| Literature DB >> 23569580 |
Abstract
HEALTH SURVEILLANCE CAN BE VIEWED AS AN ONGOING SYSTEMATIC COLLECTION, ANALYSIS, AND INTERPRETATION OF DATA FOR USE IN PLANNING, IMPLEMENTATION, AND EVALUATION OF A GIVEN HEALTH SYSTEM, IN POTENTIALLY MULTIPLE SPHERES (EX: animal, human, environment). As we move into a sophisticated technologically advanced era, there is a need for cost-effective and efficient health surveillance methods and systems that will rapidly identify potential bioterrorism attacks and infectious disease outbreaks. The main objective of such methods and systems would be to reduce the impact of an outbreak by enabling appropriate officials to detect it quickly and implement timely and appropriate interventions. Identifying an outbreak and/or potential bioterrorism attack days to weeks earlier than traditional surveillance methods would potentially result in a reduction in morbidity, mortality, and outbreak associated economic consequences. Proposed here is a novel framework that takes into account the relationships between aberration detection algorithms and produces an unbiased confidence measure for identification of start of an outbreak. Such a framework would enable a user and/or a system to interpret the anomaly detection results generated via multiple algorithms with some indication of confidence.Entities:
Keywords: Health; anomaly; bioterrorism; confidence; infectious disease; outbreak; surveillance; syndromic
Year: 2010 PMID: 23569580 PMCID: PMC3615757 DOI: 10.5210/ojphi.v2i1.2837
Source DB: PubMed Journal: Online J Public Health Inform ISSN: 1947-2579
Figure 1The Outbreak Detection Problem
Figure 2The Confidence-based Aberration Interpretation Framework
Figure 3A sample outbreak
Figure 4Kappa coefficient: 2 by 2 table
Figure 5Minimal Set Identification Process
Figure 6Rise rate analysis
Figure 7Count delta
Figure 8Point assignment scheme
Figure 9Threshold hysteresis
Figure 10Maximum number of points
Figure 11Clusters
Figure 12Identified areas of interest
Cluster centres
| 1 | 92.94 | 88.15 |
| 3 | 84.93 | 92.50 |
| 4 | 90.15 | 87.38 |
| 6 | 88.28 | 90.78 |
| 7 | 94.52 | 54.74 |
| 8 | 89.10 | 54.39 |
| 9 | 81.46 | 95.92 |
Figure 13Simulated outbreak analysis
FIGURE 14Application of CIAF to Real Scenario
| Negative | Poor agreement |
| 0.0 ≤ 0.20 | Slight agreement |
| 0.21 ≤ 0.40 | Fair agreement |
| 0.41 ≤ 0.60 | Moderate agreement |
| 0.61 ≤ 0.80 | Substantial agreement |
| 0.81 ≤ 1.00 | Almost perfect agreement |