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增强乳腺癌诊断与放射学实践:人工智能在乳腺增强钼靶成像中的进展

Empowering breast cancer diagnosis and radiology practice: advances in artificial intelligence for contrast-enhanced mammography.

作者信息

Kinkar Ketki K, Fields Brandon K K, Yamashita Mary W, Varghese Bino A

机构信息

Viterbi School of Engineering, University of Southern California, Los Angeles, CA, United States.

Department of Radiology & Biomedical Imaging, University of California, San Francisco, San Francisco, CA, United States.

出版信息

Front Radiol. 2024 Jan 5;3:1326831. doi: 10.3389/fradi.2023.1326831. eCollection 2023.

Abstract

Artificial intelligence (AI) applications in breast imaging span a wide range of tasks including decision support, risk assessment, patient management, quality assessment, treatment response assessment and image enhancement. However, their integration into the clinical workflow has been slow due to the lack of a consensus on data quality, benchmarked robust implementation, and consensus-based guidelines to ensure standardization and generalization. Contrast-enhanced mammography (CEM) has improved sensitivity and specificity compared to current standards of breast cancer diagnostic imaging i.e., mammography (MG) and/or conventional ultrasound (US), with comparable accuracy to MRI (current diagnostic imaging benchmark), but at a much lower cost and higher throughput. This makes CEM an excellent tool for widespread breast lesion characterization for all women, including underserved and minority women. Underlining the critical need for early detection and accurate diagnosis of breast cancer, this review examines the limitations of conventional approaches and reveals how AI can help overcome them. The Methodical approaches, such as image processing, feature extraction, quantitative analysis, lesion classification, lesion segmentation, integration with clinical data, early detection, and screening support have been carefully analysed in recent studies addressing breast cancer detection and diagnosis. Recent guidelines described by Checklist for Artificial Intelligence in Medical Imaging (CLAIM) to establish a robust framework for rigorous evaluation and surveying has inspired the current review criteria.

摘要

人工智能(AI)在乳腺成像中的应用涵盖了广泛的任务,包括决策支持、风险评估、患者管理、质量评估、治疗反应评估和图像增强。然而,由于在数据质量、经过基准测试的稳健实施以及基于共识的指南以确保标准化和通用性方面缺乏共识,它们在临床工作流程中的整合进展缓慢。与当前乳腺癌诊断成像标准(即乳腺X线摄影(MG)和/或传统超声(US))相比,对比增强乳腺X线摄影(CEM)提高了敏感性和特异性,其准确性与MRI(当前诊断成像基准)相当,但成本低得多且通量更高。这使得CEM成为对所有女性(包括医疗服务不足和少数族裔女性)进行广泛乳腺病变特征分析的优秀工具。强调了早期发现和准确诊断乳腺癌的迫切需求,本综述探讨了传统方法的局限性,并揭示了人工智能如何帮助克服这些局限性。在近期关于乳腺癌检测和诊断的研究中,对诸如图像处理、特征提取、定量分析、病变分类、病变分割、与临床数据整合、早期检测和筛查支持等方法进行了仔细分析。医学成像人工智能检查表(CLAIM)描述的近期指南为严格评估和调查建立了一个稳健的框架,这激发了当前的综述标准。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d2bc/10796447/17d60e2efa14/fradi-03-1326831-g001.jpg

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