• Aucun résultat trouvé

Presentation Abstract

N/A
N/A
Protected

Academic year: 2021

Partager "Presentation Abstract"

Copied!
1
0
0

Texte intégral

(1)

OASIS

http://www.abstractsonline.com/...cfe43977-e160-4a59-be0b-588f639328fe&cKey=89ad1080-f498-4d9d-b5a4-c01cc79056f5&mKey=%7b6753AA4B-4EFD-470C-B925-C66F22F0712C%7d[20/09/2016 15:22:58]

Home > Search Results > Presentation Detail Quick Links

Presentation Abstract

Presentation: 391 - Disease outbreak articles as a source of queries for detection of signals of disease emergence on the

Internet

Location: Uxmal 2

Pres. Time: Saturday, Nov 07, 2015, 3:00 PM - 3:15 PM

Category: +C8. Surveillance, disease control/eradication programs

Author(s): Elena Arsevska1,2, Thierry Lefrancois1,2, Mathieu Roche3,4,5, Renaud Lancelot1,2, David Chavernac1,2, Sylvain

Falala1,2, Pascal Hendrikx6, Barbara Dufour7, 1Cirad, Montpellier, France; 2Inra, Montpellier, France; 3Cirad, Montpellier, France; 4Irstea, Montpellier, France; 5AgroParisTech, Montpellier, France; 6Anses, Lyon, France;

7EnvA, Maisons-Alfort, France. Contact: elena.arsevska@cirad.fr

Abstract: Timeliness and precision in detecting exotic animal infectious disease outbreaks is crucial for preventing their spread. In 2013, the French national platform for animal disease surveillance has set up an international epidemiological intelligence team (so-called VSI team) aiming at detecting, verifying and monitoring signals of disease emergence from different sources of information, including the Internet.

We propose an innovative method for monitoring disease emergence on the Internet. It is based on 3 sequential steps: 1) web crawling, 2) automatic classification of disease outbreak documents by machine learning approaches, 3) extraction of information from documents (e.g., disease, number of cases, location, etc.). To query the web, the choice of relevant terms is crucial. For this purpose, we used text mining together with a collective domain expertise following a Delphi method. This approach allowed highlighting the relevant terms to detect signals of disease emergence on the Internet. We have applied it to detect documents addressing African swine fever (ASF) outbreaks (i.e. 123 dispatches from Google, and 45 from PubMed) written in English language, obtained for the period 2011-2014 with the baseline query “African swine fever outbreak”.

Based on 2400 terms extracted with the text-mining approach, our automatic search system associated with the collective domain expertise (i.e. evaluation of 20 groups of terms by 21 specialists) identified 3 groups of highly specific terms to detect signals of ASF emergence: 1) haemorrhagic fever in Suidae, 2) mortality in Suidae and 3) swine fever. Implemented as complex queries, these groups of terms allowed finding previously undetected ASF outbreak articles with the baseline query (period 2011-14): 3 for each of groups 1 and 2, vs. 54 for group 3. Monitoring disease emergence on the Internet is a promising method towards improved disease introduction risk assessment. Nevertheless, domain experts still play a central role. Our method is generic: we intend to evaluate it on data from other exotic infectious diseases and with real-time data stream. Should this evaluation be successful, the method might be routinely used by the VSI team.

Simple Search Search Tips Display As Session Presentation Technical Support Phone: 217-398-1792 Helpdesk Quick Links Add to Itinerary Print Arsevska

Références

Documents relatifs

The limit profile comes by averaging with respect to the fast time variable, and still satisfies a parabolic model, whose diffusion matrix is completely characterized in terms of

Remark that, in the two-fluid setting, we obtain a new equation on the fraction α + in which the difference on the effective fluxes plays a crucial role. in [12] and

Similar conver- gence results for bound-constrained and linearly constrained optimization algorithms assert that every limit point of the algorithm is stationary, but they do not

In this context, our first research question is: (RQ1) Are there more bits of relevant infor- mation in the text collection used for term extraction at step (2) that may help

The proposed approach is illustrated by ana- lyzing and comparing the DMMs JODA (Joint integrated Object oriented Do- main Analysis) and ODM (Organizational Domain

We utilized two corpora in our experiments: the Quaero medical corpus, a French annotated resource for medical entity recognition and normalization [3], which was the basis for

Rigoli On entire solutions of degenerate elliptic differential inequalities with nonlinear gradient terms. Radulescu Explosive solutions of elliptic equations with absorption

We now describe MV polytopes for the only other rank two affine root system. One could perhaps rework the proof as in the sl b 2 case and directly prove that the MV polytopes