Decentralized collaborative multi-institutional PET attenuation and scatter correction using federated deep learning

被引:25
作者
Shiri, Isaac [1 ]
Sadr, Alireza Vafaei [2 ,3 ,4 ]
Akhavan, Azadeh [1 ]
Salimi, Yazdan [1 ]
Sanaat, Amirhossein [1 ]
Amini, Mehdi [1 ]
Razeghi, Behrooz [5 ]
Saberi, Abdollah [1 ]
Arabi, Hossein [1 ]
Ferdowsi, Sohrab [6 ]
Voloshynovskiy, Slava [5 ]
Gunduz, Deniz [7 ]
Rahmim, Arman [8 ,9 ]
Zaidi, Habib [1 ,10 ,11 ,12 ]
机构
[1] Geneva Univ Hosp, Div Nucl Med & Mol Imaging, CH-1211 Geneva 4, Switzerland
[2] Univ Geneva, Dept Theoret Phys, Geneva, Switzerland
[3] Univ Geneva, Ctr Astroparticle Phys, Geneva, Switzerland
[4] RWTH Aachen Univ Hosp, Inst Pathol, Aachen, Germany
[5] Univ Geneva, Dept Comp Sci, Geneva, Switzerland
[6] Univ Geneva, HES SO, Geneva, Switzerland
[7] Imperial Coll London, Dept Elect & Elect Engn, London, England
[8] Univ British Columbia, Dept Radiol, Vancouver, BC, Canada
[9] BC Canc Res Inst, Dept Integrat Oncol, Vancouver, BC, Canada
[10] Univ Geneva, Neuroctr, Geneva, Switzerland
[11] Univ Groningen, Univ Med Ctr Groningen, Dept Nucl Med & Mol Imaging, Groningen, Netherlands
[12] Univ Southern Denmark, Dept Nucl Med, Odense, Denmark
基金
瑞士国家科学基金会;
关键词
PET; Attenuation correction; Deep learning; Federated learning; Distributed learning; CELL LUNG-CANCER; EMISSION-TOMOGRAPHY; COMPENSATION; SEGMENTATION; CHALLENGES; PRIVACY;
D O I
10.1007/s00259-022-06053-8
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Attenuation correction and scatter compensation (AC/SC) are two main steps toward quantitative PET imaging, which remain challenging in PET-only and PET/MRI systems. These can be effectively tackled via deep learning (DL) methods. However, trustworthy, and generalizable DL models commonly require well-curated, heterogeneous, and large datasets from multiple clinical centers. At the same time, owing to legal/ethical issues and privacy concerns, forming a large collective, centralized dataset poses significant challenges. In this work, we aimed to develop a DL-based model in a multicenter setting without direct sharing of data using federated learning (FL) for AC/SC of PET images. Methods Non-attenuation/scatter corrected and CT-based attenuation/scatter corrected (CT-ASC) F-18-FDG PET images of 300 patients were enrolled in this study. The dataset consisted of 6 different centers, each with 50 patients, with scanner, image acquisition, and reconstruction protocols varying across the centers. CT-based ASC PET images served as the standard reference. All images were reviewed to include high-quality and artifact-free PET images. Both corrected and uncorrected PET images were converted to standardized uptake values (SUVs). We used a modified nested U-Net utilizing residual U-block in a U-shape architecture. We evaluated two FL models, namely sequential (FL-SQ) and parallel (FL-PL) and compared their performance with the baseline centralized (CZ) learning model wherein the data were pooled to one server, as well as center-based (CB) models where for each center the model was built and evaluated separately. Data from each center were divided to contribute to training (30 patients), validation (10 patients), and test sets (10 patients). Final evaluations and reports were performed on 60 patients (10 patients from each center). Results In terms of percent SUV absolute relative error (ARE%), both FL-SQ (CI:12.21-14.81%) and FL-PL (CI:11.82-13.84%) models demonstrated excellent agreement with the centralized framework (CI:10.32-12.00%), while FL-based algorithms improved model performance by over 11% compared to CB training strategy (CI: 22.34-26.10%). Furthermore, the Mann-Whitney test between different strategies revealed no significant differences between CZ and FL-based algorithms (p-value> 0.05) in center-categorized mode. At the same time, a significant difference was observed between the different training approaches on the overall dataset (p-value< 0.05). In addition, voxel-wise comparison, with respect to reference CT-ASC, exhibited similar performance for images predicted by CZ (R-2 =0.94), FL-SQ (R-2 =0.93), and FL-PL (R-2 = 0.92), while CB model achieved a far lower coefficient of determination (R-2 =0.74). Despite the strong correlations between CZ and FL-based methods compared to reference CT-ASC, a slight underestimation of predicted voxel values was observed. Conclusion Deep learning-based models provide promising results toward quantitative PET image reconstruction. Specifically, we developed two FL models and compared their performance with center-based and centralized models. The proposed FL-based models achieved higher performance compared to center-based models, comparable with centralized models. Our work provided strong empirical evidence that the FL framework can fully benefit from the generalizability and robustness of DL models used for AC/SC in PET, while obviating the need for the direct sharing of datasets between clinical imaging centers.
引用
收藏
页码:1034 / 1050
页数:17
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