Librarian View
LEADER 03264nam 2200361 i 4500
001
991008273361107546
005
20250314084823.0
008
241029s2023 sz a b 000 0 eng d
020
a| 9783031259272
020
z| 9783031259289
q| (eBook)
040
a| HK-SYU
b| eng
e| rda
c| HK-SYU
050
4
a| R859.7.A78
b| I587 2023
082
0
a| 616.0754028563
2| 23
092
0
a| 610.28563
b| INT 2023
245
0
0
a| Introduction to artificial intelligence /
c| Michail E. Klontzas, Salvatore Claudio Fanni, and Emanuele Neri, editors.
264
4
c| ©2023
264
1
a| Cham, Switzerland :
b| Springer Nature Switzerland AG,
c| [2023]
300
a| viii, 165 pages :
b| color illustrations ;
c| 21 cm.
336
a| text
b| txt
2| rdacontent
337
a| unmediated
b| n
2| rdamedia
338
a| volume
b| nc
2| rdacarrier
490
1
a| Imaging informatics for healthcare professionals series,
x| 2662-1541
504
a| Includes bibliographical references.
520
a| This book aims to provide physicians and scientists with the basics of Artificial Intelligence (AI) with a special focus on medical imaging. The contents of the book provide an introduction to the main topics of artificial intelligence currently applied on medical image analysis. The book starts with a chapter explaining the basic terms used in artificial intelligence for novice readers and embarks on a series of chapters each one of which provides the basics on one AI-related topic. The second chapter presents the programming languages and available automated tools that enable the development of AI applications for medical imaging. The third chapter endeavours to analyse the main traditional machine learning techniques, explaining algorithms such as random forests, support vector machines as well as basic neural networks. The applications of those machines on the analysis of radiomics data is expanded in the fourth chapter to allow the understanding of algorithms used to build classifiers for the diagnosis of disease processes with the use of radiomics. Chapter five provides the basics of natural language processing which has revolutionized the analysis of complex radiological reports and chapter six affords a succinct introduction to convolutional neural networks which have revolutionized medical image analysis enabling automated image-based diagnosis, image enhancement (e.g. denoising), protocolling etc. The penultimate chapter provides an introduction to data preprocessing for use in the aforementioned artificial intelligence applications. The book concludes with a chapter demonstrating AI-based tools already in radiological practice while providing an insight about the foreseeable future. It will be a valuable resource for radiologists, computer scientists and postgraduate students working on medical image analysis.
c| Back cover
650
0
a| Artificial intelligence
x| Medical applications.
650
0
a| Diagnostic imaging
x| Data processing.
700
1
a| Klontzas, Michail E.,
e| editor.
700
1
a| Fanni, Salvatore Claudio,
e| editor.
700
1
a| Neri, E.
q| (Emanuele),
e| editor.
830
0
a| Imaging informatics for healthcare professionals
910
a| nlw
b| kkl
c| wsl
998
a| book
b| 14-03-25
945
h| Principal
l| location
i| barcode
y| id
f| bookplate
a| callnoa
b| callnob
n| DSA325