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

07/23/2023
by   Takaaki Matsunaga, et al.
0

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.

READ FULL TEXT

page 25

page 26

page 27

page 28

page 29

page 30

page 31

research
11/21/2017

A deep learning-based method for relative location prediction in CT scan images

Relative location prediction in computed tomography (CT) scan images is ...
research
11/14/2021

Estimation of Acetabular Version from Anteroposterior Pelvic Radiograph Employing Deep Learning

Background and Objective: The Acetabular version, an essential factor in...
research
04/19/2023

Optimizations of Autoencoders for Analysis and Classification of Microscopic In Situ Hybridization Images

Currently, analysis of microscopic In Situ Hybridization images is done ...
research
06/02/2021

Smooth Q-learning: Accelerate Convergence of Q-learning Using Similarity

An improvement of Q-learning is proposed in this paper. It is different ...
research
01/26/2023

RMSim: Controlled Respiratory Motion Simulation on Static Patient Scans

This work aims to generate realistic anatomical deformations from static...
research
06/24/2023

Interpreting Forecasted Vital Signs Using N-BEATS in Sepsis Patients

Detecting and predicting septic shock early is crucial for the best poss...

Please sign up or login with your details

Forgot password? Click here to reset