Nowcasting epidemic trends using hospital- and community-based virologic test data

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Abstract

Population viral loads measured by RT-qPCR cycle threshold (Ct) values are an alternative to case counts and hospitalizations for tracking epidemic trends, but their strengths, limitations and statistical power under various real-world conditions have not been explored. Here, we used SARS-CoV-2 RT-qPCR results from hospital testing in Massachusetts, USA, municipal testing in California, USA, and a combination of theory and simulation analysis to quantify biological and logistical factors impacting Ct-based epidemic nowcasting accuracy. We found that changes to peak viral load, viral growth and clearance rates, and sampling approach and delays all affect the relationship between growth rates and Ct values. We fitted generalized additive models to predict the growth rate and direction of SARS-CoV-2 incidence using time-varying Ct value distributions and assessed nowcasting accuracy over two-week windows. The model predicted epidemic growth rates and direction well from ideal synthetic data (growth rate RMSE of 0.0192; epidemic direction AUC of 0.926) but showed modest accuracy with real-world data (RMSE of 0.039-0.052; AUC of 0.72-0.78). Predictions were robust to testing regimes and sample sizes, and trimming outliers improved performance. Our results elucidate the possibilities and limitations of Ct value-based epidemic surveillance, highlighting where they may complement traditional incidence metrics.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
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License: CC-BY-NC-4.0