| Literature DB >> 36059429 |
Mahsa Torkaman1, Jaewon Yang1, Luyao Shi2, Rui Wang3, Edward J Miller3, Albert J Sinusas4, Chi Liu4, Grant T Gullberg1, Youngho Seo1.
Abstract
Attenuation correction (AC) is important for accurate interpretation of SPECT myocardial perfusion imaging (MPI). However, it is challenging to perform AC in dedicated cardiac systems not equipped with a transmission imaging capability. Previously, we demonstrated the feasibility of generating attenuation-corrected SPECT images using a deep learning technique (SPECTDL) directly from non-corrected images (SPECTNC). However, we observed performance variability across patients which is an important factor for clinical translation of the technique. In this study, we investigate the feasibility of overcoming the performance variability across patients for the direct AC in SPECT MPI by proposing to develop an advanced network and a data management strategy. To investigate, we compared the accuracy of the SPECTDL for the conventional U-Net and Wasserstein cycle GAN (WCycleGAN) networks. To manage the training data, clustering was applied to a representation of data in the lower-dimensional space, and the training data were chosen based on the similarity of data in this space. Quantitative analysis demonstrated that DL model with an advanced network improves the global performance for the AC task with the limited data. However, the regional results were not improved. The proposed data management strategy demonstrated that the clustered training has potential benefit for effective training.Entities:
Keywords: Attenuation correction; Deep learning; Hierarchical clustering; Myocardial perfusion imaging (MPI); Performance variability; SPECT; Wasserstein cycle GAN; t-SNE
Year: 2021 PMID: 36059429 PMCID: PMC9438341 DOI: 10.1109/trpms.2021.3138372
Source DB: PubMed Journal: IEEE Trans Radiat Plasma Med Sci ISSN: 2469-7303