理解和解决癌症差异的临床信息学方法。

Tafadzwa L Chaunzwa, Maria Quiles Del Rey, Danielle S Bitterman
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引用次数: 3

摘要

目的:不同种族、民族、性别、社会经济地位和地理位置的癌症发病率和预后差异有充分的文献记载,但其病因往往知之甚少,而且是多因素的。临床信息学可以通过对多种类型的数据进行高通量分析,为更好地理解和解决这些差异提供工具。在这里,我们回顾了最近在临床信息学研究和测量癌症差异方面的努力。方法:我们对2018-2021年发表的与癌症差异和偏倚相关的临床信息学研究进行了叙述性回顾,重点关注现实世界数据(RWD)分析、自然语言处理(NLP)、放射组学、基因组学、蛋白质组学、代谢组学和宏基因组学等领域。结果:临床信息学研究调查了不同种族、民族、性别和年龄的癌症差异。大多数癌症差异在临床信息学中使用RWD分析,NLP,放射组学和基因组学。临床信息学在了解癌症差异方面的新兴应用,包括蛋白质组学、代谢组学和宏基因组学,在文献中没有得到很好的体现,但它们是有希望的未来研究途径。在开发和实施癌症临床信息学技术时,算法偏差被认为是一个重要的考虑因素,并对解决这一偏差的努力进行了回顾。结论:近年来,临床信息学已被用于探索一系列数据来源,以了解不同人群之间的癌症差异。随着信息学工具整合到临床决策中,需要注意确保算法偏差不会扩大现有的差距。在我们日益相互关联的医疗系统中,临床信息学准备释放多平台健康数据的全部潜力,以解决癌症差异。
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Clinical Informatics Approaches to Understand and Address Cancer Disparities.

Objectives: Disparities in cancer incidence and outcomes across race, ethnicity, gender, socioeconomic status, and geography are well-documented, but their etiologies are often poorly understood and multifactorial. Clinical informatics can provide tools to better understand and address these disparities by enabling high-throughput analysis of multiple types of data. Here, we review recent efforts in clinical informatics to study and measure disparities in cancer.

Methods: We carried out a narrative review of clinical informatics studies related to cancer disparities and bias published from 2018-2021, with a focus on domains such as real-world data (RWD) analysis, natural language processing (NLP), radiomics, genomics, proteomics, metabolomics, and metagenomics.

Results: Clinical informatics studies that investigated cancer disparities across race, ethnicity, gender, and age were identified. Most cancer disparities work within clinical informatics used RWD analysis, NLP, radiomics, and genomics. Emerging applications of clinical informatics to understand cancer disparities, including proteomics, metabolomics, and metagenomics, were less well represented in the literature but are promising future research avenues. Algorithmic bias was identified as an important consideration when developing and implementing cancer clinical informatics techniques, and efforts to address this bias were reviewed.

Conclusions: In recent years, clinical informatics has been used to probe a range of data sources to understand cancer disparities across different populations. As informatics tools become integrated into clinical decision-making, attention will need to be paid to ensure that algorithmic bias does not amplify existing disparities. In our increasingly interconnected medical systems, clinical informatics is poised to untap the full potential of multi-platform health data to address cancer disparities.

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来源期刊
Yearbook of medical informatics
Yearbook of medical informatics Medicine-Medicine (all)
CiteScore
4.10
自引率
0.00%
发文量
20
期刊介绍: Published by the International Medical Informatics Association, this annual publication includes the best papers in medical informatics from around the world.
期刊最新文献
Reflections Towards the Future of Medical Informatics. The Impact of Clinical Decision Support on Health Disparities and the Digital Divide. Health Information Exchange: Understanding the Policy Landscape and Future of Data Interoperability. The Need for Green and Responsible Medical Informatics and Digital Health: Looking Forward with One Digital Health. Health Equity in Clinical Research Informatics.
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