[Development of a Deep Learning Model for Judging Late Gadolinium-enhancement in Cardiac MRI].

Nihon Hoshasen Gijutsu Gakkai zasshi Pub Date : 2024-07-20 Epub Date: 2024-06-20 DOI:10.6009/jjrt.2024-1421
Akihiro Kasahara, Takahiro Iwasaki, Takuya Mizutani, Tsuyoshi Ueyama, Yoshiharu Sekine, Masae Uehara, Satoshi Kodera, Wataru Gonoi, Hideyuki Iwanaga, Osamu Abe
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Abstract

Purpose: To verify the usefulness of a deep learning model for determining the presence or absence of contrast-enhanced myocardium in late gadolinium-enhancement images in cardiac MRI.

Methods: We used 174 late gadolinium-enhancement myocardial short-axis images obtained from contrast-enhanced cardiac MRI performed using a 3.0T MRI system at the University of Tokyo Hospital. Of these, 144 images were used for training, extracting a region of interest targeting the heart, scaling signal intensity, and data augmentation were performed to obtain 3312 training images. The interpretation report of two cardiology specialists of our hospital was used as the correct label. A learning model was constructed using a convolutional neural network and applied to 30 test data. In all cases, the acquired mean age was 56.4±12.1 years, and the male-to-female ratio was 1 : 0.82.

Results: Before and after data augmentation, sensitivity remained consistent at 93.3%, specificity improved from 0.0% to 100.0%, and accuracy improved from 46.7% to 96.7%.

Conclusion: The prediction accuracy of the deep learning model developed in this research is high, suggesting its high usefulness.

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[开发用于判断心脏 MRI 中晚期钆增强的深度学习模型]。
目的:验证深度学习模型在确定心脏磁共振成像晚期钆增强图像中是否存在造影剂增强心肌方面的实用性:我们使用了 174 张后期钆增强心肌短轴图像,这些图像来自东京大学医院使用 3.0T 磁共振成像系统进行的对比增强心脏磁共振成像。其中 144 幅图像用于训练,提取以心脏为目标的感兴趣区,缩放信号强度,并进行数据增强,从而获得 3312 幅训练图像。本院两位心脏病学专家的解释报告被用作正确标签。使用卷积神经网络构建了一个学习模型,并应用于 30 个测试数据。所有病例的平均年龄为(56.4±12.1)岁,男女比例为 1 :结果结果:数据增强前后,灵敏度保持在 93.3%,特异性从 0.0% 提高到 100.0%,准确率从 46.7% 提高到 96.7%:结论:本研究中开发的深度学习模型的预测准确率很高,表明其具有很高的实用性。
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