Treffer: [Use of artificial intelligence for image reconstruction].

Title:
[Use of artificial intelligence for image reconstruction].
Transliterated Title:
Einsatz künstlicher Intelligenz für die Bildrekonstruktion.
Authors:
Hoeschen C; Institut für Medizintechnik, Fakultät für Elektro- und Informationstechnik, Otto-von-Guericke-Universität Magdeburg, Universitätsplatz 2, 39106, Magdeburg, Deutschland. christoph.hoeschen@ovgu.de.
Source:
Der Radiologe [Radiologe] 2020 Jan; Vol. 60 (1), pp. 15-23.
Publication Type:
Journal Article; Review
Language:
German
Journal Info:
Publisher: Springer Verlag Country of Publication: Germany NLM ID: 0401257 Publication Model: Print Cited Medium: Internet ISSN: 1432-2102 (Electronic) Linking ISSN: 0033832X NLM ISO Abbreviation: Radiologe Subsets: MEDLINE
Imprint Name(s):
Original Publication: Berlin : Springer Verlag
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Contributed Indexing:
Keywords: Computed tomography; Deep Learning; Dose reduction; Limitations; Machine Learning
Entry Date(s):
Date Created: 20200104 Date Completed: 20200207 Latest Revision: 20220412
Update Code:
20250114
DOI:
10.1007/s00117-019-00630-z
PMID:
31897503
Database:
MEDLINE

Weitere Informationen

Clinical/methodological Problem: In the reconstruction of three-dimensional image data, artifacts that interfere with the appraisal often occur as a result of trying to minimize the dose or due to missing data. Used iterative reconstruction methods are time-consuming and have disadvantages.
Standard Radiological Methods: These problems are known to occur in computed tomography (CT), cone beam CT, interventional imaging, magnetic resonance imaging (MRI) and nuclear medicine imaging (PET and SPECT).
Methodological Innovations: Using techniques based on the use of artificial intelligence (AI) in data analysis and data supplementation, a number of problems can be solved up to a certain extent.
Performance: The performance of the methods varies greatly. Since the generated image data usually look very good using the AI-based methods presented here while their results depend strongly on the study design, reliable comparable quantitative statements on the performance are not yet available in broad terms.
Evaluation: In principle, the methods of image reconstruction based on AI algorithms offer many possibilities for improving and optimizing three-dimensional image datasets. However, the validity strongly depends on the design of the respective study in the structure of the individual procedure. It is therefore essential to have a suitable test prior to use in clinical practice.
Practical Recommendations: Before the widespread use of AI-based reconstruction methods can be recommended, it is necessary to establish meaningful test procedures that can characterize the actual performance and applicability in terms of information content and a meaningful study design during the learning phase of the algorithms.