Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset

Purpose: The cardiomegaly can be determined by the cardiothoracic ratio (CTR) which can be measured in a chest x-ray image. It is calculated based on a relationship between a size of heart and a transverse dimension of chest. The cardiomegaly is identified when the ratio is larger than a cut-off thr...

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Main Author: Kusakunniran W.
Other Authors: Mahidol University
Format: Article
Published: 2023
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/82650
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spelling th-mahidol.826502023-05-24T00:06:57Z Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset Kusakunniran W. Mahidol University Computer Science Purpose: The cardiomegaly can be determined by the cardiothoracic ratio (CTR) which can be measured in a chest x-ray image. It is calculated based on a relationship between a size of heart and a transverse dimension of chest. The cardiomegaly is identified when the ratio is larger than a cut-off threshold. This paper aims to propose a solution to calculate the ratio for classifying the cardiomegaly in chest x-ray images. Design/methodology/approach: The proposed method begins with constructing lung and heart segmentation models based on U-Net architecture using the publicly available datasets with the groundtruth of heart and lung masks. The ratio is then calculated using the sizes of segmented lung and heart areas. In addition, Progressive Growing of GANs (PGAN) is adopted here for constructing the new dataset containing chest x-ray images of three classes including male normal, female normal and cardiomegaly classes. This dataset is then used for evaluating the proposed solution. Also, the proposed solution is used to evaluate the quality of chest x-ray images generated from PGAN. Findings: In the experiments, the trained models are applied to segment regions of heart and lung in chest x-ray images on the self-collected dataset. The calculated CTR values are compared with the values that are manually measured by human experts. The average error is 3.08%. Then, the models are also applied to segment regions of heart and lung for the CTR calculation, on the dataset computed by PGAN. Then, the cardiomegaly is determined using various attempts of different cut-off threshold values. With the standard cut-off at 0.50, the proposed method achieves 94.61% accuracy, 88.31% sensitivity and 94.20% specificity. Originality/value: The proposed solution is demonstrated to be robust across unseen datasets for the segmentation, CTR calculation and cardiomegaly classification, including the dataset generated from PGAN. The cut-off value can be adjusted to be lower than 0.50 for increasing the sensitivity. For example, the sensitivity of 97.04% can be achieved at the cut-off of 0.45. However, the specificity is decreased from 94.20% to 79.78%. 2023-05-23T17:06:57Z 2023-05-23T17:06:57Z 2023-01-01 Article Applied Computing and Informatics (2023) 10.1108/ACI-11-2022-0322 22108327 26341964 2-s2.0-85153320442 https://repository.li.mahidol.ac.th/handle/123456789/82650 SCOPUS
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Computer Science
spellingShingle Computer Science
Kusakunniran W.
Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
description Purpose: The cardiomegaly can be determined by the cardiothoracic ratio (CTR) which can be measured in a chest x-ray image. It is calculated based on a relationship between a size of heart and a transverse dimension of chest. The cardiomegaly is identified when the ratio is larger than a cut-off threshold. This paper aims to propose a solution to calculate the ratio for classifying the cardiomegaly in chest x-ray images. Design/methodology/approach: The proposed method begins with constructing lung and heart segmentation models based on U-Net architecture using the publicly available datasets with the groundtruth of heart and lung masks. The ratio is then calculated using the sizes of segmented lung and heart areas. In addition, Progressive Growing of GANs (PGAN) is adopted here for constructing the new dataset containing chest x-ray images of three classes including male normal, female normal and cardiomegaly classes. This dataset is then used for evaluating the proposed solution. Also, the proposed solution is used to evaluate the quality of chest x-ray images generated from PGAN. Findings: In the experiments, the trained models are applied to segment regions of heart and lung in chest x-ray images on the self-collected dataset. The calculated CTR values are compared with the values that are manually measured by human experts. The average error is 3.08%. Then, the models are also applied to segment regions of heart and lung for the CTR calculation, on the dataset computed by PGAN. Then, the cardiomegaly is determined using various attempts of different cut-off threshold values. With the standard cut-off at 0.50, the proposed method achieves 94.61% accuracy, 88.31% sensitivity and 94.20% specificity. Originality/value: The proposed solution is demonstrated to be robust across unseen datasets for the segmentation, CTR calculation and cardiomegaly classification, including the dataset generated from PGAN. The cut-off value can be adjusted to be lower than 0.50 for increasing the sensitivity. For example, the sensitivity of 97.04% can be achieved at the cut-off of 0.45. However, the specificity is decreased from 94.20% to 79.78%.
author2 Mahidol University
author_facet Mahidol University
Kusakunniran W.
format Article
author Kusakunniran W.
author_sort Kusakunniran W.
title Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
title_short Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
title_full Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
title_fullStr Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
title_full_unstemmed Automatic measurement of cardiothoracic ratio in chest x-ray images with ProGAN-generated dataset
title_sort automatic measurement of cardiothoracic ratio in chest x-ray images with progan-generated dataset
publishDate 2023
url https://repository.li.mahidol.ac.th/handle/123456789/82650
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