394278667

ISBN-13: ‎ 9781394278664

Book Description

Comprehensive resource encompassing recent developments, current use cases, and future opportunities for AI in disease detection

AI in Disease Detection discusses the integration of artificial intelligence to revolutionize disease detection approaches, with case studies of AI in disease detection as well as insight into the opportunities and challenges of AI in healthcare as a whole. The book explores a wide range of individual AI components such as computer vision, natural language processing, and machine learning as well as the development and implementation of AI systems for efficient practices in data collection, model training, and clinical validation.

This book assists readers in assessing big data in healthcare and determining the drawbacks and possibilities associated with the implementation of AI in disease detection; categorizing major applications of AI in disease detection such as cardiovascular disease detection, cancer diagnosis, neurodegenerative disease detection, and infectious disease control, as well as implementing distinct AI methods and algorithms with medical data including patient records and medical images, and understanding the ethical and social consequences of AI in disease detection such as confidentiality, bias, and accessibility to healthcare.

Sample topics explored in AI in Disease Detection include:

  • Legal implication of AI in healthcare, with approaches to ensure privacy and security of patients and their data
  • Identification of new biomarkers for disease detection, prediction of disease outcomes, and customized treatment plans depending on patient characteristics
  • AI’s role in disease surveillance and outbreak detection, with case studies of its current usage in real-world scenarios
  • Clinical validation processes for AI disease detection models and how they can be validated for accuracy and effectiveness

Delivering excellent coverage of the subject, AI in Disease Detection is an essential up-to-date reference for students, healthcare professionals, academics, and practitioners seeking to understand the possible applications of AI in disease detection and stay on the cutting edge of the most recent breakthroughs in the field.

From the Back Cover

Comprehensive resource encompassing recent developments, current use cases, and future opportunities for AI in disease detection

AI in Disease Detection discusses the integration of artificial intelligence to revolutionize disease detection approaches, with case studies of AI in disease detection as well as insight into the opportunities and challenges of AI in healthcare as a whole. The book explores a wide range of individual AI components such as computer vision, natural language processing, and machine learning as well as the development and implementation of AI systems for efficient practices in data collection, model training, and clinical validation.

This book assists readers in assessing big data in healthcare and determining the drawbacks and possibilities associated with the implementation of AI in disease detection; categorizing major applications of AI in disease detection such as cardiovascular disease detection, cancer diagnosis, neurodegenerative disease detection, and infectious disease control, as well as implementing distinct AI methods and algorithms with medical data including patient records and medical images, and understanding the ethical and social consequences of AI in disease detection such as confidentiality, bias, and accessibility to healthcare.

Sample topics explored in AI in Disease Detection include:

  • Legal implication of AI in healthcare, with approaches to ensure privacy and security of patients and their data
  • Identification of new biomarkers for disease detection, prediction of disease outcomes, and customized treatment plans depending on patient characteristics
  • AI’s role in disease surveillance and outbreak detection, with case studies of its current usage in real-world scenarios
  • Clinical validation processes for AI disease detection models and how they can be validated for accuracy and effectiveness

Delivering excellent coverage of the subject, AI in Disease Detection is an essential up-to-date reference for students, healthcare professionals, academics, and practitioners seeking to understand the possible applications of AI in disease detection and stay on the cutting edge of the most recent breakthroughs in the field.

About the Author

Dr. Rajesh Singh, Professor, Electronics & Communication Engineering and Director, Research & Innovation, Uttaranchal University, India. Dr. Singh was featured among the top ten inventors in 2010 to 2020 by Clarivate Analytics in “India’s Innovation Synopsis” in March 2021.

Dr. Anita Gehlot, Professor, Electronics & Communication Engineering and Head -Research and Innovation, Uttaranchal University, India.

Dr. Navjot Rathour, Associate Professor, Electronics & Communication Engineering, Chandigarh University, Mohali, India.

Dr. Shaik Vaseem Akram, Assistant Professor, Electronics & Communication Engineering, S R University, Telangana, India.

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