Treffer: [Use of artificial intelligence for image reconstruction].
IEEE Trans Med Imaging. 2017 Dec;36(12):2536-2545. (PMID: 28574346)
Phys Med Biol. 2019 Jul 11;64(14):145003. (PMID: 31117060)
J Xray Sci Technol. 2012;20(1):1-10. (PMID: 22398583)
Biomed Eng Online. 2018 Nov 27;17(1):175. (PMID: 30482231)
IEEE Trans Med Imaging. 2017 Dec;36(12):2524-2535. (PMID: 28622671)
Sci Rep. 2017 Aug 31;7(1):10117. (PMID: 28860628)
Biomed Opt Express. 2017 Jan 09;8(2):679-694. (PMID: 28270976)
Eur Radiol. 2019 May;29(5):2185-2195. (PMID: 30377791)
IEEE Trans Med Imaging. 2017 Dec;36(12):2479-2486. (PMID: 28922116)
Nat Rev Clin Oncol. 2017 Dec;14(12):749-762. (PMID: 28975929)
CA Cancer J Clin. 2019 Mar;69(2):127-157. (PMID: 30720861)
J Biomed Phys Eng. 2018 Mar 01;8(1):53-64. (PMID: 29732340)
Sci Rep. 2017 Oct 24;7(1):13868. (PMID: 29066731)
J Digit Imaging. 2018 Aug;31(4):441-450. (PMID: 29047035)
Med Phys. 2017 Oct;44(10):e360-e375. (PMID: 29027238)
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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.