Home Mathematics Artificial Intelligence in Healthcare
book: Artificial Intelligence in Healthcare
Book
Licensed
Unlicensed Requires Authentication

Artificial Intelligence in Healthcare

Clinical Decision Support and Modeling
  • Dominic Etli
Language: English
Published/Copyright: 2025
View more publications by Mercury Learning

About this book

The field of healthcare is being transformed by artificial intelligence (AI). Professionals need to comprehend the potential impact of AI on clinical decision support and epidemiological modeling. This comprehensive guide helps bridge the gap between theory and practice, providing readers with the knowledge and skills needed to leverage AI in healthcare.

The book covers a broad range of topics, from the basics of AI and machine learning to the creation and assessment of clinical decision support systems. It also covers the use of state-of-the-art AI methods for disease surveillance and outbreak prediction. Through a mix of theoretical explanations, practical examples, and hands-on exercises, readers will learn how to prepare and manipulate clinical and epidemiological datasets, build, and implement cutting-edge AI solutions, and address the ethical considerations and challenges of applying AI in healthcare.

What makes this book unique is its combination of expert insights from a practitioner’s perspective, real-world case studies, and a practical approach to walk readers through the process of developing and implementing AI solutions. Additional online resources, like datasets, code samples, and case studies, further enrich the learning experience.

Whether you are a healthcare professional looking to enhance patient outcomes, a data scientist striving to create innovative AI solutions, or a student eager to explore the frontiers of healthcare technology, this book is an essential resource.

Author / Editor information

Dr. Dominic Etli is a clinician and data scientist who applies his dual background in data science and clinical practice to develop machine learning models that optimize clinical delivery and predict clinical outcomes. He holds a Doctor of Nursing Practice (DNP) degree and a Master of Science in Data Science, equipping him with the skills to bridge the gap between healthcare and technology. With over 27 years of experience in healthcare and clinical practice, he has expertise in data analysis, team leadership, and risk assessment, as well as proficiency in Python, PyTorch, SQL, and Azure. He leverages his academic credentials and passion for teaching to instruct and mentor graduate students in clinical epidemiology and advanced pathophysiology at Purdue University and Roseman University of Health Sciences. Dr. Etli designs and delivers courses that emphasize practical data analysis skills and hands-on learning of data science best practices.


Publicly Available Download PDF
i

Publicly Available Download PDF
vii

Requires Authentication Unlicensed

Licensed
xv

Requires Authentication Unlicensed

Licensed
xix

Requires Authentication Unlicensed

Licensed
1

Requires Authentication Unlicensed

Licensed
31

Requires Authentication Unlicensed

Licensed
55

Requires Authentication Unlicensed

Licensed
71

Requires Authentication Unlicensed

Licensed
159

Requires Authentication Unlicensed

Licensed
237

Requires Authentication Unlicensed

Licensed
289

Requires Authentication Unlicensed

Licensed
383

Requires Authentication Unlicensed

Licensed
433

Requires Authentication Unlicensed

Licensed
469

Requires Authentication Unlicensed

Licensed
480

Requires Authentication Unlicensed

Licensed
497

Publishing information
Pages and Images/Illustrations in book
eBook published on:
November 14, 2025
eBook ISBN:
9781501521539
Paperback published on:
November 14, 2025
Paperback ISBN:
9781501523779
Pages and Images/Illustrations in book
Front matter:
15
Main content:
435
Illustrations:
100
Downloaded on 22.11.2025 from https://www.degruyterbrill.com/document/doi/10.1515/9781501521539/html
Scroll to top button