Does Deep Learning Reconstruction Improve Ureteral Stone Detection and Subjective Image Quality in the CT Images of Patients with Metal Hardware?

Journal: Journal of endourology
PMID:

Abstract

Diagnosing ureteral stones with low-dose CT in patients with metal hardware can be challenging because of image noise. The purpose of this study was to compare ureteral stone detection and image quality of low-dose and conventional CT scans with and without deep learning reconstruction (DLR) and metal artifact reduction (MAR) in the presence of metal hip prostheses. Ten urinary system combinations with 4 to 6 mm ureteral stones were implanted into a cadaver with bilateral hip prostheses. Each set was scanned under two different radiation doses (conventional dose [CD] = 115 mAs and ultra-low dose [ULD] = 6.0 mAs). Two scans were obtained for each dose as follows: one with and another without DLR and MAR. Two blinded radiologists ranked each image in terms of artifact, image noise, image sharpness, overall quality, and diagnostic confidence. Stone detection accuracy at each setting was calculated. ULD with DLR and MAR improved subjective image quality in all five domains ( < 0.05) compared with ULD. In addition, the subjective image quality for ULD with DLR and MAR was greater than the subjective image quality for CD in all five domains ( < 0.05). Stone detection accuracy of ULD improved with the application of DLR and MAR ( < 0.05). Stone detection accuracy of ULD with DLR and MAR was similar to CD ( > 0.25). DLR with MAR may allow the application of low-dose CT protocols in patients with hip prostheses. Application of DLR and MAR to ULD provided a stone detection accuracy comparable with CD, reduced radiation exposure by 94.8%, and improved subjective image quality.

Authors

  • Ruben Crew
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Jason Smith
    Physics Department and CSCU Center for Nanotechnology, Southern Connecticut State University, New Haven, CT, 06515, USA.
  • Mohammad Kassir
    Department of Interventional Radiology, Loma Linda University Health, Loma Linda, California, USA.
  • Ala'a Farkouh
    Department of Surgery, King Hussein Cancer Center, Amman, Jordan.
  • Kai Wen Cheng
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Bertha Escobar-Poni
    Department of Pathology and Human Anatomy, Loma Linda University Health, Loma Linda, California, USA.
  • Jun Ho Chung
    Loma Linda University, Loma Linda, CA, USA.
  • Uy Lae Kim
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Jammie-Lyn Quines
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Grant Sajdak
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Katya Hanessian
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Sikai Song
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Akin S Amasyali
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Zhamshid Okhunov
    Department of Urology, University of California Irvine, Orange, California, USA.
  • Udochukwo Oyoyo
    Department of Radiology, Loma Linda University Health, Loma Linda, California, USA.
  • D Daniel Baldwin
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.
  • Kerby Oberg
    Department of Pathology and Human Anatomy, Loma Linda University Health, Loma Linda, California, USA.
  • D Duane Baldwin
    Department of Urology, Loma Linda University Health, Loma Linda, California, USA.