4.7 Article

Deep learning-based denoising of low-dose SPECT myocardial perfusion images: quantitative assessment and clinical performance

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SPRINGER
DOI: 10.1007/s00259-021-05614-7

关键词

SPECT; Myocardial perfusion imaging; Denoising; Low-dose; Deep learning

资金

  1. University of Geneva
  2. Swiss National Science Foundation
  3. SNSF [320030_176052]
  4. Swiss National Science Foundation (SNF) [320030_176052] Funding Source: Swiss National Science Foundation (SNF)

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This study aimed to investigate the feasibility of dose reduction in SPECT myocardial perfusion imaging without compromising diagnostic accuracy. A deep learning approach was used to synthesize full-dose images from low-dose images at different reduction levels, with quantitative assessment conducted using established metrics and clinical evaluation.
Purpose This work was set out to investigate the feasibility of dose reduction in SPECT myocardial perfusion imaging (MPI) without sacrificing diagnostic accuracy. A deep learning approach was proposed to synthesize full-dose images from the corresponding low-dose images at different dose reduction levels in the projection space. Methods Clinical SPECT-MPI images of 345 patients acquired on a dedicated cardiac SPECT camera in list-mode format were retrospectively employed to predict standard-dose from low-dose images at half-, quarter-, and one-eighth-dose levels. To simulate realistic low-dose projections, 50%, 25%, and 12.5% of the events were randomly selected from the list-mode data through applying binomial subsampling. A generative adversarial network was implemented to predict non-gated standard-dose SPECT images in the projection space at the different dose reduction levels. Well-established metrics, including peak signal-to-noise ratio (PSNR), root mean square error (RMSE), and structural similarity index metrics (SSIM) in addition to Pearson correlation coefficient analysis and clinical parameters derived from Cedars-Sinai software were used to quantitatively assess the predicted standard-dose images. For clinical evaluation, the quality of the predicted standard-dose images was evaluated by a nuclear medicine specialist using a seven-point (- 3 to + 3) grading scheme. Results The highest PSNR (42.49 +/- 2.37) and SSIM (0.99 +/- 0.01) and the lowest RMSE (1.99 +/- 0.63) were achieved at a half-dose level. Pearson correlation coefficients were 0.997 +/- 0.001, 0.994 +/- 0.003, and 0.987 +/- 0.004 for the predicted standard-dose images at half-, quarter-, and one-eighth-dose levels, respectively. Using the standard-dose images as reference, the Bland-Altman plots sketched for the Cedars-Sinai selected parameters exhibited remarkably less bias and variance in the predicted standard-dose images compared with the low-dose images at all reduced dose levels. Overall, considering the clinical assessment performed by a nuclear medicine specialist, 100%, 80%, and 11% of the predicted standard-dose images were clinically acceptable at half-, quarter-, and one-eighth-dose levels, respectively. Conclusion The noise was effectively suppressed by the proposed network, and the predicted standard-dose images were comparable to reference standard-dose images at half- and quarter-dose levels. However, recovery of the underlying signals/information in low-dose images beyond a quarter of the standard dose would not be feasible (due to very poor signal-to-noise ratio) which will adversely affect the clinical interpretation of the resulting images.

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