Decision fusion in healthcare and medicine: a narrative review.

IF 2.2 Q2 HEALTH CARE SCIENCES & SERVICES
mHealth Pub Date : 2022-01-20 eCollection Date: 2022-01-01 DOI:10.21037/mhealth-21-15
Elham Nazari, Rizwana Biviji, Danial Roshandel, Reza Pour, Mohammad Hasan Shahriari, Amin Mehrabian, Hamed Tabesh
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引用次数: 3

Abstract

Objective: To provide an overview of the decision fusion (DF) technique and describe the applications of the technique in healthcare and medicine at prevention, diagnosis, treatment and administrative levels.

Background: The rapid development of technology over the past 20 years has led to an explosion in data growth in various industries, like healthcare. Big data analysis within the healthcare systems is essential for arriving to a value-based decision over a period of time. Diversity and uncertainty in big data analytics have made it impossible to analyze data by using conventional data mining techniques and thus alternative solutions are required. DF is a form of data fusion techniques that could increase the accuracy of diagnosis and facilitate interpretation, summarization and sharing of information.

Methods: We conducted a review of articles published between January 1980 and December 2020 from various databases such as Google Scholar, IEEE, PubMed, Science Direct, Scopus and web of science using the keywords decision fusion (DF), information fusion, healthcare, medicine and big data. A total of 141 articles were included in this narrative review.

Conclusions: Given the importance of big data analysis in reducing costs and improving the quality of healthcare; along with the potential role of DF in big data analysis, it is recommended to know the full potential of this technique including the advantages, challenges and applications of the technique before its use. Future studies should focus on describing the methodology and types of data used for its applications within the healthcare sector.

Abstract Image

医疗保健和医学中的决策融合:一个叙事回顾。
目的:综述决策融合(DF)技术,并介绍该技术在医疗保健、预防、诊断、治疗和管理等方面的应用。背景:在过去的20年里,技术的快速发展导致了各个行业数据的爆炸式增长,比如医疗保健。医疗保健系统中的大数据分析对于在一段时间内做出基于价值的决策至关重要。大数据分析的多样性和不确定性使得使用传统的数据挖掘技术无法分析数据,因此需要替代解决方案。DF是数据融合技术的一种形式,可以提高诊断的准确性,促进信息的解释、总结和共享。方法:采用决策融合(DF)、信息融合、医疗保健、医学和大数据等关键词,对Google Scholar、IEEE、PubMed、Science Direct、Scopus和web of Science等数据库中1980年1月至2020年12月发表的文章进行综述。这篇叙述性评论共收录了141篇文章。结论:鉴于大数据分析对降低医疗成本和提高医疗质量的重要性;随着DF在大数据分析中的潜在作用,建议在使用该技术之前了解该技术的全部潜力,包括该技术的优势、挑战和应用。未来的研究应侧重于描述其在医疗保健部门应用中使用的方法和数据类型。
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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CiteScore
5.40
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