In recent years, deep learning has shown great potential in
transforming various fields including healthcare. With the abundance
of healthcare data being generated every day, there is a pressing need
to develop efficient algorithms that can process and analyze this data
to improve patient care and treatment outcomes. Handbook of Deep
Learning Models for Healthcare Data Processing: Disease Prediction,
Analysis, and Applications covers a wide range of deep learning
models, techniques, and applications in healthcare data processing,
analysis, and disease prediction, providing a comprehensive overview
of the field. It focuses on the practical application of deep learning
models in healthcare and offers step-by-step instructions for building
and deploying models and using real-world examples. The handbook
discusses the potential future applications of deep learning models in
healthcare, such as precision medicine, personalized treatment, and
clinical decision support. It also addresses the ethical
considerations associated with the use of deep learning models in
healthcare, such as privacy, security, and bias. It provides technical
details on deep learning models, including their architecture,
training methods, and optimization techniques, making it useful for
data scientists and researchers. Written to be a comprehensive guide
for healthcare professionals, researchers, and data analysts, this
handbook is an essential need for those who are interested in using
deep learning models to analyze and process healthcare data. It is
also suitable for those who have a basic understanding of machine
learning and want to learn more about the latest advancements in deep
learning in healthcare.
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Disease Prediction, Analysis, and Applications
Produktdetaljer
ISBN
9781040366004
Publisert
2025
Utgave
1. utgave
Utgiver
Taylor & Francis
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter