An Overview of Current Trends, Techniques, Prospects, and Pitfalls of Artificial Intelligence in Breast Imaging

Q3 Medicine Reports in Medical Imaging Pub Date : 2021-03-11 DOI:10.2147/RMI.S295205
S. Goyal
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引用次数: 3

Abstract

: This review article aims to discuss current trends, techniques, and promising uses of artificial intelligence (AI) in breast imaging, apart from the pitfalls that may hinder its progress. It includes only the commonly used and basic terminology imperative for physicians to know. AI is not just a computerized approach but an interface between humans and machines. Apart from reducing workload and improved diagnostic accuracy, radiologists get more time for patient care or clinical work by using various machine learning techniques that augment their productivity. Inadequate data input with suboptimal pattern recognition, data extraction challenges, legal implications, and exorbitant costs are a few pitfalls that AI algorithms still face while analyzing and giving appropriate outcomes. Various machine learning approaches are used to construct prediction models for clinical decision support and ameliorating patient management. Since AI is still in its fledgling state, with many limitations for clinical implementation, clinical support and feedback are needed to avoid algorithmic errors. Hence, both machine learning and human insight complement each other in revolutionizing breast imaging.
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乳房成像中人工智能的当前趋势、技术、前景和缺陷综述
这篇综述文章旨在讨论人工智能(AI)在乳房成像中的当前趋势、技术和有前景的应用,以及可能阻碍其发展的陷阱。它只包括医生必须知道的常用和基本术语。人工智能不仅是一种计算机化的方法,而且是人与机器之间的接口。除了减少工作量和提高诊断准确性外,放射科医生还可以通过使用各种机器学习技术来提高他们的工作效率,从而获得更多的时间用于患者护理或临床工作。人工智能算法在分析和给出适当结果时仍然面临着数据输入不足、模式识别不佳、数据提取挑战、法律影响和过高的成本等问题。各种机器学习方法用于构建临床决策支持和改善患者管理的预测模型。由于人工智能还处于起步阶段,在临床应用上有很多限制,需要临床支持和反馈来避免算法错误。因此,机器学习和人类洞察力在乳房成像革命中相辅相成。
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
Reports in Medical Imaging
Reports in Medical Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
1.90
自引率
0.00%
发文量
5
审稿时长
16 weeks
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