Accelerating veterinary low field MRI acquisitions using the deep learning based denoising solution HawkAI.

Journal: Scientific reports
PMID:

Abstract

Magnetic resonance imaging (MRI) has changed veterinary diagnosis but its long-sequence time can be problematic, especially because animals need to be sedated during the exam. Unfortunately, shorter scan times implies a fall in overall image quality and diagnosis reliability. Therefore, we developed a Generative Adversarial Net-based denoising algorithm called HawkAI. In this study, a Standard-Of-Care (SOC) MRI-sequence and then a faster sequence were acquired and HawkAI was applied to the latter. Radiologists were then asked to qualitatively evaluate the two proposed images based on different factors using a Likert scale (from 1 being strong preference for HawkAI to 5 being strong preference for SOC). The aim was to prove that they had at least no preference between the two sequences in terms of Signal-to-Noise Ratio (SNR) and diagnosis. They slightly preferred HawkAI in terms of SNR (confidence interval (CI) being [1.924-2.176]), had no preference in terms of Artifacts Presence, Diagnosis Pertinence and Lesion Conspicuity (respective CIs of [2.933-3.113], [2.808-3.132] and [2.941-3.119]), and a very slight preference for SOC in terms of Spatial Resolution and Image Contrast (respective CIs of [3.153-3.453] and [3.072-3.348]). This shows the possibility to acquire images twice as fast without any major drawback compared to a longer acquisition.

Authors

  • Jamil Nour Eddin
    AI/Computer Vision Department, Hawkcell, 69280, Marcy-L'Étoile, France. jamil.nour@hawkcell.com.
  • Martin Blanchard
    AI/Computer Vision Department, Hawkcell, 69280, Marcy-L'Étoile, France. martin.blanchard@hawkcell.com.
  • Julien Guevar
    Neurology Department, AniCura Tierklinik, 3600, Thun, Switzerland.
  • Valentina Curcio
    AI/Computer Vision Department, Hawkcell, 69280, Marcy-L'Étoile, France.
  • Hugo Dorez
    Univ Lyon, INSA-Lyon, Université Claude Bernard Lyon 1, UJM-Saint Etienne, CNRS, Inserm, CREATIS UMR 5220, U1206, Lyon, 69621, France.