| Literature DB >> 15078596 |
Mitchell I Wolfe1, Kurt B Nolte, Steven S Yoon.
Abstract
Increasing infectious disease deaths, the emergence of new infections, and bioterrorism have made surveillance for infectious diseases a public health concern. Medical examiners and coroners certify approximately 20% of all deaths that occur within the United States and can be a key source of information regarding infectious disease deaths. We hypothesized that a computer-assisted search tool (algorithm) could detect infectious disease deaths from a medical examiner database, thereby reducing the time and resources required to perform such surveillance manually. We developed two algorithms, applied them to a medical examiner database, and verified the cases identified against the opinion of a panel of experts. The algorithms detected deaths with infectious components with sensitivities from 67% to 94%, and predictive value positives ranging from 8% to 49%. Algorithms can be useful for surveillance in medical examiner offices that have limited resources or for conducting surveillance across medical examiner jurisdictions.Entities:
Mesh:
Year: 2004 PMID: 15078596 PMCID: PMC3322763 DOI: 10.3201/eid1001.020764
Source DB: PubMed Journal: Emerg Infect Dis ISSN: 1080-6040 Impact factor: 6.883
Figure 1Flow chart for Infectious Disease Death Review Team review and determination of infectious cause of death.
Figure 2Flow chart for algorithm 1 and 2 development and testing.
Sensitivity and predictive value positive (PVP) of algorithm 1 and algorithm 2 applied to the truncated and full-text datasets, compared by manner of death and infection as cause of death
| Truncated dataset | Full-text dataset | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| All causes of death | Natural and undetermined causes of death | All causes of death | Natural and undetermined causes of death | ||||||
| ICOD and incidental infectionsa | Sensitivity | PVP | Sensitivity | PVP | Sensitivity | PVP | Sensitivity | PVP | |
| Algorithm 1 | 67% (51/76) | 39% (51/131) | 73% (46/63) | 49% (46/94) | 92% (70/76) | 8% (70/937) | 87% (55/63) | 17% (55/315) | |
| Algorithm 2 | n/a | 93% (71/76) | 20% (71/356) | 94% (58/62) | 30% (58/196) | ||||
| ICOD only | |||||||||
| Algorithm 1 | 92% (46/50) | 49% (46/94) | 93% (42/45) | 45% (42/94) | 88% (44/50) | 5% (44/937) | 89% (40/45) | 13% (40/315) | |
| Algorithm 2 | n/a | 90% (45/50) | 13% (45/356) | 91% (41/45) | 21% (41/196) | ||||
aICOD, infectious cause of death. bNumber in bold in lower right corner of each cell corresponds to results of 2 x 2 table shown in Figure 3.
Figure 3Two-by-two table used to derive predictive positive value.