Practical AI for healthcare professionals : machine learning with Numpy, Scikit-learn, and TensorFlow / Abhinav Suri.
2022
R859.7.A78
Linked e-resources
Linked Resource
Online Access
Concurrent users
Unlimited
Authorized users
Authorized users
Document Delivery Supplied
Can lend chapters, not whole ebooks
Details
Title
Practical AI for healthcare professionals : machine learning with Numpy, Scikit-learn, and TensorFlow / Abhinav Suri.
Author
Suri, Abhinav, author.
Edition
1st edition.
ISBN
9781484277805 (electronic bk.)
1484277805 (electronic bk.)
9781484277799
1484277791
1484277805 (electronic bk.)
9781484277799
1484277791
Published
[United States] : Apress, 2022.
Language
English
Description
1 online resource (266 pages)
Item Number
10.1007/978-1-4842-7780-5 doi
9781484277799
9781484277805
9781484277799
9781484277805
Call Number
R859.7.A78
Dewey Decimal Classification
610.285/63
Summary
Use Artificial Intelligence (AI) to analyze and diagnose what previously could only be handled by trained medical professionals. This book gives an introduction to practical AI, focusing on real-life medical problems, how to solve them with actual code, and how to evaluate the efficacy of these solutions. You'll start by learning how to diagnose problems as ones that can and cannot be solved with AI or computer science algorithms. If you're not familiar with those algorithms, that's not a problem. You'll learn the basics of algorithms and neural networks and when each should be applied. Then you'll tackle the essential parts of basic Python programming relevant to data processing and making AI programs. The TensorFlow library alogn with Numpy and Scikit-Learn are covered, too. Once you've mastered those basic computer science concepts, you can dive into three projects with code, implementation details and explanation, and diagnostic utility analysis. These projects give you the change to explore using machine learning algorithms for diagnosing diabetes from patient data, using basic neural networks for heart disease prediction from cardiac data, and using convolutional networks for brain tumor segmentation from MRI scans The topics and projects covered not only encompass areas of the medical field where AI is already playing a major role but also are engineered to cover as much as possible of AI that is relevant to medical diagnostics. Along the way, readers can expect to learn data processing, how to conceptualize problems that can be solved by AI, and how to program solutions to problems using modern libraries, such as TensorFlow. Physicians and other healthcare professionals who can master these skills will be able to lead AI-based research and diagnostic tool development, ultimately benefiting countless patients. What You'll Learn Distinguish between problems that currently can and cannot be solved with AI Master programming concepts not familiar to physicians, such as libraries, coding, and creating and training ML models Perform dataset analysis with decision trees, SVMs, and neural networks. Who This Book Is For Physicians and other healthcare professionals curious about AI and interested in leading medical innovation initiatives. Additionally, software engineers working on healthcare related projects involving AI.
Note
Includes index.
Access Note
Access limited to authorized users.
Copyright Information
© Copyright 2022 Abhinav Suri. 2022
Digital File Characteristics
text file
Issuing Body Note
Made available through: Safari, an O'Reilly Media Company.
Source of Description
Online resource; Title from title page (viewed December 13, 2021).
Added Corporate Author
O'Reilly for Higher Education (Firm), distributor.
Safari, an O'Reilly Media Company.
Safari, an O'Reilly Media Company.
Available in Other Form
Practical AI for Healthcare Professionals
Linked Resources
Online Access
Record Appears in
Online Resources > Ebooks
All Resources
All Resources
Table of Contents
Chapter 1: Introduction to AI and its Use Cases- Chapter 2: Computational Thinking
Chapter 3: Overview of Programming
Chapter 4: A Brief Tour of Machine Learning Algorithms. -Chapter 5: Project #1 Neural Networks & Heart Disease
Chapter 6: Project #2 CNNs & Brain Tumor Detection
Chapter 7: The Future of Healthcare and AI.
Chapter 3: Overview of Programming
Chapter 4: A Brief Tour of Machine Learning Algorithms. -Chapter 5: Project #1 Neural Networks & Heart Disease
Chapter 6: Project #2 CNNs & Brain Tumor Detection
Chapter 7: The Future of Healthcare and AI.