Potential COVID-19 test fraud detection: Findings from a pilot study comparing conventional and statistical approaches.

Journal of health monitoring Pub Date : 2024-06-19 eCollection Date: 2024-06-01 DOI:10.25646/12100
Michael Bosnjak, Stefan Dahm, Ronny Kuhnert, Dennis Weihrauch, Angelika Schaffrath Rosario, Julia Hurraß, Patrick Schmich, Lothar H Wieler
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Abstract

Background: Some COVID-19 testing centres have reported manipulated test numbers for antigen tests/rapid tests. This study compares statistical approaches with traditional fraud detection methods. The extent of agreement between traditional and statistical methods was analysed, as well as the extent to which statistical approaches can identify additional cases of potential fraud.

Methods: Outlier detection marking a high number of tests, modeling of the positivity rate (Poisson Regression), deviation from distributional assumptions regarding the first digit (Benford's Law) and the last digit of the number of reported tests. The basis of the analyses were billing data (April 2021 to August 2022) from 907 testing centres in a German city.

Results: The positive agreement between the conventional and statistical approaches ('sensitivity') was between 8.6% and 24.7%, the negative agreement ('specificity') was between 91.3% and 94.6%. The proportion of potentially fraudulent testing centres additionally identified by statistical approaches was between 7.0% and 8.7%. The combination of at least two statistical methods resulted in an optimal detection rate of test centres with previously undetected initial suspicion.

Conclusions: The statistical approaches were more effective and systematic in identifying potentially fraudulent testing centres than the conventional methods. Testing centres should be urged to map paradata (e.g. timestamps of testing) in future pandemics.

潜在的 COVID-19 检验欺诈检测:比较传统方法和统计方法的试点研究结果。
背景:一些 COVID-19 检测中心报告称抗原检测/快速检测的检测号被篡改。本研究将统计方法与传统的欺诈检测方法进行了比较。分析了传统方法与统计方法之间的一致程度,以及统计方法能在多大程度上识别出更多潜在欺诈案例:离群点检测标志着大量检测、阳性率建模(泊松回归)、报告检测次数的首位数字(本福德定律)和末位数字偏离分布假设。分析的基础是德国某城市 907 个检测中心的账单数据(2021 年 4 月至 2022 年 8 月):结果:传统方法和统计方法之间的正向一致性("灵敏度")在 8.6% 到 24.7% 之间,负向一致性("特异性")在 91.3% 到 94.6% 之间。统计方法额外识别出的潜在欺诈检测中心的比例介于 7.0% 和 8.7% 之间。将至少两种统计方法结合使用,可使以前未发现的初步可疑检测中心的检测率达到最佳水平:与传统方法相比,统计方法能更有效、更系统地识别可能存在欺诈行为的检测中心。应敦促检测中心在未来的大流行中绘制范例图(如检测的时间戳)。
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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