Department of Health Information Management, School of Medicine, Ardabil University of Medical Sciences, Ardabil, Iran.
Health Management and Economics Research Center, Health Management Research Institute, Iran University of Medical Sciences, Tehran, Iran.
Methods Inf Med. 2023 May;62(1-02):5-18. doi: 10.1055/s-0043-1761500. Epub 2023 Jan 30.
In the health care environment, a huge volume of data is produced on a daily basis. However, the processes of collecting, storing, sharing, analyzing, and reporting health data usually face with numerous challenges that lead to producing incomplete, inaccurate, and untimely data. As a result, data quality issues have received more attention than before.
The purpose of this article is to provide an insight into the data quality definitions, dimensions, and assessment methodologies.
In this article, a scoping literature review approach was used to describe and summarize the main concepts related to data quality and data quality assessment methodologies. Search terms were selected to find the relevant articles published between January 1, 2012 and September 31, 2022. The retrieved articles were then reviewed and the results were reported narratively.
In total, 23 papers were included in the study. According to the results, data quality dimensions were various and different methodologies were used to assess them. Most studies used quantitative methods to measure data quality dimensions either in paper-based or computer-based medical records. Only two studies investigated respondents' opinions about data quality.
In health care, high-quality data not only are important for patient care, but also are vital for improving quality of health care services and better decision making. Therefore, using technical and nontechnical solutions as well as constant assessment and supervision is suggested to improve data quality.
在医疗保健环境中,每天都会产生大量的数据。然而,数据的收集、存储、共享、分析和报告过程通常面临着许多挑战,导致数据不完整、不准确和不及时。因此,数据质量问题比以往受到了更多的关注。
本文旨在深入了解数据质量的定义、维度和评估方法。
本文采用范围综述方法,描述和总结与数据质量和数据质量评估方法相关的主要概念。选择搜索词来查找 2012 年 1 月 1 日至 2022 年 9 月 31 日期间发表的相关文章。然后对检索到的文章进行审查,并以叙述的方式报告结果。
共有 23 篇论文纳入研究。结果表明,数据质量维度多种多样,并且使用了不同的方法来评估它们。大多数研究使用定量方法来衡量纸质或基于计算机的病历中的数据质量维度。只有两项研究调查了受访者对数据质量的看法。
在医疗保健中,高质量的数据不仅对患者护理很重要,而且对改善医疗保健服务质量和更好的决策制定也至关重要。因此,建议使用技术和非技术解决方案以及持续的评估和监督来提高数据质量。