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Cross-sectional cycle threshold values reflect epidemic dynamics of COVID-19 in Madagascar
Soa Fy Andriamandimby; Cara E. Brook; Norosoa H Razanajatovo; Jean-Marius Rakotondramanga; Fidisoa Rasambainarivo; Vaomalala Raharimanga; Iony M. Razanajatovo; Reziky Mangahasimbola; Richter L Razafindratsimandresy; Santatra Randrianarisoa; Barivola Bernardson; Joelinotahina H Rabarison; Mirella Randrianarisoa; Frederick S Nasolo; Roger M Rabetombosoa; Rindra V Randremanana; Jean-Michel Heraud; Philippe G Dussart.
Afiliación
  • Soa Fy Andriamandimby; Institut Pasteur de Madagascar
  • Cara E. Brook; Cara Brook
  • Norosoa H Razanajatovo; Institut Pasteur de Madagascar
  • Jean-Marius Rakotondramanga; Institut Pasteur de Madagascar
  • Fidisoa Rasambainarivo; Princeton University
  • Vaomalala Raharimanga; Institut Pasteur de Madagascar
  • Iony M. Razanajatovo; Institut Pasteur de Madagascar
  • Reziky Mangahasimbola; Institut Pasteur de Madagascar
  • Richter L Razafindratsimandresy; Institut Pasteur de Madagascar
  • Santatra Randrianarisoa; University of Antananarivo
  • Barivola Bernardson; Institut Pasteur de Madagascar
  • Joelinotahina H Rabarison; Institut Pasteur de Madagascar
  • Mirella Randrianarisoa; Institut Pasteur de Madagascar
  • Frederick S Nasolo; Institut Pasteur de Madagascar
  • Roger M Rabetombosoa; Institut Pasteur de Madagascar
  • Rindra V Randremanana; Institut Pasteur de Madagascar
  • Jean-Michel Heraud; Institut Pasteur de Madagascar
  • Philippe G Dussart; Institut Pasteur de Madagascar
Preprint en En | PREPRINT-MEDRXIV | ID: ppmedrxiv-21259473
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ABSTRACT
As the national reference laboratory for febrile illness in Madagascar, we processed samples from the first epidemic wave of COVID-19, between March and September 2020. We fit generalized additive models to cycle threshold (Ct) value data from our RT-qPCR platform, demonstrating a peak in high viral load, low-Ct value infections temporally coincident with peak epidemic growth rates estimated in real time from publicly-reported incidence data and retrospectively from our own laboratory testing data across three administrative regions. We additionally demonstrate a statistically significant effect of duration of time since infection onset on Ct value, suggesting that Ct value can be used as a biomarker of the stage at which an individual is sampled in the course of an infection trajectory. As an extension, the population-level Ct distribution at a given timepoint can be used to estimate population-level epidemiological dynamics. We illustrate this concept by adopting a recently-developed, nested modeling approach, embedding a within-host viral kinetics model within a population-level Susceptible-Exposed-Infectious-Recovered (SEIR) framework, to mechanistically estimate epidemic growth rates from cross-sectional Ct distributions across three regions in Madagascar. We find that Ct-derived epidemic growth estimates slightly precede those derived from incidence data across the first epidemic wave, suggesting delays in surveillance and case reporting. Our findings indicate that public reporting of Ct values could offer an important resource for epidemiological inference in low surveillance settings, enabling forecasts of impending incidence peaks in regions with limited case reporting.
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Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Observational_studies / Prognostic_studies / Rct Idioma: En Año: 2021 Tipo del documento: Preprint
Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Observational_studies / Prognostic_studies / Rct Idioma: En Año: 2021 Tipo del documento: Preprint