Toward Improved Data Quality in Public Health: Analysis of Anomaly Detection Tools applied to HIV/AIDS Data in Africa

Folashikemi Maryam Asani Olaniyan, A. Owoseni
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Abstract

The study examined the data quality efficiency of the WHO Data Quality Review (DQR) toolkit and PyCaret anomaly detection algorithms. The tools were applied to the African HIV/AIDS data (2015-2021) extracted from a public data repository (data.pepfar.gov). The research outcome suggests that unsupervised anomaly detection algorithms could complement the efficiency of the WHO DQR toolkit and improve Data Quality Assessment (DQA). In particular, the study showed that anomaly detection algorithms through python programming provide a more straightforward and more reliable process for detecting data inconsistencies, incompleteness, and timeliness appears more accurate than the WHO tool. Consequently, the study contributed to ongoing debates on improving health data quality in low-income African countries.
提高公共卫生数据质量:分析非洲应用于艾滋病毒/艾滋病数据的异常检测工具
该研究检查了世卫组织数据质量审查(DQR)工具包和PyCaret异常检测算法的数据质量效率。这些工具被应用于从公共数据库(data.pepfar.gov)中提取的非洲艾滋病毒/艾滋病数据(2015-2021年)。研究结果表明,无监督异常检测算法可以补充WHO DQR工具包的效率,提高数据质量评估(DQA)。特别是,该研究表明,通过python编程的异常检测算法为检测数据不一致、不完整和及时性提供了更直接、更可靠的过程,似乎比WHO工具更准确。因此,这项研究促进了正在进行的关于提高低收入非洲国家卫生数据质量的辩论。
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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