EN BREF ...
"Personalized peer-to-peer contact tracing through the use of mobile applications has the potential to shift the paradigm of Covid-19 community spread. Although some countries have deployed centralized tracking systems through either GPS or Bluetooth, more privacy-protecting decentralized systems offer much of the same benefit without concentrating data in the hands of a state authority or in for-profit corporations. Additionally, machine learning methods can be used to circumvent some of the limitations of standard digital tracing by incorporating many clues (including medical conditions, self-reported symptoms, and numerous encounters with people at different risk levels, for different durations and distances) and their uncertainty into a more graded and precise estimation of infection and contagion risk." En bref issu de l'étude.
Rédacteur(s) de la fiche : Beesens Teams
Introductio
1 - In tincidunt nunc ac velit tristique
- Pellentesque congue, magna elementum suscipit vestibulum
- Aenean eleifend sodales ipsum vitae consequat
- Quisque est leo tempus vel purus eu, placerat tincidunt nisl
2 - Sed lobortis elit vitae mollis consectetur
- In tincidunt nunc ac velit tristique
- Donec accumsan elit ac ornare eleifend
- Sed pellentesque suscipit quam ut finibus
- Fusce imperdiet neque sit amet ipsum ullamcorper scelerisque
3 - Lorem ipsum dolor sit amet
- Pellentesque congue, magna elementum suscipit vestibulum
- Aenean eleifend sodales ipsum vitae consequat
- Quisque est leo tempus vel purus eu, placerat tincidunt nisl
Conclusio
Pour accéder à ce contenu,
créez votre compte
gratuitement
Accéder à :
- L'ensemble de la veille e-santé sélectionnée
par la communauté Beesens, - Des documents de références de la e-santé,
- Et bien plus encore...
Déjà inscrit ? Identifiez-vous