数字乳房断层合成中的深度学习:现状、挑战和未来趋势

IF 10.7 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
MedComm Pub Date : 2025-06-09 DOI:10.1002/mco2.70247
Ruoyun Wang, Fanxuan Chen, Haoman Chen, Chenxing Lin, Jincen Shuai, Yutong Wu, Lixiang Ma, Xiaoqu Hu, Min Wu, Jin Wang, Qi Zhao, Jianwei Shuai, Jingye Pan
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引用次数: 0

摘要

数字乳腺断层合成(DBT)在乳腺癌筛查中生成的高分辨率三维(3D)图像为早期疾病诊断提供了新的可能性。随着乳腺癌发病率的增加,早期发现尤为重要。然而,DBT在致密乳房的效果较差,假阳性率增加,辐射剂量略高,阅读时间增加等方面也存在挑战。研究表明,深度学习可以有效提高DBT图像的处理效率和诊断准确率。本文就DL在基于dbt的乳腺癌筛查中的应用及展望作一综述。首先,介绍了DBT技术的基本原理和面临的挑战。然后将DL在DBT中的应用分为三类:乳腺疾病的诊断分类、病变分割和检测以及医学图像生成。此外,详细总结了目前乳腺x线摄影的公共数据库。最后,本文分析了深度学习技术在DBT中应用面临的主要挑战,如缺乏公共数据集和模型训练问题,并提出了未来可能的研究方向,包括大语言模型、多源域转移和数据增强,以鼓励深度学习技术在医学成像中的创新应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning in Digital Breast Tomosynthesis: Current Status, Challenges, and Future Trends

The high-resolution three-dimensional (3D) images generated with digital breast tomosynthesis (DBT) in the screening of breast cancer offer new possibilities for early disease diagnosis. Early detection is especially important as the incidence of breast cancer increases. However, DBT also presents challenges in terms of poorer results for dense breasts, increased false positive rates, slightly higher radiation doses, and increased reading times. Deep learning (DL) has been shown to effectively increase the processing efficiency and diagnostic accuracy of DBT images. This article reviews the application and outlook of DL in DBT-based breast cancer screening. First, the fundamentals and challenges of DBT technology are introduced. The applications of DL in DBT are then grouped into three categories: diagnostic classification of breast diseases, lesion segmentation and detection, and medical image generation. Additionally, the current public databases for mammography are summarized in detail. Finally, this paper analyzes the main challenges in the application of DL techniques in DBT, such as the lack of public datasets and model training issues, and proposes possible directions for future research, including large language models, multisource domain transfer, and data augmentation, to encourage innovative applications of DL in medical imaging.

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来源期刊
CiteScore
6.70
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