Abstract PO-047: Extraction and organization of all published results on impact of systemic racism on treatment of cancer patients

Shania Lunna, Samuel Gauthier, Stacia Richard, Rachel Bombardier, D. Krag
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Abstract

Statement of the problem: Unconscious bias and systemic racism is evident in published reports that describe persistent asymmetric outcomes in our entire health care system including oncology. Framework of the solution: There already is a very large set of publications that describe the extent and outcomes of health disparities. An extensive data set also describes mitigation strategies. Changing the outcomes includes policy changes within the health care system but also with regulatory agencies and the legislative branch of government. It is critical that these different systems are armed with the totality of available information in a manner that can be leveraged to improve the health care of all. We have developed a system of describing large sets of data manually extracted from published articles. These results are aggregated together independent of the framework of the manuscript so that similar outcomes can be placed side by side. This system can provide the necessary comprehensive data that is available today to begin to implement changes. Results to date: We have used COVID-19 publications as a prototype topic that has so many articles no single person can comprehend or manage. We extracted data from 1000 COVID-19 manuscripts that presented new data. This rendered 26,000 note fields arranged in a parent child relationship. The data base described 12,000 individual observations. A read only version is available at COVIDpublications.org. We are now applying this system to bias and stigma of the health care profession to persons who use drugs, and a demo of this project is available at (https://app.refbin.com/app/embed?m=1188). We have now established the rules to manually extract data from any clinical article that presents new data. This involves 4 types of note fields per observation arranged in parent child relationships. 1) The observation, 2) description of the observation, 3) the population, and 4) the topic. This system allows the observations from an unlimited number of studies to share parents. This results in about a 5-fold reduction in the total number of note fields. It also allows grouping of information so that a user can scan the data base and access the entirety of information without specifically knowing what they are looking for. Conclusions: We are expanding this data base bias and systemic racism of the health care system on persons with substance use disorder to include the broader range of patients. By capturing all of the data that is known we hope to influence implementation of improved health care to patients including those with cancer. These results will be presented in October.
摘要PO-047:系统性种族主义对癌症患者治疗影响的所有已发表结果的提取和组织
问题陈述:在已发表的报告中,无意识的偏见和系统性的种族主义是显而易见的,这些报告描述了包括肿瘤在内的整个医疗保健系统中持续存在的不对称结果。解决方案的框架:已经有大量的出版物描述了健康差距的程度和结果。一个广泛的数据集还描述了缓解策略。改变结果包括卫生保健系统内部的政策变化,也包括监管机构和政府立法部门的政策变化。至关重要的是,这些不同的系统必须以一种可用于改善所有人的卫生保健的方式,将现有的全部信息武装起来。我们开发了一个系统,用于描述从已发表文章中手动提取的大量数据集。这些结果被聚合在一起,独立于手稿的框架,以便相似的结果可以并排放置。这个系统可以提供必要的综合数据,现在就可以开始实施变更。迄今为止的成果:我们已经将COVID-19出版物作为一个原型主题,其中有很多文章,单个人无法理解或管理。我们从1000篇提供新数据的COVID-19手稿中提取了数据。这将呈现以父子关系排列的26,000个注释字段。该数据库描述了12000个单独的观察结果。只读版本可在COVIDpublications.org上获得。我们现在正在将这一系统应用于卫生保健专业人员对吸毒者的偏见和污名,这个项目的演示可在(https://app.refbin.com/app/embed?m=1188)上获得。我们现在已经建立了从任何呈现新数据的临床文章中手动提取数据的规则。这涉及到4种类型的注释字段,每个观察安排在亲子关系。1)观察,2)观察的描述,3)人群,4)主题。该系统允许来自无限数量的研究的观察结果共享父母。这使得注释字段的总数减少了大约5倍。它还允许对信息进行分组,以便用户可以扫描数据库并访问整个信息,而无需特别知道他们要查找的是什么。结论:我们正在扩大这个数据库的偏见和系统性种族主义的卫生保健系统的人与物质使用障碍,以包括更广泛的患者。通过收集所有已知的数据,我们希望对包括癌症患者在内的患者实施更好的医疗保健产生影响。这些结果将于10月份公布。
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