Mariken de Wit

203 posts

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Mariken de Wit

Mariken de Wit

@MarikendeWit

Infectious disease epidemiologist | Assistant Prof @WUR | One Health | Sexual health | Previously @LSHTM

Katılım Haziran 2012
222 Takip Edilen154 Takipçiler
Mariken de Wit
Mariken de Wit@MarikendeWit·
Read the full preprint for more outbreak reconstruction, reproduction numbers, and lots of methodological details!
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DURABLE
DURABLE@DURABLE_EU·
@DURABLE_EU researchers contributed to the first detection of West Nile virus in Belgium through advanced wildlife monitoring. This is crucial knowledge for protecting people and animals ahead of the 2026 mosquito season. @HorizonEU @EC_HERA #abstract_content" target="_blank" rel="nofollow noopener">eurosurveillance.org/content/10.280…
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BEACON
BEACON@beacon_bio·
The 2025 West Nile virus season in Europe recorded 1112 human cases across 14 countries with 97 fatalities, representing the fourth highest annual total since surveillance began in 2008 and a 47% increase over the 10-year average Read more at: beaconbio.org/en/report/?rep…
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Shenglai Yin
Shenglai Yin@Shenglai_Y·
Landscape changes elevate the risk of avian influenza virus diversification and emergence in the East Asian–Australasian Flyway | PNAS pnas.org/doi/10.1073/pn…
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Mariken de Wit
Mariken de Wit@MarikendeWit·
🔔This shows that the effectiveness of potential interventions, focused on preventing introductions or reducing within-LTCF transmission, varied over the course of the outbreak. Adaptive intervention planning might be the way to go!
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Mariken de Wit
Mariken de Wit@MarikendeWit·
Take-aways: - Within-LTCF transmission was substantially reduced after vaccination roll-out in LTCFs. - Contributions to infection risk in residents varied over the course of the outbreak.
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Mariken de Wit
Mariken de Wit@MarikendeWit·
🖥️How? We explored contributions to the FOI in LTCF residents from 1) residents themselves, 2) health care workers, and 3) the general population using a Bayesian GLM.
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