Dórea, Fernanda C. Developing and Implementing Techniques to Harvest Surveillance Information from Existing Veterinary Diagnostic Laboratory Data. 2013. University of Prince Edward Island, Dissertation/Thesis, https://scholar2.islandarchives.ca/islandora/object/ir%3A6331.

Genre

  • Dissertation/Thesis
Contributors
Thesis advisor: Sanchez, Javier
Author: Dórea, Fernanda C.
Thesis advisor: Revie, Crawford
Date Issued
2013
Publisher
University of Prince Edward Island
Place Published
Charlottetown, P.E.I.
Extent
187
Abstract

Syndromic surveillance is a tool for continuous, automated extraction of surveillance information from health data sources. The research documented in this dissertation aimed at exploring informatics and data mining tools in order to develop and implement techniques to harvest additional surveillance information from existing diagnostic laboratory data. Data concerning laboratory test requests for diagnosis in cattle were provided by the Animal Health Laboratory (AHL), at the University of Guelph, Ontario. A thorough review of the initiatives of syndromic surveillance in animal health was conducted. Documented difficulties regarding the acquisition of clinical data, and especially sustainability of systems based on voluntary participation of veterinarians or data providers in scattered locations, resulted in the choice of using laboratory data in this research. Automated methods to classify laboratory submission data into clinical syndromes were investigated. One of the challenges of working with laboratory data was determining how to transform diagnostic data into epidemiological information. The most time-consuming step of class between these words, their co-occurrences and the target syndromic group. Once deAfter classidata for the algorithms implemented in the next stages. Lastly, the prospective phases of system development were carried out, that is, the analyses which scan the time series in an on-line process, one day at a time, in order to detect temporal aberrations in comparison to a baseline of historical data. Several aberration detection algorithms were evaluated. Upon the conclusion that no single algorithm was superior in all outbreak scenarios, a scoring system to combine algorithms was developed. All steps were set up using open source software, and delivered to the data provider as a simple desktop application scheduled to run daily in an automated manner. Fast development and simple maintenance is expected to lead to incorporation of this system into the routine of the data, becoming an indispensable tool for diagnosticians and epidemiologists, and encouraging further technical development.

Language

  • English

ETD Degree Name

  • Doctor of Philosophy

ETD Degree Level

  • Doctoral

ETD Degree Discipline

  • Faculty of Veterinary Medicine. Department of Health Management.
Degree Grantor
University of Prince Edward Island
LAC Identifier
TC-PCU-6331

Department

Permission Statement
In presenting this thesis in partial fulfilment of the requirements for a postgraduate degree from the University of Prince Edward Island, I agree that the Libraries of this University may make it freely available for inspection. I further agree that permission for extensive copying of this thesis for scholarly purposes may be granted by the professor or professors who supervised my thesis work, or, in their absence, by the Chair of the Department or the Dean of the Faculty in which my thesis work was done. It is understood any copying or publication or use of this thesis or parts thereof for financial gain shall not be allowed without my written permission. It is also understood that due recognition shall be given to me and to the University of Prince Edward Island in any scholarly use which may be made of any material in my thesis. Contact Author