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Estimating the generation time for influenza transmission using household data in the United States.
Chan, Louis Yat Hin; Morris, Sinead E; Stockwell, Melissa S; Bowman, Natalie M; Asturias, Edwin; Rao, Suchitra; Lutrick, Karen; Ellingson, Katherine D; Nguyen, Huong Q; Maldonado, Yvonne; McLaren, Son H; Sano, Ellen; Biddle, Jessica E; Smith-Jeffcoat, Sarah E; Biggerstaff, Matthew; Rolfes, Melissa A; Talbot, H Keipp; Grijalva, Carlos G; Borchering, Rebecca K; Mellis, Alexandra M.
Afiliación
  • Chan LYH; Centers for Disease Control and Prevention.
  • Morris SE; Centers for Disease Control and Prevention.
  • Stockwell MS; Goldbelt Professional Services.
  • Bowman NM; Columbia University Irving Medical Center.
  • Asturias E; University of North Carolina at Chapel Hill.
  • Rao S; University of Colorado School of Medicine and Children's Hospital Colorado.
  • Lutrick K; University of Colorado School of Medicine and Children's Hospital Colorado.
  • Ellingson KD; University of Arizona.
  • Nguyen HQ; University of Arizona.
  • Maldonado Y; Marshfield Clinic Research Institute.
  • McLaren SH; Stanford University.
  • Sano E; Columbia University Irving Medical Center.
  • Biddle JE; Columbia University Irving Medical Center.
  • Smith-Jeffcoat SE; Centers for Disease Control and Prevention.
  • Biggerstaff M; Centers for Disease Control and Prevention.
  • Rolfes MA; Centers for Disease Control and Prevention.
  • Talbot HK; Centers for Disease Control and Prevention.
  • Grijalva CG; Vanderbilt University Medical Center.
  • Borchering RK; Vanderbilt University Medical Center.
  • Mellis AM; Centers for Disease Control and Prevention.
medRxiv ; 2024 Aug 19.
Article en En | MEDLINE | ID: mdl-39228738
ABSTRACT
The generation time, representing the interval between infections in primary and secondary cases, is essential for understanding and predicting the transmission dynamics of seasonal influenza, including the real-time effective reproduction number (Rt). However, comprehensive generation time estimates for seasonal influenza, especially post the 2009 influenza pandemic, are lacking. We estimated the generation time utilizing data from a 7-site case-ascertained household study in the United States over two influenza seasons, 2021/2022 and 2022/2023. More than 200 individuals who tested positive for influenza and their household contacts were enrolled within 7 days of the first illness in the household. All participants were prospectively followed for 10 days completing daily symptom diaries and collecting nasal swabs, which were tested for influenza via RT-PCR. We analyzed these data by modifying a previously published Bayesian data augmentation approach that imputes infection times of cases to obtain both intrinsic (assuming no susceptible depletion) and realized (observed within household) generation times. We assessed the robustness of the generation time estimate by varying the incubation period, and generated estimates of the proportion of transmission before symptomatic onset, infectious period, and latent period. We estimated a mean intrinsic generation time of 3.2 (95% credible interval, CrI 2.9-3.6) days, with a realized household generation time of 2.8 (95% CrI 2.7-3.0) days. The generation time exhibited limited sensitivity to incubation period variation. Estimates of the proportion of transmission that occurred before symptom onset, the infectious period, and the latent period were sensitive to variation in incubation periods. Our study contributes to the ongoing efforts to refine estimates of the generation time for influenza. Our estimates, derived from recent data following the COVID-19 pandemic, are consistent with previous pre-pandemic estimates, and will be incorporated into real-time Rt estimation efforts.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: MedRxiv Año: 2024 Tipo del documento: Article Pais de publicación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: MedRxiv Año: 2024 Tipo del documento: Article Pais de publicación: Estados Unidos