학술논문

Deep Learning Models for Calculation of Cardiothoracic Ratio from Chest Radiographs for Assisted Diagnosis of Cardiomegaly
Document Type
Conference
Source
2021 International Conference on Artificial Intelligence, Big Data, Computing and Data Communication Systems (icABCD) Artificial Intelligence, Big Data, Computing and Data Communication Systems (icABCD), 2021 International Conference on. :1-6 Aug, 2021
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Heart
Deep learning
Visualization
Image segmentation
Hospitals
Computational modeling
Computer architecture
Deep Learning
Cardiomegaly
Cardiothoracic Ratio
Language
Abstract
We propose an automated method based on deep learning to compute the cardiothoracic ratio and detect the presence of cardiomegaly from chest radiographs. We develop two separate models to demarcate the heart and chest regions in an X-ray image using bounding boxes and use their outputs to calculate the cardiothoracic ratio. We obtain a mean absolute error of 0.0209 on a held-out test dataset and a mean absolute error of 0.018 on an independent dataset from a different hospital. We also compare three different segmentation model architectures for the proposed method and observe that Attention U-Net yields better results than SE-Resnext U-Net and EfficientNet U-Net. By providing a numeric measurement of the cardiothoracic ratio, instead of just providing presence or absence, we hope to mitigate human subjectivity arising out of visual assessment in the detection of cardiomegaly.