Resource requirements to accelerate clinical applications of next-generation sequencing and radiomics: workshop commentary and review.

IF 9.9 1区 医学 Q1 ONCOLOGY
Lyndsay Harris, Lalitha K Shankar, Claire Hildebrandt, Wendy S Rubinstein, Kristofor Langlais, Henry Rodriguez, Adam Berger, John Freymann, Erich P Huang, P Mickey Williams, Jean Claude Zenklusen, Robert Ochs, Zivana Tezak, Berkman Sahiner
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引用次数: 0

Abstract

The National Institutes of Health-US Food and Drug Administration Joint Leadership Council Next-Generation Sequencing and Radiomics Working Group was formed by the National Institutes of Health-Food and Drug Administration Joint Leadership Council to promote the development and validation of innovative next-generation sequencing tests, radiomic tools, and associated data analysis and interpretation enhanced by artificial intelligence and machine learning technologies. A 2-day workshop was held on September 29-30, 2021, to convene members of the scientific community to discuss how to overcome the "ground truth" gap that has frequently been acknowledged as 1 of the limiting factors impeding high-quality research, development, validation, and regulatory science in these fields. This report provides a summary of the resource gaps identified by the working group and attendees, highlights existing resources and the ways they can potentially be employed to accelerate growth in these fields, and presents opportunities to support next-generation sequencing and radiomic tool development and validation using technologies such as artificial intelligence and machine learning.

加快新一代测序和放射组学临床应用的资源需求:研讨会评论和综述。
美国国立卫生研究院(NIH)/美国食品和药物管理局(FDA)联合领导委员会下一代测序(NGS)和放射组学工作组(NGS&R WG)由美国国立卫生研究院/美国食品和药物管理局联合领导委员会成立,旨在促进创新型 NGS 检测和放射组学工具的开发和验证,以及通过人工智能(AI)和机器学习(ML)技术加强相关数据分析和解读。2021 年 9 月 29-30 日举办了为期两天的研讨会,召集科学界成员讨论如何克服 "地面实况 "差距,该差距经常被认为是阻碍这些领域高质量研究、开发、验证和监管科学的限制因素之一。本报告概述了工作组和与会者发现的资源缺口,重点介绍了现有资源及其可能被用来加快这些领域发展的方式,并提出了利用人工智能和 ML 等技术来支持 NGS 和放射组学工具开发和验证的机会。
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来源期刊
CiteScore
17.00
自引率
2.90%
发文量
203
审稿时长
4-8 weeks
期刊介绍: The Journal of the National Cancer Institute is a reputable publication that undergoes a peer-review process. It is available in both print (ISSN: 0027-8874) and online (ISSN: 1460-2105) formats, with 12 issues released annually. The journal's primary aim is to disseminate innovative and important discoveries in the field of cancer research, with specific emphasis on clinical, epidemiologic, behavioral, and health outcomes studies. Authors are encouraged to submit reviews, minireviews, and commentaries. The journal ensures that submitted manuscripts undergo a rigorous and expedited review to publish scientifically and medically significant findings in a timely manner.
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