Literature DB >> 33246273

Artificial intelligence in image reconstruction: The change is here.

Ramandeep Singh1, Weiwen Wu2, Ge Wang2, Mannudeep K Kalra3.   

Abstract

Innovations in CT have been impressive among imaging and medical technologies in both the hardware and software domain. The range and speed of CT scanning improved from the introduction of multidetector-row CT scanners with wide-array detectors and faster gantry rotation speeds. To tackle concerns over rising radiation doses from its increasing use and to improve image quality, CT reconstruction techniques evolved from filtered back projection to commercial release of iterative reconstruction techniques, and recently, of deep learning (DL)-based image reconstruction. These newer reconstruction techniques enable improved or retained image quality versus filtered back projection at lower radiation doses. DL can aid in image reconstruction with training data without total reliance on the physical model of the imaging process, unique artifacts of PCD-CT due to charge sharing, K-escape, fluorescence x-ray emission, and pulse pileups can be handled in the data-driven fashion. With sufficiently reconstructed images, a well-designed network can be trained to upgrade image quality over a practical/clinical threshold or define new/killer applications. Besides, the much smaller detector pixel for PCD-CT can lead to huge computational costs with traditional model-based iterative reconstruction methods whereas deep networks can be much faster with training and validation. In this review, we present techniques, applications, uses, and limitations of deep learning-based image reconstruction methods in CT.
Copyright © 2020. Published by Elsevier Ltd.

Keywords:  Artificial Intelligence; Computed tomography; Deep learning; Image reconstruction

Mesh:

Year:  2020        PMID: 33246273     DOI: 10.1016/j.ejmp.2020.11.012

Source DB:  PubMed          Journal:  Phys Med        ISSN: 1120-1797            Impact factor:   2.685


  3 in total

Review 1.  Artificial intelligence and machine learning for medical imaging: A technology review.

Authors:  Ana Barragán-Montero; Umair Javaid; Gilmer Valdés; Dan Nguyen; Paul Desbordes; Benoit Macq; Siri Willems; Liesbeth Vandewinckele; Mats Holmström; Fredrik Löfman; Steven Michiels; Kevin Souris; Edmond Sterpin; John A Lee
Journal:  Phys Med       Date:  2021-05-09       Impact factor: 2.685

2.  Radiologist-Trained and -Tested (R2.2.4) Deep Learning Models for Identifying Anatomical Landmarks in Chest CT.

Authors:  Parisa Kaviani; Bernardo C Bizzo; Subba R Digumarthy; Giridhar Dasegowda; Lina Karout; James Hillis; Nir Neumark; Mannudeep K Kalra; Keith J Dreyer
Journal:  Diagnostics (Basel)       Date:  2022-07-30

3.  Artificial intelligence in oncologic imaging.

Authors:  Melissa M Chen; Admir Terzic; Anton S Becker; Jason M Johnson; Carol C Wu; Max Wintermark; Christoph Wald; Jia Wu
Journal:  Eur J Radiol Open       Date:  2022-09-29
  3 in total

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