合成数据及其在病理学和检验医学中的应用。

IF 5.1 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL Laboratory Investigation Pub Date : 2024-06-24 DOI:10.1016/j.labinv.2024.102095
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引用次数: 0

摘要

在人工智能(AI)迅速发展的今天,合成数据已成为一个充满希望但也令人担忧的话题。本综述旨在向病理学家和实验室专业人员介绍合成数据的作用,以及它如何在不久的将来塑造我们领域的格局。使用合成数据有很多优势,但也会带来新的障碍和限制。本综述旨在向病理学家和实验室专业人员介绍合成数据的一般概念及其改变我们领域的潜力。通过利用合成数据,我们可以帮助加快各种机器学习模型的开发,提高我们的医学教育和研究/质量研究需求。本综述将探讨生成合成数据的方法,包括基于规则的方法、基于机器学习模型的方法和混合方法,这些方法适用于病理学和检验医学领域的应用。我们还将讨论与此类合成数据相关的局限性和挑战,包括数据质量、恶意使用以及伦理/偏见问题和挑战。通过了解这一新数据领域的潜在益处(如医学教育、人工智能程序培训和能力测试等)和局限性,我们不仅可以利用它的力量改善患者预后、推动研究和加强病理学实践,还能随时意识到其内在局限性。
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Synthetic Data and its Utility in Pathology and Laboratory Medicine

In our rapidly expanding landscape of artificial intelligence, synthetic data have become a topic of great promise and also some concern. This review aimed to provide pathologists and laboratory professionals with a primer on the role of synthetic data and how it may soon shape the landscape within our field. Using synthetic data presents many advantages but also introduces a milieu of new obstacles and limitations. This review aimed to provide pathologists and laboratory professionals with a primer on the general concept of synthetic data and its potential to transform our field. By leveraging synthetic data, we can help accelerate the development of various machine learning models and enhance our medical education and research/quality study needs. This review explored the methods for generating synthetic data, including rule-based, machine learning model-based and hybrid approaches, as they apply to applications within pathology and laboratory medicine. We also discussed the limitations and challenges associated with such synthetic data, including data quality, malicious use, and ethical bias/concerns and challenges. By understanding the potential benefits (ie, medical education, training artificial intelligence programs, and proficiency testing, etc) and limitations of this new data realm, we can not only harness its power to improve patient outcomes, advance research, and enhance the practice of pathology but also become readily aware of their intrinsic limitations.

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来源期刊
Laboratory Investigation
Laboratory Investigation 医学-病理学
CiteScore
8.30
自引率
0.00%
发文量
125
审稿时长
2 months
期刊介绍: Laboratory Investigation is an international journal owned by the United States and Canadian Academy of Pathology. Laboratory Investigation offers prompt publication of high-quality original research in all biomedical disciplines relating to the understanding of human disease and the application of new methods to the diagnosis of disease. Both human and experimental studies are welcome.
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