We introduce a method for estimating incidence curves of several co-circulating infectious pathogens, where each infection has its own probabilities of particular symptom profiles. Our deconvolution method utilizes weekly surveillance data on symptoms from a defined population as well as additional data on symptoms from a sample of virologically confirmed infectious episodes. We illustrate this method by numerical simulations and by using data from a survey conducted on the University of Michigan campus. Last, we describe the data needs to make such estimates accurate. © 2011 Goldstein et al.
CITATION STYLE
Goldstein, E., Cowling, B. J., Aiello, A. E., Takahashi, S., King, G., Lu, Y., & Lipsitch, M. (2011). Estimating incidence curves of several infections using symptom surveillance data. PLoS ONE, 6(8). https://doi.org/10.1371/journal.pone.0023380
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