Künstliche Intelligenz-unterstützte Behandlung in der Rheumatologie : Grundlagen, aktueller Stand und Ausblick [Artificial intelligence-supported treatment in rheumatology : Principles, current situation and perspectives]

Details

Serval ID
serval:BIB_C7A30F801807
Type
Article: article from journal or magazin.
Publication sub-type
Review (review): journal as complete as possible of one specific subject, written based on exhaustive analyses from published work.
Collection
Publications
Institution
Title
Künstliche Intelligenz-unterstützte Behandlung in der Rheumatologie : Grundlagen, aktueller Stand und Ausblick [Artificial intelligence-supported treatment in rheumatology : Principles, current situation and perspectives]
Journal
Zeitschrift fur Rheumatologie
Author(s)
Hügle T., Kalweit M.
ISSN
1435-1250 (Electronic)
ISSN-L
0340-1855
Publication state
Published
Issued date
12/2021
Peer-reviewed
Oui
Volume
80
Number
10
Pages
914-927
Language
german
Notes
Publication types: Journal Article ; Review
Publication Status: ppublish
Abstract
Computer-guided clinical decision support systems have been finding their way into practice for some time, mostly integrated into electronic medical records. The primary goals are to improve the quality of treatment, save time and avoid errors. These are mostly rule-based algorithms that recognize drug interactions or provide reminder functions. Through artificial intelligence (AI), clinical decision support systems can be disruptively further developed. New knowledge is constantly being created from data through machine learning in order to predict the individual course of a patient's disease, identify phenotypes or support treatment decisions. Such algorithms already exist for rheumatological diseases. Automated image recognition and disease prediction in rheumatoid arthritis are the most advanced; however, these have not yet been sufficiently tested or integrated into existing decision support systems. Rather than dictating the AI-assisted choice of treatment to the doctor, future clinical decision systems are seen as hybrid decision support, always involving both the expert and the patient. There is also a great need for security through comprehensible and auditable algorithms to sustainably guarantee the quality and transparency of AI-assisted treatment recommendations in the long term.
Keywords
Algorithms, Artificial Intelligence, Decision Support Systems, Clinical, Humans, Machine Learning, Rheumatology, Automated image recognition, Decision support, Decision systems, Treatment recommendations
Pubmed
Web of science
Open Access
Yes
Create date
19/10/2021 14:01
Last modification date
06/02/2024 8:18
Usage data