Diagnostic testing and the evolution of detection avoidance by pathogens

IF 3.3 3区 医学 Q2 EVOLUTIONARY BIOLOGY
Jason Wood, Ben Ashby
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Abstract

Diagnostic testing is a key tool in the fight against many infectious diseases. The emergence of pathogen variants that are able to avoid detection by diagnostic testing therefore represents a key challenge for public health. In recent years, variants for multiple pathogens have emerged which escape diagnostic testing, including mutations in Plasmodium falciparum (malaria), Chlamydia trachomatis (chlamydia) and SARS-CoV-2 (COVID-19). However, little is currently known about when and the extent to which diagnostic test escape will evolve. Here we use a mathematical model to explore how the frequency of diagnostic testing, combined with variation in compliance and efficacy of isolating, together drive the evolution of detection avoidance. We derive key thresholds under which a testing regime will (i) select for diagnostic test avoidance, or (ii) drive the pathogen extinct. Crucially, we show that imperfect compliance with diagnostic testing regimes can have marked effects on selection for detection avoidance, and consequently, for disease control. Yet somewhat counterintuitively, we find that an intermediate level of testing can select for the highest level of detection avoidance. Our results, combined with evidence from various pathogens, demonstrate that the evolution of diagnostic testing avoidance should be carefully considered when designing diagnostic testing regimes.
诊断检测和病原体逃避检测的演变
诊断检测是防治许多传染病的关键工具。因此,能够逃避诊断检测的病原体变异体的出现是公共卫生面临的一项重大挑战。近年来,多种病原体出现了可逃避诊断检测的变种,包括恶性疟原虫(疟疾)、沙眼衣原体(衣原体)和 SARS-CoV-2 (COVID-19)的变异。然而,目前人们对诊断检测逃逸的时间和程度知之甚少。在此,我们使用一个数学模型来探讨诊断检测的频率与依从性和隔离效果的变化如何共同推动检测规避的演变。我们得出了一些关键阈值,在这些阈值下,检测制度将(i)选择逃避诊断检测,或(ii)导致病原体灭绝。最重要的是,我们表明,不完全遵守诊断检测制度会对避免检测的选择产生显著影响,进而影响疾病控制。然而,与直觉相反的是,我们发现中等水平的检测可以选择最高水平的检测规避。我们的研究结果以及来自各种病原体的证据表明,在设计诊断检测制度时,应仔细考虑避免诊断检测的演变。
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来源期刊
Evolution, Medicine, and Public Health
Evolution, Medicine, and Public Health Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
5.40
自引率
2.70%
发文量
37
审稿时长
8 weeks
期刊介绍: About the Journal Founded by Stephen Stearns in 2013, Evolution, Medicine, and Public Health is an open access journal that publishes original, rigorous applications of evolutionary science to issues in medicine and public health. It aims to connect evolutionary biology with the health sciences to produce insights that may reduce suffering and save lives. Because evolutionary biology is a basic science that reaches across many disciplines, this journal is open to contributions on a broad range of topics.
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