Radiation Dose Reduction in Digital Mammography by Deep-Learning Algorithm Image Reconstruction: A Preliminary Study.

Taehan Yongsang Uihakhoe chi Pub Date : 2022-03-01 Epub Date: 2021-12-11 DOI:10.3348/jksr.2020.0152
Su Min Ha, Hak Hee Kim, Eunhee Kang, Bo Kyoung Seo, Nami Choi, Tae Hee Kim, You Jin Ku, Jong Chul Ye
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引用次数: 1

Abstract

Purpose: To develop a denoising convolutional neural network-based image processing technique and investigate its efficacy in diagnosing breast cancer using low-dose mammography imaging.

Materials and methods: A total of 6 breast radiologists were included in this prospective study. All radiologists independently evaluated low-dose images for lesion detection and rated them for diagnostic quality using a qualitative scale. After application of the denoising network, the same radiologists evaluated lesion detectability and image quality. For clinical application, a consensus on lesion type and localization on preoperative mammographic examinations of breast cancer patients was reached after discussion. Thereafter, coded low-dose, reconstructed full-dose, and full-dose images were presented and assessed in a random order.

Results: Lesions on 40% reconstructed full-dose images were better perceived when compared with low-dose images of mastectomy specimens as a reference. In clinical application, as compared to 40% reconstructed images, higher values were given on full-dose images for resolution (p < 0.001); diagnostic quality for calcifications (p < 0.001); and for masses, asymmetry, or architectural distortion (p = 0.037). The 40% reconstructed images showed comparable values to 100% full-dose images for overall quality (p = 0.547), lesion visibility (p = 0.120), and contrast (p = 0.083), without significant differences.

Conclusion: Effective denoising and image reconstruction processing techniques can enable breast cancer diagnosis with substantial radiation dose reduction.

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基于深度学习算法图像重建的数字乳房x线摄影辐射剂量降低的初步研究。
目的:建立一种基于去噪卷积神经网络的图像处理技术,并探讨其在低剂量乳腺x线摄影诊断乳腺癌中的应用效果。材料与方法:本前瞻性研究共纳入6名乳腺放射科医师。所有放射科医生都独立评估低剂量图像用于病变检测,并使用定性量表对其诊断质量进行评级。应用去噪网络后,同一放射科医生评估病变可检测性和图像质量。在临床应用方面,对乳腺癌患者术前乳腺x线检查的病变类型和定位进行了讨论,达成了共识。随后,按随机顺序呈现编码低剂量、重建全剂量和全剂量图像并进行评估。结果:40%重建全剂量图像上的病变比低剂量乳腺切除术标本上的病变更容易被感知。在临床应用中,与40%的重建图像相比,全剂量图像的分辨率更高(p < 0.001);钙化的诊断质量(p < 0.001);对于质量,不对称或建筑扭曲(p = 0.037)。40%重建图像在整体质量(p = 0.547)、病灶可见性(p = 0.120)和对比度(p = 0.083)方面与100%全剂量图像相当,无显著差异。结论:有效的去噪和图像重建处理技术可以使乳腺癌的诊断具有较大幅度的辐射剂量降低。
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