Measurement of Cardiothoracic Ratio and Detection of Cardiomegaly in X-Ray Images Using Deep Learning

Yanqin Xie, K. Nagamune
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Abstract

In this study, the cardiothoracic ratio is automatically measured by extracting lung and heart regions in a chest X-ray image and measuring their widths. The proposed method uses a deep learning model based on U-Net++ with VGG19_bn encoders. The results of cardiothoracic enlargement detection using the cardiothoracic ratio measured by the proposed method showed a high degree of agreement with the judgment made by a physician. As a result, the automatic cardiothoracic ratio measurement system using the proposed method contributes to a significant reduction in the time and labor of physicians.
利用深度学习测量 X 射线图像中的心胸比例并检测心脏肿大
本研究通过提取胸部 X 光图像中的肺部和心脏区域并测量其宽度,自动测量心胸比例。所提出的方法使用了基于 U-Net++ 和 VGG19_bn 编码器的深度学习模型。利用所提方法测量的心胸比例进行心胸扩大检测的结果显示,与医生的判断高度一致。因此,使用所提方法的心胸比例自动测量系统有助于大大减少医生的时间和劳动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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