Department of Diagnostic and Interventional Radiology, Graduate School of Medicine, Osaka City University, Osaka, Japan; Department of Diagnostic and Interventional Radiology, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan.
Department of Diagnostic and Interventional Radiology, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan; Smart Life Science Lab, Center for Health Science Innovation, Osaka Metropolitan University, Osaka, Japan.
Eur J Radiol. 2022 Sep;154:110433. doi: 10.1016/j.ejrad.2022.110433. Epub 2022 Jul 6.
To evaluate visually and quantitatively the performance of a deep-learning-based super-resolution (SR) model for microcalcifications in digital mammography.
Mammograms were consecutively collected from 5080 patients who underwent breast cancer screening from January 2015 to March 2017. Of these, 93 patients (136 breasts, mean age, 50 ± 7 years) had microcalcifications in their breasts on mammograms. We applied an artificial intelligence model known as a fast SR convolutional neural network to the mammograms. SR and original mammograms were visually evaluated by four breast radiologists using a 5-point scale (1: original mammograms are strongly preferred, 5: SR mammograms are strongly preferred) for the detection, diagnostic quality, contrast, sharpness, and noise of microcalcifications. Mammograms were quantitatively evaluated using a perception-based image-quality evaluator (PIQE).
All radiologists rated the SR mammograms better than the original ones in terms of detection, diagnostic quality, contrast, and sharpness of microcalcifications. These ratings were significantly different according to the Wilcoxon signed-rank test (p <.001), while the noise score of the three radiologists was significantly lower (p <.001). According to PIQE, SR mammograms were rated better than the original mammograms, showing a significant difference by paired t-test (p <.001).
An SR model based on deep learning can improve the visibility of microcalcifications in mammography and help detect and diagnose them in mammograms.
评估一种基于深度学习的数字乳腺摄影中微钙化的超分辨率(SR)模型的性能。
从 2015 年 1 月至 2017 年 3 月接受乳腺癌筛查的 5080 名患者中连续收集乳腺 X 线照片。其中 93 名患者(136 个乳房,平均年龄 50±7 岁)的乳腺 X 线照片上有微钙化。我们将一种称为快速 SR 卷积神经网络的人工智能模型应用于乳腺 X 线照片。SR 和原始乳腺 X 线照片由四位乳腺放射科医生使用 5 分制(1:强烈推荐原始乳腺 X 线照片,5:强烈推荐 SR 乳腺 X 线照片)进行视觉评估,用于评估微钙化的检测、诊断质量、对比度、锐度和噪声。使用基于感知的图像质量评估器(PIQE)对乳腺 X 线照片进行定量评估。
所有放射科医生都认为 SR 乳腺 X 线照片在微钙化的检测、诊断质量、对比度和锐度方面优于原始乳腺 X 线照片。根据 Wilcoxon 符号秩检验,这些评分差异具有统计学意义(p<.001),而三位放射科医生的噪声评分差异也具有统计学意义(p<.001)。根据 PIQE,SR 乳腺 X 线照片的评分优于原始乳腺 X 线照片,配对 t 检验差异具有统计学意义(p<.001)。
基于深度学习的 SR 模型可以提高乳腺 X 线照片中微钙化的可见度,并有助于在乳腺 X 线照片中检测和诊断微钙化。