Exploring the Potential of Artificial Intelligence in Breast Ultrasound

Q4 Biochemistry, Genetics and Molecular Biology
Giovanni Irmici, Maurizio Ce', Gianmarco Della Pepa, Elisa D'Ascoli, Claudia De Berardinis, Emilia Giambersio, Lidia Rabiolo, Ludovica La Rocca, Serena Carriero, Catherine Depretto, Gianfranco Scaperrotta, Michaela Cellina
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引用次数: 0

Abstract

Breast ultrasound has emerged as a valuable imaging modality in the detection and characterization of breast lesions, particularly in women with dense breast tissue or contraindications for mammography. Within this framework, artificial intelligence (AI) has garnered significant attention for its potential to improve diagnostic accuracy in breast ultrasound and revolutionize the workflow. This review article aims to comprehensively explore the current state of research and development in harnessing AI's capabilities for breast ultrasound. We delve into various AI techniques, including machine learning, deep learning, as well as their applications in automating lesion detection, segmentation, and classification tasks. Furthermore, the review addresses the challenges and hurdles faced in implementing AI systems in breast ultrasound diagnostics, such as data privacy, interpretability, and regulatory approval. Ethical considerations pertaining to the integration of AI into clinical practice are also discussed, emphasizing the importance of maintaining a patient-centered approach. The integration of AI into breast ultrasound holds great promise for improving diagnostic accuracy, enhancing efficiency, and ultimately advancing patient’s care. By examining the current state of research and identifying future opportunities, this review aims to contribute to the understanding and utilization of AI in breast ultrasound and encourage further interdisciplinary collaboration to maximize its potential in clinical practice.
探讨人工智能在乳腺超声中的应用潜力
乳房超声已经成为一种有价值的成像方式,用于检测和表征乳房病变,特别是在乳房组织致密或乳房x光检查禁忌的妇女中。在这个框架内,人工智能(AI)因其提高乳腺超声诊断准确性和彻底改变工作流程的潜力而引起了极大的关注。这篇综述文章旨在全面探讨利用人工智能在乳房超声方面的研究和发展现状。我们深入研究了各种人工智能技术,包括机器学习、深度学习,以及它们在自动化病变检测、分割和分类任务中的应用。此外,该审查还解决了在乳腺超声诊断中实施人工智能系统所面临的挑战和障碍,例如数据隐私、可解释性和监管批准。还讨论了与人工智能融入临床实践有关的伦理考虑,强调了保持以患者为中心的方法的重要性。将人工智能整合到乳房超声中,在提高诊断准确性、提高效率并最终改善患者护理方面具有很大的前景。通过研究目前的研究状况和确定未来的机会,本综述旨在促进人工智能在乳腺超声中的理解和应用,并鼓励进一步的跨学科合作,以最大限度地发挥其在临床实践中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Critical Reviews in Oncogenesis
Critical Reviews in Oncogenesis Biochemistry, Genetics and Molecular Biology-Cancer Research
CiteScore
1.70
自引率
0.00%
发文量
17
期刊介绍: The journal is dedicated to extensive reviews, minireviews, and special theme issues on topics of current interest in basic and patient-oriented cancer research. The study of systems biology of cancer with its potential for molecular level diagnostics and treatment implies competence across the sciences and an increasing necessity for cancer researchers to understand both the technology and medicine. The journal allows readers to adapt a better understanding of various fields of molecular oncology. We welcome articles on basic biological mechanisms relevant to cancer such as DNA repair, cell cycle, apoptosis, angiogenesis, tumor immunology, etc.
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