Retrospective study of deep learning to reduce noise in non-contrast head CT images.

Comput Med Imaging Graph

Systems Medicine and Bioengineering, Houston Methodist Cancer Center, Houston Methodist Hospital and Department of Radiology, Weill Cornell Medicine, 6670 Bertner Ave, Houston, TX 77030, USA; The Ting Tsung and Wei Fong Chao Center for BRAIN, Houston Methodist Hospital, 6670 Bertner Ave, Houston, TX 77030, USA; Department of Radiology, Houston Methodist Institute for Academic Medicine, 6670 Bertner Ave, Houston, TX 77030, USA; Department of Neuroscience and Experimental Therapeutics, Texas A&M University College of Medicine, 8447 Riverside Parkway, Suite 1005, Bryan, TX 77807, USA. Electronic address:

Published: December 2021

Purpose: Presented herein is a novel CT denoising method uses a skip residual encoder-decoder framework with group convolutions and a novel loss function to improve the subjective and objective image quality for improved disease detection in patients with acute ischemic stroke (AIS).

Materials And Methods: In this retrospective study, confirmed AIS patients with full-dose NCCT head scans were randomly selected from a stroke registry between 2016 and 2020. 325 patients (67 ± 15 years, 176 men) were included. 18 patients each with 4-7 NCCTs performed within 5-day timeframe (83 total scans) were used for model training; 307 patients each with 1-4 NCCTs performed within 5-day timeframe (380 total scans) were used for hold-out testing. In the training group, a mean CT was created from the patient's co-registered scans for each input CT to train a rotation-reflection equivariant U-Net with skip and residual connections, as well as a group convolutional neural network (SRED-GCNN) using a custom loss function to remove image noise. Denoising performance was compared to the standard Block-matching and 3D filtering (BM3D) method and RED-CNN quantitatively and visually. Signal-to-noise ratio (SNR) and contrast-to-noise (CNR) were measured in manually drawn regions-of-interest in grey matter (GM), white matter (WM) and deep grey matter (DG). Visual comparison and impact on spatial resolution were assessed through phantom images.

Results: SRED-GCNN reduced the original CT image noise significantly better than BM3D, with SNR improvements in GM, WM, and DG by 2.47x, 2.83x, and 2.64x respectively and CNR improvements in DG/WM and GM/WM by 2.30x and 2.16x respectively. Compared to the proposed SRED-GCNN, RED-CNN reduces noise effectively though the results are visibly blurred. Scans denoised by the SRED-GCNN are shown to be visually clearer with preserved anatomy.

Conclusion: The proposed SRED-GCNN model significantly reduces image noise and improves signal-to-noise and contrast-to-noise ratios in 380 unseen head NCCT cases.

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Source
http://dx.doi.org/10.1016/j.compmedimag.2021.101996DOI Listing

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