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癌症护理中开发人工智能的注册中心、数据库和存储库。

Registries, Databases and Repositories for Developing Artificial Intelligence in Cancer Care.

机构信息

Computational Oncology Group, Institute for Global Health Innovation, Imperial College London, London, UK; Department of Radiotherapy, Charing Cross Hospital, Imperial College NHS Trust, London, UK.

Computational Oncology Group, Institute for Global Health Innovation, Imperial College London, London, UK; Department of Radiotherapy, Charing Cross Hospital, Imperial College NHS Trust, London, UK.

出版信息

Clin Oncol (R Coll Radiol). 2022 Feb;34(2):e97-e103. doi: 10.1016/j.clon.2021.11.040. Epub 2021 Dec 23.

Abstract

Modern artificial intelligence techniques have solved some previously intractable problems and produced impressive results in selected medical domains. One of their drawbacks is that they often need very large amounts of data. Pre-existing datasets in the form of national cancer registries, image/genetic depositories and clinical datasets already exist and have been used for research. In theory, the combination of healthcare Big Data with modern, data-hungry artificial intelligence techniques should offer significant opportunities for artificial intelligence development, but this has not yet happened. Here we discuss some of the structural reasons for this, barriers preventing artificial intelligence from making full use of existing datasets, and make suggestions as to enable progress. To do this, we use the framework of the 6Vs of Big Data and the FAIR criteria for data sharing and availability (Findability, Accessibility, Interoperability, and Reuse). We share our experience in navigating these barriers through The Brain Tumour Data Accelerator, a Brain Tumour Charity-supported initiative to integrate fragmented patient data into an enriched dataset. We conclude with some comments as to the limits of such approaches.

摘要

现代人工智能技术已经解决了一些以前难以解决的问题,并在选定的医学领域取得了令人印象深刻的成果。它们的一个缺点是通常需要非常大量的数据。现有的数据集以国家癌症登记处、图像/遗传库和临床数据集的形式存在,并已被用于研究。从理论上讲,医疗保健大数据与现代、数据密集型人工智能技术的结合应该为人工智能的发展提供重大机遇,但这尚未发生。在这里,我们讨论了造成这种情况的一些结构性原因、人工智能充分利用现有数据集的障碍,并提出了一些建议以促进进展。为此,我们使用大数据的 6Vs 框架和数据共享和可用性的 FAIR 标准(可发现性、可访问性、互操作性和可重用性)。我们通过“脑肿瘤数据加速器”分享了我们在克服这些障碍方面的经验,这是一个由脑肿瘤慈善机构支持的倡议,旨在将碎片化的患者数据整合到一个丰富的数据集。最后,我们对这些方法的局限性进行了一些评论。

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