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Perez Andres

Description

The Centers for Disease Control and Prevention's (CDC) Emerging Infections Program (EIP) monitors and studies many infectious diseases, including influenza. In 10 states in the US, information is collected for hospitalized patients with laboratory-confirmed influenza. Data are extracted manually by EIP personnel at each site, stripped of personal identifiers and sent to the CDC. The anonymized data are received and reviewed for consistency at the CDC before they are incorporated into further analyses. This includes identifying errors, which are used for classification.

 

Objective

Introducing data quality checks can be used to generate feedback that remediates and/or reduces error generation at the source. In this report, we introduce a classification of errors generated as part of the data collection process for the EIP’s Influenza Hospitalization Surveillance Project at the CDC. We also describe a set of mechanisms intended to minimize and correct these errors via feedback, with the collection sites.

Submitted by hparton on
Description

Foot-and-mouth disease (FMD) is one of the most devastating diseases of farm animals. There is a critical need for countries to have a global FMD situational awareness. Monitoring the online news sources for FMD-related news is an important component of situational awareness. The FMD Lab at UC Davis (http://fmd.ucdavis.edu/) has developed models and systems for global FMD surveillance, including the FMD BioPortal web-based system jointly with the AI Lab at the University of Arizona. They have also been gathering and processing FMD-related news from the FMD World Reference Laboratory, the OIE, the FAO, among others. However, manual searches are necessary identify and integrate the FMD news into their models and systems. This manual work is not only time consuming and labor intensive but may also lead to the loss of some important information.

 

OBJECTIVE

This paper describes an FMD news monitoring and classification system which can automatically monitor FMD related news from online news data sources, generate news summarization and classify the news into three categories defined by domain experts. The report research is a collaborative effort between the Artificiall Intelligence Lab at the University of Arizona and the FMD Lab at UC Davis.

Submitted by elamb on