Recent advancements in artificial intelligence for breast cancer: Image augmentation, segmentation, diagnosis, and prognosis approaches

IF 12.1 1区 医学 Q1 ONCOLOGY
Jiadong Zhang , Jiaojiao Wu , Xiang Sean Zhou , Feng Shi , Dinggang Shen
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引用次数: 1

Abstract

Breast cancer is a significant global health burden, with increasing morbidity and mortality worldwide. Early screening and accurate diagnosis are crucial for improving prognosis. Radiographic imaging modalities such as digital mammography (DM), digital breast tomosynthesis (DBT), magnetic resonance imaging (MRI), ultrasound (US), and nuclear medicine techniques, are commonly used for breast cancer assessment. And histopathology (HP) serves as the gold standard for confirming malignancy. Artificial intelligence (AI) technologies show great potential for quantitative representation of medical images to effectively assist in segmentation, diagnosis, and prognosis of breast cancer. In this review, we overview the recent advancements of AI technologies for breast cancer, including 1) improving image quality by data augmentation, 2) fast detection and segmentation of breast lesions and diagnosis of malignancy, 3) biological characterization of the cancer such as staging and subtyping by AI-based classification technologies, 4) prediction of clinical outcomes such as metastasis, treatment response, and survival by integrating multi-omics data. Then, we then summarize large-scale databases available to help train robust, generalizable, and reproducible deep learning models. Furthermore, we conclude the challenges faced by AI in real-world applications, including data curating, model interpretability, and practice regulations. Besides, we expect that clinical implementation of AI will provide important guidance for the patient-tailored management.

癌症人工智能的最新进展:图像增强、分割、诊断和预后方法。
癌症是一个重大的全球健康负担,全球发病率和死亡率不断上升。早期筛查和准确诊断对改善预后至关重要。射线成像模式,如数字乳房X光摄影(DM)、数字乳房断层合成(DBT)、磁共振成像(MRI)、超声(US)和核医学技术,通常用于乳腺癌症评估。组织病理学(HP)是确认恶性肿瘤的金标准。人工智能(AI)技术在医学图像的定量表示方面显示出巨大的潜力,可以有效地帮助癌症的分割、诊断和预后。在这篇综述中,我们概述了癌症人工智能技术的最新进展,包括1)通过数据增强提高图像质量,2)乳腺病变的快速检测和分割以及恶性肿瘤的诊断,3)癌症的生物学特征,如通过基于人工智能的分类技术进行分期和分型,4)通过整合多组学数据预测临床结果,如转移、治疗反应和生存率。然后,我们总结了可用于帮助训练健壮、可推广和可复制的深度学习模型的大规模数据库。此外,我们总结了人工智能在现实世界应用中面临的挑战,包括数据管理、模型可解释性和实践法规。此外,我们预计人工智能的临床实施将为患者量身定制的管理提供重要指导。
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来源期刊
Seminars in cancer biology
Seminars in cancer biology 医学-肿瘤学
CiteScore
26.80
自引率
4.10%
发文量
347
审稿时长
15.1 weeks
期刊介绍: Seminars in Cancer Biology (YSCBI) is a specialized review journal that focuses on the field of molecular oncology. Its primary objective is to keep scientists up-to-date with the latest developments in this field. The journal adopts a thematic approach, dedicating each issue to an important topic of interest to cancer biologists. These topics cover a range of research areas, including the underlying genetic and molecular causes of cellular transformation and cancer, as well as the molecular basis of potential therapies. To ensure the highest quality and expertise, every issue is supervised by a guest editor or editors who are internationally recognized experts in the respective field. Each issue features approximately eight to twelve authoritative invited reviews that cover various aspects of the chosen subject area. The ultimate goal of each issue of YSCBI is to offer a cohesive, easily comprehensible, and engaging overview of the selected topic. The journal strives to provide scientists with a coordinated and lively examination of the latest developments in the field of molecular oncology.
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