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Review
. 2024 Dec;44(12):e240095.
doi: 10.1148/rg.240095.

State-of-the-Art Deep Learning CT Reconstruction Algorithms in Abdominal Imaging

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Review

State-of-the-Art Deep Learning CT Reconstruction Algorithms in Abdominal Imaging

Achille Mileto et al. Radiographics. 2024 Dec.

Abstract

The implementation of deep neural networks has spurred the creation of deep learning reconstruction (DLR) CT algorithms. DLR CT techniques encompass a spectrum of deep learning-based methodologies that operate during the different steps of the image creation, prior to or after the traditional image formation process (eg, filtered backprojection [FBP] or iterative reconstruction [IR]), or alternatively by fully replacing FBP or IR techniques. DLR algorithms effectively facilitate the reduction of image noise associated with low photon counts from reduced radiation dose protocols. DLR methods have emerged as an effective solution to ameliorate limitations observed with prior CT image reconstruction algorithms, including FBP and IR algorithms, which are not able to preserve image texture and diagnostic performance at low radiation dose levels. An additional advantage of DLR algorithms is their high reconstruction speed, hence targeting the ideal triad of features for a CT image reconstruction (ie, the ability to consistently provide diagnostic-quality images and achieve radiation dose imaging levels as low as reasonably possible, with high reconstruction speed). An accumulated body of evidence supports the clinical use of DLR algorithms in abdominal imaging across multiple CT imaging tasks. The authors explore the technical aspects of DLR CT algorithms and examine various approaches to image synthesis in DLR creation. The clinical applications of DLR algorithms are highlighted across various abdominal CT imaging domains, with emphasis on the supporting evidence for diverse clinical tasks. An overview of the current limitations of and outlook for DLR algorithms for CT is provided. ©RSNA, 2024.

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Conflict of interest statement

Disclosures of conflicts of interest.—: J.W.R. Honorarium and reimbursement for travel for visiting professor day from Eastern Virginia Medical School; reimbursement for travel to American College of Radiology Blue Ribbon Panel on Fluoroscopy Safety from RSNA. J.M.L. Grant or contract from Samsung Medicine, GE Healthcare, Bayer, CMS, STARmed, RF Medical, and Philips; consulting fees from Samsung Medicine; payment or honoraria for lectures, presentations, speakers bureaus, manuscript writing, or educational events from Bayer, Gerbert, GE Healthcare, STARmed, and Samsung Medicine. All other authors, the editor, and the reviewers have disclosed no relevant relationships.

References

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