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Few shots transfer learning for universal SPECT denoising across diverse acquisition protocols

  • Boyang Pan
  • , Jianchen Pan
  • , Kexin Gan
  • , Yuting Shen
  • , Xiaoxiao Chen
  • , Langdi Zhong
  • , Hang Yang
  • , Jie Chen
  • , Laiping Xie
  • , Wei Guo
  • , Hongmin Li*
  • , Nan Jie Gong*
  • *Corresponding author for this work
  • East China Normal University
  • Third Military Medical University
  • RadioDynamic Medical
  • Tsinghua University

Research output: Contribution to journalArticlepeer-review

Abstract

Objective. Accelerated single photon emission computed tomography (SPECT) imaging, achieved by reducing either the number of projection angles or the acquisition time per angle, enhances clinical workflow efficiency but introduces elevated noise. This study aims to develop and validate a universal DL-based reconstruction framework that effectively generalizes across diverse, clinically-realistic SPECT acceleration protocols by overcoming the data scarcity challenge. Approach. SPECT bone scans from 103 patients were acquired under a standard scan (60 views, 12 s/view, 60v12s) followed by a fast scan using one of five acceleration protocols (60v6s, 60v3s, 30v12s, 30v6s, 16v12s). A U-Net-based reconstruction framework was implemented using three strategies: (1) single model, trained on individual acceleration protocol), (2) base model, trained on aggregated datasets from five acceleration protocols, and (3) transfer model, fine-tuned from the base model for protocol-specific optimization. Pixel-level accuracy and structural similarity were assessed using peak signal-to-noise ratio (PSNR), structural similarity index (SSIM) metrics, and maximum pixel value of lesions. Clinical evaluation of image quality, radionuclide detail, artifacts, and diagnostic confidence was conducted using a 5-point system. Main results. Quantitative evaluation showed the transfer model achieved better PSNR and SSIM across all protocols (highest 48.02 PSNR and 0.9918 SSIM in 30v6 s protocol). Qualitative analysis confirmed enhanced structural fidelity. Clinical evaluations rated the transfer model highest across metrics, with scores of 4.667 ± 0.508 (image quality, 30v12 s), 4.800 ± 0.250 (radionuclide detail, 60v6 s), 1.150 ± 0.173 (artifact reduction, 60v6 s), and 4.800 ± 0.250 (diagnostic confidence, 60v6 s), surpassing full-scan results in most cases. Significance. The proposed transfer learning (TL) framework effectively addressed data scarcity and improved reconstruction performance across diverse SPECT acceleration scenarios. The adoption of a TL strategy mitigates data scarcity by utilizing shared features and fine-tuning for specific protocols. The framework demonstrates potential for integration into fast SPECT workflows, facilitating reliable use across diverse imaging scenarios.

Original languageEnglish
JournalPhysics in Medicine and Biology
Volume71
Issue number8
DOIs
StatePublished - 28 Apr 2026

Keywords

  • fast scan
  • SPECT
  • transfer learning

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