IVCVJul 23, 2023

Development of pericardial fat count images using a combination of three different deep-learning models

arXiv:2307.12316v2h-index: 31
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific problem for medical imaging by enabling PF evaluation from CXRs without CT, potentially reducing costs and radiation exposure, but it is incremental as it builds on existing deep-learning methods.

This study tackled the problem of evaluating pericardial fat (PF) from chest radiographs (CXRs) by generating pericardial fat count images (PFCIs) using a combination of three deep-learning models, including CycleGAN, and achieved better performance with mean SSIM of 0.856, MSE of 0.0128, and MAE of 0.0357 compared to a single model.

Rationale and Objectives: Pericardial fat (PF), the thoracic visceral fat surrounding the heart, promotes the development of coronary artery disease by inducing inflammation of the coronary arteries. For evaluating PF, this study aimed to generate pericardial fat count images (PFCIs) from chest radiographs (CXRs) using a dedicated deep-learning model. Materials and Methods: The data of 269 consecutive patients who underwent coronary computed tomography (CT) were reviewed. Patients with metal implants, pleural effusion, history of thoracic surgery, or that of malignancy were excluded. Thus, the data of 191 patients were used. PFCIs were generated from the projection of three-dimensional CT images, where fat accumulation was represented by a high pixel value. Three different deep-learning models, including CycleGAN, were combined in the proposed method to generate PFCIs from CXRs. A single CycleGAN-based model was used to generate PFCIs from CXRs for comparison with the proposed method. To evaluate the image quality of the generated PFCIs, structural similarity index measure (SSIM), mean squared error (MSE), and mean absolute error (MAE) of (i) the PFCI generated using the proposed method and (ii) the PFCI generated using the single model were compared. Results: The mean SSIM, MSE, and MAE were as follows: 0.856, 0.0128, and 0.0357, respectively, for the proposed model; and 0.762, 0.0198, and 0.0504, respectively, for the single CycleGAN-based model. Conclusion: PFCIs generated from CXRs with the proposed model showed better performance than those with the single model. PFCI evaluation without CT may be possible with the proposed method.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes