Data structuring may prevent ambiguity and improve personalized medical prognosis

IF 8.7 2区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Claudia R. Libertin , Prakasha Kempaiah , Yash Gupta , Jeanne M. Fair , Marc H.V. van Regenmortel , Athos Antoniades , Ariel L. Rivas , Almira L. Hoogesteijn
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引用次数: 3

Abstract

Topics expected to influence personalized medicine (PM), where medical decisions, practices, and treatments are tailored to the individual patient, are reviewed. Lack of discrimination due to different biological conditions that express similar values of numerical variables (ambiguity) is regarded to be a major potential barrier for PM. This material explores possible causes and sources of ambiguity and offers suggestions for mitigating the impacts of uncertainties.

Three causes of ambiguity are identified: (1) delayed adoption of innovations, (2) inadequate emphases, and (3) inadequate processes used when new medical practices are developed and validated. One example of the first problem is the relative lack of medical research on “compositional data” –the type that characterizes leukocyte data. This omission results in erroneous use of data abundantly utilized in medicine, such as the blood cell differential. Emphasis on data output ‒not biomedical interpretation that facilitates the use of clinical data‒ exemplifies the second type of problems. Reliance on tools generated in other fields (but not validated within biomedical contexts) describes the last limitation.

Because reductionism is associated with these problems, non-reductionist alternatives are reviewed as potential remedies. Data structuring (converting data into information) is considered a key element that may promote PM. To illustrate a process that includes data-information-knowledge and decision-making, previously published data on COVID-19 are utilized.

It is suggested that ambiguity may be prevented or ameliorated. Provided that validations are grounded on biomedical knowledge, approaches that describe certain criteria – such as non-overlapping data intervals of patients that experience different outcomes, immunologically interpretable data, and distinct graphic patterns – can inform, at personalized bases, earlier and/or with fewer observations.

数据结构可以防止歧义并改善个性化的医疗预后
对预期影响个性化医学(PM)的主题进行了审查,其中医疗决策、实践和治疗是针对个别患者量身定制的。由于不同的生物条件表达了相似的数值变量值(模糊性),因此缺乏辨别力被认为是PM的主要潜在障碍。本材料探讨了模糊性的可能原因和来源,并为减轻不确定性的影响提供了建议。模糊的三个原因被确定:(1)创新的采用延迟,(2)重点不充分,以及(3)在开发和验证新的医疗实践时使用的流程不充分。第一个问题的一个例子是相对缺乏对“成分数据”的医学研究,即白细胞数据的特征类型。这种遗漏导致了对医学中大量使用的数据的错误使用,例如血细胞差异。强调数据输出——而不是促进临床数据使用的生物医学解释——体现了第二类问题。对其他领域生成的工具的依赖(但未在生物医学环境中验证)描述了最后一个限制。由于还原论与这些问题有关,非还原论的替代方案被视为潜在的补救措施。数据结构化(将数据转换为信息)被认为是可能促进PM的关键要素。为了说明包括数据信息认知和决策在内的过程,使用了之前发布的关于新冠肺炎的数据。有人建议可以防止或改善歧义。假设验证基于生物医学知识,描述某些标准的方法——例如经历不同结果的患者的非重叠数据间隔、免疫可解释数据和不同的图形模式——可以在个性化的基础上更早和/或更少地进行观察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Molecular Aspects of Medicine
Molecular Aspects of Medicine 医学-生化与分子生物学
CiteScore
18.20
自引率
0.00%
发文量
85
审稿时长
55 days
期刊介绍: Molecular Aspects of Medicine is a review journal that serves as an official publication of the International Union of Biochemistry and Molecular Biology. It caters to physicians and biomedical scientists and aims to bridge the gap between these two fields. The journal encourages practicing clinical scientists to contribute by providing extended reviews on the molecular aspects of a specific medical field. These articles are written in a way that appeals to both doctors who may struggle with basic science and basic scientists who may have limited awareness of clinical practice issues. The journal covers a wide range of medical topics to showcase the molecular insights gained from basic science and highlight the challenging problems that medicine presents to the scientific community.
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