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样本池化方法在病原体高通量筛查中的应用:实际意义。

Sample pooling methods for efficient pathogen screening: Practical implications.

机构信息

School of Informatics, Computing, and Cyber Systems, Northern Arizona University, Flagstaff, Arizona, United States of America.

Pathogen and Microbiome Institute, Northern Arizona University, Flagstaff, Arizona, United States of America.

出版信息

PLoS One. 2020 Nov 11;15(11):e0236849. doi: 10.1371/journal.pone.0236849. eCollection 2020.

Abstract

Due to the large number of negative tests, individually screening large populations for rare pathogens can be wasteful and expensive. Sample pooling methods improve the efficiency of large-scale pathogen screening campaigns by reducing the number of tests and reagents required to accurately categorize positive and negative individuals. Such methods rely on group testing theory which mainly focuses on minimizing the total number of tests; however, many other practical concerns and tradeoffs must be considered when choosing an appropriate method for a given set of circumstances. Here we use computational simulations to determine how several theoretical approaches compare in terms of (a) the number of tests, to minimize costs and save reagents, (b) the number of sequential steps, to reduce the time it takes to complete the assay, (c) the number of samples per pool, to avoid the limits of detection, (d) simplicity, to reduce the risk of human error, and (e) robustness, to poor estimates of the number of positive samples. We found that established methods often perform very well in one area but very poorly in others. Therefore, we introduce and validate a new method which performs fairly well across each of the above criteria making it a good general use approach.

摘要

由于大量的阴性测试,对大量人群进行罕见病原体的个体筛查可能既浪费又昂贵。样本汇集方法通过减少准确分类阳性和阴性个体所需的测试和试剂数量,提高了大规模病原体筛查活动的效率。这些方法依赖于群体检测理论,该理论主要侧重于最小化测试总数;然而,在为给定情况选择合适的方法时,还必须考虑许多其他实际问题和权衡。在这里,我们使用计算模拟来确定几种理论方法在以下方面的比较:(a)测试次数,以最小化成本并节省试剂,(b)连续步骤的数量,以减少完成检测所需的时间,(c)每个池中的样本数量,以避免检测限,(d)简单性,以降低人为错误的风险,以及(e)稳健性,以应对阳性样本数量的估计不佳。我们发现,既定方法在一个领域通常表现得非常好,但在其他领域却表现得非常差。因此,我们引入并验证了一种新方法,该方法在上述每个标准上都表现得相当好,使其成为一种通用的好方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc4d/7657563/deb4dd389096/pone.0236849.g001.jpg

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