DownloadThe Portobello Bookshop Gift Guide 2024

Machine Learning in Cancer Research With Applications in Colon Cancer and Big Data Analysis

Qiang Xu author Murad Al-Rajab author Zhongyu Lu author Lamogha Chiazor author

Format:Hardback

Publisher:IGI Global

Published:28th May '21

Currently unavailable, and unfortunately no date known when it will be back

Machine Learning in Cancer Research With Applications in Colon Cancer and Big Data Analysis cover

Cancer continues to be a growing problem as it is the foremost cause of death worldwide, killing millions of people each year. The number of people battling cancer continues to increase, owing to different reasons, such as lifestyle choices. Clinically, determining the cause of cancer is very challenging and often inaccurate. Incorporating efficient and accurate algorithms to detect cancer cases is becoming increasingly beneficial for scientists in computer science and healthcare, as well as a long-term benefit for doctors, patients, clinic practitioners, and more. Specifically, an automation of computation in machine learning could be a solution in the next generation of big data science technology.

Machine Learning in Cancer Research With Applications in Colon Cancer and Big Data Analysis presents algorithms that have been developed to evaluate big data approaches and cancer research. The chapters include artificial intelligence and machine learning approaches, as well as case studies to solve the predictive issues in colon cancer research. This book includes concepts and techniques used to run tasks in an automated manner with the intent to improve better accuracy in comparison with previous studies and methods. This book also covers the processes of research design, development, and outcome analytics in this field.

Doctors, IT consultants, IT specialists, medical software professionals, data scientists, researchers, computer scientists, healthcare practitioners, academicians, and students can benefit from this critical resource.

ISBN: 9781799873167

Dimensions: unknown

Weight: 633g

263 pages