相关性改善群体检测:建模浓度依赖的检测误差

Correlation Improves Group Testing: Modeling Concentration-Dependent Test Errors

Management Science · 2025
被引 0
人大 A+FT50UTD24ABS 4*

中文导读

研究了在群体检测中,样本浓度依赖的检测误差如何改变相关性对检测效率的影响,发现当检测灵敏度随浓度增加时,将相关样本混合检测比独立混合能获得更高的灵敏度,但效率可能降低。

Abstract

Population-wide screening is a powerful tool for controlling infectious diseases. Group testing can enable such screening despite limited resources. Viral concentration of pooled samples are often positively correlated, either because prevalence and sample collection are influenced by location, or through intentional enhancement via pooling samples according to risk or household. Such correlation is known to improve efficiency when test sensitivity is fixed. However, in reality, a test’s sensitivity depends on the concentration of the analyte (e.g., viral RNA), as in the so-called dilution effect, where sensitivity decreases for larger pools. We show that concentration-dependent test error alters correlation’s effect under the most widely used group testing procedure, the two-stage Dorfman procedure. We prove that when test sensitivity increases with concentration: pooling correlated samples together (correlated pooling) achieves asymptotically higher sensitivity than independently pooling the samples (naive pooling). In contrast, in the concentration-independent case, correlation does not affect sensitivity. Moreover, with concentration-dependent errors, correlation can degrade test efficiency compared with naive pooling, whereas under concentration-independent errors, correlation always improves efficiency. We propose an alternative measure of test resource usage, the number of positives found per test consumed, which we argue is better aligned with infection control, and show that correlated pooling outperforms naive pooling on this measure. In simulation, we show that the effect of correlation under realistic concentration-dependent test error is meaningfully different from correlation’s effect assuming fixed sensitivity. Our findings underscore the importance for policy makers of using models that incorporate naturally occurring correlation and of considering ways of strengthening this correlation. This paper was accepted by Carri Chan, healthcare management. Funding: This work was supported by the Provost’s Office of Cornell University, the Air Force Office of Scientific Research [Grant FA9550-19-1-0283], and the National Science Foundation Division of Mathematical Sciences [Grant DMS2230023]. Supplemental Material: The online appendices and data files are available at https://doi.org/10.1287/mnsc.2021.04217 .

群组检测浓度相关误差稀释效应多阶段检测