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Vol. 12, No. 2
February 2006

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Approaches To Detect Clinical Emerging Issues
Information Systems To Analyze Clinical Data from Farm Animals
Limitations and Evaluation of Systems Based on Clinical Observation
Other Systems To Capture Clinical Data
Conclusion and Interest for Human Health
Acknowledgments
References
Figure
Table 1
Table 2

This page was updated on February 23, 2006 to incorporate the corrections in Vol. 12, No. 4

Perspective

Detecting Emerging Diseases in Farm Animals through Clinical Observations

Gwenaël Vourc'h,*Comments Victoria E. Bridges,† Jane Gibbens,‡ Brad D. De Groot,§ Lachlan McIntyre,¶ Roger Poland,# and Jacques Barnouin*
*Institut National de la Recherche Agronomique, Theix, France; †US Department of Agriculture, Fort Collins, Colorado, USA; ‡Defra, London, United Kingdom; §Kansas State University, Manhattan, Kansas, USA; ¶EpiCentre, Massey University, Palmerston North, New Zealand; and #Ministry of Agriculture and Forestry, Wellington, New Zealand

Suggested citation for this article


Predicting emerging diseases is among the most difficult challenges facing researchers and health managers. We present available approaches and tools to detect emerging diseases in animals based on clinical observations of farm animals by veterinarians. Three information systems are described and discussed: Veterinary Practitioner Aided Disease Surveillance in New Zealand, the Rapid Syndrome Validation Project—Animal in the United States, and "émergences" in France. These systems are based on syndromic surveillance with the notification of every case or of specific clinical syndromes or on the notification of atypical clinical cases. Data are entered by field veterinarians into forms available through Internet-accessible devices. Beyond challenges of implementing new information systems, minimizing economic and health effects from emerging diseases in animals requires strong synergies across a group of field partners, in research, and in international animal and public health customs and practices.

After the discovery of antimicrobial drugs, the increased knowledge in pathogenesis, and the improvement of health management, infectious diseases were thought to be a concern restricted to the application of known control measures. However, the dramatic spread of highly pathogenic diseases such as AIDS and multidrug-resistant bacterial infections led the scientific community to seriously examine emerging infectious diseases (1). Additionally, most of the emerging issues for humans are zoonotic (2) (e.g., avian influenza, bovine spongiform encephalopathy [BSE], severe acute respiratory syndrome [SARS], West Nile virus fever). Consequently, emerging diseases are now being addressed in domestic animals and wildlife with greater interest (3).

Emerging diseases in animals, especially farm animals, involve economic losses through direct (deaths, culls, movement restriction, laboratory tests) and indirect (decreased consumption of animal products, tourism decline) costs. For example, the cost of the BSE epidemic in the United Kingdom has been high, both for control measures and through lost trade, >£740 million in 1997 alone (http://www.defra.gov.uk/animalh/bse/general/qa/section9.html, accessed 9 May 2005). In addition, BSE has been implicated in the deaths of 150 persons in the United Kingdom to date (http://www.cjd.ed.ac.uk/figures.htm, accessed 9 May 2005). In 1997 and 2004, outbreaks of avian influenza A (H5N1) in Asia, with transmission to humans, led to massive destruction of poultry to avert a pandemic (4).

Because diseases will continue to emerge, the potential unexpected or atypical features of future health problems makes surveillance particularly challenging (5). No single data source captures all the information required for surveillance. Early clinical detection is one of the cornerstones (6) regarding unexpected diseases insofar as the surveillance activities of the veterinarians can be focused and systematized. This article presents approaches and tools focused on detecting potentially emerging diseases in farm animals through 3 information systems being tested in New Zealand, the United States, and France.

Approaches To Detect Clinical Emerging Issues

Most surveillance programs deal with a restricted set of known diseases that fail to address the challenges of looking for the unknown. However, in the United States, many new human infectious diseases have been recognized by examining illnesses without identified cause (7). Furthermore, in Great Britain, the unusual neurologic clinical signs in cattle forewarned of a new disease, BSE (8). Developing the ability to detect atypical syndromes in a timely fashion is critical to reducing the impact of disease emergence.

Programs targeted to detect atypical animal diseases follow 2 approaches. The first approach, syndromic surveillance, monitors disease trends by grouping clinical diseases into syndromes on the basis of clinical features rather than specific diagnoses (9). Even though syndromic surveillance systems seek to minimize the amount of data collected from each case, their main drawback is the heavy reporting load and requirement for disciplined reporting of recognized case data.

The second approach focuses on detecting individual atypical cases. Based on how previous emerging diseases have been detected (Table 1), atypical cases can arise from a new disease that shows clinical signs the clinician cannot link to a known disease. Alternatively, they arise from a known disease expressed atypically through unusual clinical signs, atypical region or species, or increased severity. An atypical case can also result from the detection of a rare or inadequately documented sporadic disease. Detection focused on atypical cases requires a lighter reporting load than syndromic surveillance, but the practitioner response is likely to be variable and require regular prompting.

Information Systems To Analyze Clinical Data from Farm Animals

Advances in information technology have allowed novel uses of Web and pocket personal computer applications, which provide speed, efficiency, interactivity, and security. In 1997 in Colorado, veterinarians provided information regarding unusual clinical events through the Internet (22); however, the program was discontinued because of poor user response. Subsequent approaches and tools to clinically detect potential emerging diseases in farm animals are presented here through 3 prototype information systems: the Veterinary Practitioner Aided Disease Surveillance System (VetPAD, New-Zealand) (23), which is in its third year with 7 pilot veterinarians; the Rapid Syndrome Validation Project—Animal (RSVP-A, USA) (24), which has been piloted among 17 veterinarians in Kansas since 2003 and 10 veterinarians in New Mexico since 2005; and the "émergences" system (available from http://www.inra.fr/maladies-emergentes) (25), which was pilot tested with 12 veterinarians in 2003 and has been pilot tested with 30 veterinarians since September 2005 (Table 2). All systems are being tested in cattle because veterinary practitioners have high rates of on-farm contact with bovine herds.

Data Capture and Strategies

All 3 systems work from the premise that practicing veterinarians hold key animal health information, which could improve means for early detection of emerging disease if aggregated efficiently through advanced information technology. While all systems capture basic epidemiologic data, they each represent a different approach to emerging disease surveillance.

VetPAD has a syndromic surveillance approach. It can include all farm animals. It collects data describing every case. Cases are categorized by using dropdown lists, check boxes, and a clinical diagnosis. Based on the categorizations, cases can be flexibly aggregated for syndromic surveillance. The strategy to minimize the surveillance reporting impact is to provide a tool capturing the ordinary business data veterinarians must manage anyway (medical records, inventory, and accounts). Surveillance data are a subset of these other data.

The RSVP-A system employs an aggregation-based syndromic surveillance but focuses on a restricted set of syndromes (nonneonatal diarrhea, neurologic dysfunction or recumbency, abortion or birth defect, unexpected death, erosive or ulcerative lesions, and unexplained feed refusal or weight loss). These syndromes are defined to cover clinical signs of emerging disease other than the common production problems on which most livestock enterprises are focused. Practitioners determine the specific syndrome each case best fits and record demographic data about the diseased animals. The RSVP-A system also requests additional clinical observations potentially useful to further characterize incident patterns. The strategy to minimize the reporting impact is to focus on less common clinical syndromes and to make data capture for each case require <1 minute.

Figure
Figure.

Click to view enlarged image

Figure. Sample of online form reporting epidemiologic and clinical data.

"émergences" has a different approach as it targets atypical cases and specific diseases, which correspond to known diseases hypothesized to be emerging. Forms are available (see an example of atypical case form, Figure) for reporting epidemiologic and clinical data. The system requests a follow-up description of each case's evolution and monthly confirmations of vigilance from veterinarians reporting no cases. Moreover, atypical cases can be categorized by the system administrator according to clinical description similarities to facilitate exploration of their potential links. The system has generic features, making it available for any country, any disease, and any domestic species. Description of atypical cases for "émergences" is a less frequent and more open process than the syndromic surveillance methods.

In all these systems, routine data recording is simplified by the use of pick-up lists. However, free text fields are also available, as the unexpected often does not fit in predefined fields. VetPAD and RSVP-A use mobile telephones or personal data assistants for data capture. "émergences" primarily uses the Internet.

Output and Statistics

A successful surveillance system must be able to keep veterinarians engaged and continuing to submit data after the novelty of the new system wears off. Systems can provide value to a veterinarian with useful management tools, which are available in VetPAD, and by enhancing their clinical expertise and intellectual curiosity. To trigger interactions and learning from participants' experiences, practitioners participating in "émergences" have access to all case descriptions. In addition, illness and death rates are available in real time either at the clientele level ("émergences") or at a custom-made level ("émergences," RSVP-A). In VetPAD, customized reports are available to involved parties.

One output of these surveillance systems is an indication of unusual events that require additional investigation. This investigation might include communication with other veterinarians to find additional cases, targeted epidemiologic studies, research projects, or control programs.

Other outputs are data upon which analyses can be conducted. A challenge is the categorization of reports to identify possible etiologic links. Procedures based on contextual analysis must be developed to analyze pick-up list data as well as free text (26). Each system must also address the challenge of detecting increased incidence of a rare event. Two types of situations can be considered. The first is the emergence from a "zero case" situation (e.g., BSE occurred probably as erratic cases before its amplification [27]). Incidence threshold analysis needed for this situation requires methods such as the evaluation of record process (28). Moreover, the constructed statistics should be robust with a small number of cases and allow differentiation of sporadic cases from emergence (29). The second situation is the emergence of clusters of highly pathogenic variants of an endemic disease. Spatial-temporal analysis can provide helpful insights concerning baseline patterns of clinical syndromes and aberrations from them, which can trigger further investigation.

Limitations and Evaluation of Systems Based on Clinical Observation

Limitations

Atypical case detection is limited by practitioners' experience, knowledge, vigilance, and willingness to report findings (30). Multiple, similar reports of atypical cases improve confidence that a new disease is emerging. Making case data available through surveillance systems, such as the 3 we have indicated, will also foster basic common knowledge and shared practical experience among veterinarians. Because surveillance for the unknown requires a mindset different from surveillance of the known, notification quality and vigilance should be enhanced by specific training courses (31).

A substantial limitation of syndromic surveillance is the need to establish baseline levels for defined syndromes. This step requires time and resources; however, without them, we cannot know when the incidence of a syndrome has significantly increased. VetPAD and RSVP-A are developing such baselines.

Economic consideration leaves few alternatives to clinical detection of farm animal diseases. Laboratory analyses are infrequently performed and generally more basic compared to human medicine (32). However, slaughterhouses and other assembly points do provide surveillance opportunities.

Finally, a clinical reporting tool alone is only the first step to determine if the cases share an etiologic pathway. Review by expert clinicians, necropsy findings, immunologic screenings, and focused epidemiologic studies play key roles in such determination (33). Similarities between distinct submitted atypical cases provide additional evidence. For example, BSE was identified as a novel syndrome through epidemiologic, clinical, and pathologic findings (8).

Evaluation

To determine whether to extend an information system, several points must be reviewed. First, the activity and number of participating veterinarians can be evaluated by quantifying indicators such as number of entries submitted, number of atypical cases entered, and participants' levels of accessing posted results. Moreover, all systems include reference diseases or symptoms for which descriptive statistics are available, which can serve to check quality recording (e.g., babesiosis in the "émergences" pilot study). In addition, the likelihood of detecting an emerging event is high. Many rare diseases are not defined in cattle, so a dedicated information system should detect >1 unexpected event over the test period. For example, the initial "émergences" pilot found 3 sets of clinical signs not linked to a known disease (persistent, ultimately fatal paraplegia, without general clinical signs [Figure]; weight loss, depilation at the extremities leading to death; and congenital cataract neither linked to bovine virus diarrhea nor familial history) and 1 rare known syndrome (facial eczema). Finally, the decision to extend a detection system will depend largely on the interest veterinarians hold and on the inclusion of new diseases as a national surveillance objective (6,34).

Other Systems To Capture Clinical Data

We have presented examples of clinical data capture from cattle herds at the veterinary level, in which sufficient individual health data are available. For species concerned by herd health approaches (sheep, poultry), initiatives have been taken for information systems through online questionnaires answered by farmers (35). In 1 such system, New Zealand producers must complete questionnaires targeted on diseases that occurred in the previous 12 months and have clinical signs similar to exotic diseases. The ultimate research goal is to develop a disease sentinel Web module to integrate with veterinary practice Web sites. The main problem is the disparity in response quality between farmers.

The reality of an emergence can be tested by survey of a set of representative herds. In the United States, the National Animal Health Monitoring System is not designed to collect information regarding emerging diseases per se; however, questions about a previously identified emerging disease have been inserted into surveys. In addition, the National Animal Health Monitoring System has provided baseline data on emerging disease analysis and assessment. In France, the Central Service for Survey and Statistical Studies, which runs economic surveys among a representative national sample of herds, has added specific questions regarding animal health issues (36).

In addition to farm animals, pets, zoo animals, and wildlife must be considered as sources of transmission and reservoirs for emerging diseases. For pets and zoo animals, tools similar to the ones proposed can be adapted because these animals are regularly seen by veterinarians. Wildlife can be a source of new farm animal or human diseases and is affected by many farm animal diseases (Table 1). Thus, all observations of health problems in wildlife can potentially contribute relevant information for human or domestic animal populations (37). However, the ability to closely monitor clinical signs is lacking. Death rate is the most feasible way to monitor wildlife health and has indeed been the detection trigger of many emerging diseases (38). Testing sampled healthy animals for a set of diseases is another strategy, but few disease surveillance programs not targeted at specific diseases are in place (e.g., "marine mammal strandings" project in United Kingdom [39]). One of the key challenges remains to bring professional and amateur outdoorsmen to report wildlife health observations through an information system flexible enough to encompass all species and situations. New forms dedicated to wildlife with appropriate location (instead of client or farm) could be added to the information systems already adapted to several species (VetPAD and "émergences"). Alternatives such as monitoring risk factors for emergence (e.g., encroachment of habitats), as well as minimizing contact between domestic and wild species by good, on-farm biosecurity, could reduce the likelihood of new domestic animal or human diseases emerging from wildlife reservoirs. In all cases, approaches must seek to increase collaboration among wildlife and domestic animals health workers to break down traditional boundaries between fields.

Conclusion and Interest for Human Health

Much effort is being put into developing new tools to detect emerging diseases through veterinary practitioners. If successful, this effort will also define the "normal" clinical baseline for syndromes and rare diseases, allowing statistical confirmation that an atypical syndrome is emerging. In addition to building new information technologies, early disease identification with timely responses requires synergy across a group of partners, including those who traditionally interact in animal health management as well as in public health (40) and across geopolitical boundaries. Although human and animal worlds remain fairly separated, initiatives are narrowing this separation. For instance, integration of emerging animal disease surveillance systems with those in the human arena is proposed in the UK's "RADAR" veterinary surveillance information management system (41). Furthermore, during the "émergences" test phase, the Health National Institute agreed to cooperate in the event an animal issue with potential public health implications was identified. Finally, the most relevant challenge is to promote joint human-animal projects concerning potentially common emerging diseases, such as the avian-porcine-human influenza complex. Effective combination of such emerging disease surveillance systems would result in earlier identification of potential issues, providing opportunity for quicker response.

Acknowledgments

We thank the Centers for Epidemiology and Animal Health's Center for Emerging Issues; the Institut National de la Recherche Agronomique group "Epidémiologie et Risques Emergents" (EpiEmerge); Prylos (Paris, France) and Link'Age (Clermont-Fd, France); the practicing veterinarians who tested the information systems and gave constructive comments; and anonymous reviewers who helped us improve the manuscript.

Funding for research on VetPAD was provided by the Ministry of Agriculture and Forestry (MAF) of New-Zealand, and Schering Plough Animal Health. Developmental work was conducted by a team at Massey University's EpiCentre, led by Lachlan McIntyre.

Funding for the RSVP-A was provided by the US Department of Homeland Security through the Kansas Department of Animal Health and the US Department of Agriculture, Veterinary Services.

Sandia National Laboratories designed and developed the original RSVP surveillance system, a system with applications in both human and animal disease surveillance.

Sandia National Laboratories and New Mexico State University/New Mexico Department of Agriculture are primary collaborators, along with Kansas State University, on the RSVP-A project that has been jointly pursued since 2003. The opinions on RSVP-A in this article do not necessary reflect all of the project's collaborating parties.

Dr Vourc'h obtained her veterinary degree from the National Veterinary School of Alfort (ENVA) and her PhD in ecology and evolutionary biology in Montpellier (France). Her current research interests include detection and analyses of emerging animal diseases and the epidemiology and ecology of tickborne diseases.

References

  1. Morse SS. Emerging viruses. American Society of Microbiology News. 1989;55:358–60.
  2. Brown C. Emerging zoonoses and pathogens of public health significance—an overview. Rev Sci Tech. 2004;23:435–42.
  3. Daszak P, Cunningham AA, Hyatt AD. Emerging infectious diseases of wildlife—threats to biodiversity and human health. Science. 2000;287:443–9.
  4. Conly JM, Johnston BL. Avian influenza—the next pandemic? Canadian Journal of Infectious Diseases. 2004;15:5.
  5. MacLehose L, McKee M, Weinberg J. Responding to the challenge of communicable disease in Europe. Science. 2002;295:2047–50.
  6. Centers for Disease Control and Prevention. Preventing emerging infectious diseases: a strategy for the 21st century. Overview of the updated CDC Plan. MMWR Recomm Rep. 1998;47(RR–15):1–14.
  7. Perkins BA, Flood JM, Danila R, Holman RC, Reingold AL, Klug LA, et al. Unexplained deaths due to possibly infectious causes in the United States: defining the problem and designing surveillance and laboratory approaches. Emerg Infect Dis. 1996;2:47–53.
  8. Wells GAH, Scott AC, Johnson CT, Gunning RF, Hancock RD, Jeffrey M, et al. A novel progressive spongiform encephalopathy in cattle. Vet Rec. 1987;121:419–20.
  9. Begier EM, Sockwell D, Branch LM, Davies-Cole JO, Jones LH, Edwards L, et al. The national capitol region's emergency department syndromic surveillance system: do chief complaint and discharge diagnosis yield different results? Emerg Infect Dis. 2003;9:393–6.
  10. Mellor PS, Wittmann EJ. Bluetongue virus in the Mediterranean basin 1998—2001. Vet J. 2002;164:20–37.
  11. Brugère-Picoux J, Maes H, Moussa A, Russo P, Parodi AL. Identification of Border disease in sheep in France. Bulletin de l'Académie Vétérinaire de France. 1984;57:555–62.
  12. Shuster DA, Kehrli ME, Ackermann MR, Gilbert RO. Identification and prevalence of a genetic defect that causes leukocyte adhesion deficiency in Holstein cattle. Proc Natl Acad Sci U S A. 1992;89:9225–9.
  13. Agerholm JS, Bendixen C, Andersen O, Arnbjerg J. Complex vertebral malformation in Holstein calves. J Vet Diagn Invest. 2001;13:283–9.
  14. Marlier D, Vindevogel H. L'Entérocolite Epizootique du Lapin. Annales de Médecine Vétérinaire. 1998;142:281–4.
  15. Murray K, Selleck P, Hooper P, Hyatt A, Gould A, Gleeson L, et al. A morbillivirus that caused fatal disease in horses and humans. Science. 1995;268:94–7.
  16. Li KS, Guan Y, Wang J, Smith GJD, Xu M, Duan L, et al. Genesis of a highly pathogenic and potentially pandemic H5N1 influenza virus in eastern Asia. Nature. 2004;430:209–13.
  17. Chua KB, Bellini WJ, Rota PA, Harcourt BH, Tamin A, Lam Sk, et al. Nipah virus: a recently emergent deadly paramyxovirus. Science. 2000;288:1432–5.
  18. Harding JC. The clinical expression and emergence of porcine circovirus. Vet Microbiol. 2004;98:131–5.
  19. Christianson WT, Joo H. Porcine reproductive and respiratory syndrome: a review. Swine Health and Production. 1994;2:10–28.
  20. Xu ZJ, Chen WX. Viral haemorrhagic disease in rabbits: a review. Vet Res Commun. 1989;13:205–12.
  21. Lanciotti RS, Roehrig JT, Deubel V, Smith J, Parker M, Steele K, et al. Origin of the West Nile virus responsible for an outbreak of encephalitis in the northeastern United States. Science. 1999;286:2333–7.
  22. Bridges VE. Assessment of surveillance methods utilizing the Internet for identification of emerging animal health issues. 9th International Symposium for Veterinary Epidemiology and Economics; Breckenridge, Colorado, USA; 2000.
  23. McIntyre LH, Davies PR, Alexander G, O'Leary BD, Morris RS, Perkins NR, et al. VetPAD—veterinary practitioner aided disease surveillance system. 10th International Symposium for Veterinary Epidemiology and Economics; Viña Del Mar, Chile; Nov 17–21, 2003.
  24. De Groot BD, Spire MF, Sargeant JM, Robertson DC. Preliminary assessment of syndromic surveillance for early detection of foreign animal disease incursion or agri-terrorism in beef cattle populations. 10th International Symposium for Veterinary Epidemiology and Economics; Viña Del Mar, Chile; Nov 17–21, 2003.
  25. Vourc'h G, Barnouin J. How to improve the detection of animal emerging diseases?  A two-level (veterinarian/farmer) approach based on an Internet-Oracle database. 10th International Symposium for Veterinary Epidemiology and Economics; Viña Del Mar, Chile; Nov 17–21, 2003.
  26. Rossignol M, Sébillot P. Automatic generation of sets of keywords for theme characterization and detection. In: A. Morin, P. Sébillot, editors. Sixièmes journées internationales d'analyse statistique des données textuelles. Saint-Malo (France): JADT; 2002. p. 653–64.
  27. Sarradet. Un cas de tremblante sur boeuf. Medical Veterinary Review. 1883;7:310–2.
  28. Coles S. An introduction to statistical modelling of extreme values. Springer Series in Statistics. London: Springer-Verlag; 2001.
  29. Embrechts P, Küppelberg C, Mikosch T. Modelling extremal events for insurance and finance. Applications of mathematics. Berlin: Springer-Verlag; 1994.
  30. Cuenot M, Calavas D, Abrial D, Gasqui P, Cazeau G, Ducrot C. Temporal and spatial patterns of the clinical surveillance of BSE in France, analysed from January 1991 to May 2002 through a vigilance index. Vet Res. 2003;34:261–72.
  31. US Department of Agriculture, Center for Emerging Issues. Course on emerging animal health issues identification and analysis. Fort Collins (CO): The Department; 2004. Available from http://www.aphis.usda.gov/vs/ceah/cei/SeptCourse/brochure_2004.htm
  32. Veterinary Laboratories Agency. Veterinary investigation surveillance report 2003 and 1996–2003. Surrey: VLA Report; 2003.
  33. Salman MD. Controlling emerging diseases in the 21st century. Prev Vet Med. 2004;62:177–84.
  34. Department for Environment, Food and Rural Affairs. Report partnership, priorities and professionalism: a strategy for enhancing veterinary surveillance in the UK. London: The Department; 2003.
  35. Black H, Vujcich J. Sentinel practices pilot survey part 3—sheep diseases. Proceedings of the Industry and Food Safety Biosecurity Branches of the New Zealand Veterinary Association Conference; Hamilton, New Zealand; June 6–10, 2002.
  36. Gay E, Barnouin J. Epidemiological characteristics of bovine influenza in France from a random selected sample of herds at a national level. 10th International Symposium for Veterinary Epidemiology and Economics; Viña Del Mar, Chile; Nov 17–21, 2003.
  37. Rouquet P, Froment J-M, Bermejo M, Kilbourne A, Karesh W, Reed P, et al. Wild animal mortality monitoring and human Ebola outbreaks, Gabon and Republic of Congo, 2001–2003. Emerg Infect Dis. 2005;11:283–90.
  38. Daszak P, Berger L, Cunningham AA, Hyatt AD, Green DE, Speare R. Emerging infectious diseases and amphibian population declines. Emerg Infect Dis. 1999;5:735–48.
  39. Department for Environment, Food and Rural Affairs. Marine mammal strandings, Environmental Protection. 2005. Available from http://www.defra.gov.uk/environment/statistics/wildlife/wdstranding.htm
  40. Pappaionaou M.Veterinary medicine protecting and promoting the public's health and well-being. Prev Vet Med. 2004;62:152–63.
  41. Smith LH, Gibbens JC, Lysons RE. Veterinary surveillance in the UK: development of an integrated IT system. 10th International Symposium for Veterinary Epidemiology and Economics; Viña Del Mar, Chile; Nov 17–21, 2003.

 

Table 1. Examples of emerging diseases and how they were detected and identified in farm animals in the last 20 years


Emerging disease (etiology)

Species

Location, date

Detection keys at time of emergence

Ref.


Blue tongue (Reoviridae)

Sheep

Mediterranean basin, 1998–01

Disease normally occurring south of the Mediterranean basin

(10)

Border (Flaviviridae)

Sheep

France, 1994

Unusual death rates and clinical signs for the region: abortion, nervous signs, hydrocephalus

(11)

Bovine leukocyte adhesion deficiency (CD 18 gene mutation)

Holstein cattle

Different countries, 1980s

Unusual death rates in calves with recurrent infections

(12)

Bovine spongiform encephalopathy (prion)

Cattle

Great Britain, 1980

Unusual clinical and pathologic signs in the species: progressive neurologic disorders, gray matter vacuolation and scrapie associated fibrils

(8)

Complex vertebral malformation  (SLC35A3 gene mutation)

Dairy cattle

Denmark, 2000

Unknown lethal congenital defect

(13)

Epizootic rabbit enteropathy (unidentified virus)

Rabbits

Europe, 1996

Unknown disease: serious enteritis, highly contagious, often fatal

(14)

Hendra virus disease (Paramyxovirus)

Horses, humans

Australia, Papua New Guinea, 1994

Sudden outbreak of acute respiratory syndrome in horses

(15)

Highly pathogenic avian influenza (H5N1 virus)

Poultry, humans

Southeast Asian countries, 2003–2004

Outbreak of highly pathogenic avian influenza in poultry

(16)

Nipah virus disease (Paramyxovirus)

Swine, humans

Malaysia and Singapore, 1998

Outbreak of unknown highly contagious disease in pigs: acute fever, respiratory signs, neurologic signs; encephalitis in humans

(17)

Porcine dermatitis and nephropathy syndrome (suspected porcine circovirus 2)

Swine

United Kingdom, 1993

Unusual clinical signs: unusual skin lesions in patches and plaques

(18)

Porcine reproductive and respiratory syndrome (Arteriviridae)

Swine

North America, 1987

Unusual association of: swine infertility, respiratory problems, abortion, and cyanotic ears

(19)

Post-weaning multisystemic wasting syndrome (Suspected porcine circovirus 2)

Swine

Canada, 1990

Unusual association of: wasting, dyspnea, enlarged lymph nodes, diarrhea, pallor, and jaundice

(18)

Rabbit hemorrhagic disease (Caliciviridae)

Rabbits

China, 1984

Unusual high death rate and hemorrhage

(20)

West Nile fever (Flaviviridae)

Humans, crows

United States, 1999

Unusual cluster of human encephalitis, extensive death rate in crows, deaths of exotic birds in a zoo

(21)


 

Table 2. Comparison of 3 information systems to analyze animal disease through clinical observations*

 
   

VetPAD

RSVP-A

"émergences"


General information

   

Country of origin

New Zealand

United States

France (available in French, Spanish, English)

 

Species targeted/ where applied

Farm animals/dairy cattle

Cattle/cattle

Domestic animals/cattle

 

Means of recording

Pocket PC

Palm device, PC with Internet, wireless microbrowser

PC with Internet, cell phone

 

Pilot tests

7 veterinarians in New Zealand, 2004–2005

1) 17 veterinarians in Kansas,  2003–2006; 2) 10 veterinarians in New Mexico, 2005–2006

1) 12 veterinarians in France, 2003; 2) 30 veterinarians in 2 French counties, 2005–2007

Record

   

Type of clinical data

Syndromic surveillance: all clinical cases

Syndromic surveillance: 6 syndromes (see text)

Atypical syndromes and customized targeted diseases, record of the absence of cases

 

Main epidemiologic data

Farm localization and ownership, number affected, dead, and at risk

Type of farm, production stage, localization, number affected, dead, and at risk

Type of farm, production stage, localization, contact with other animals, number affected, dead, and at risk

 

Main data related to the disease

Clinical syndrome/specific clinical diagnosis

Type of syndrome, some additional clinical observation

Reasons for notification, main clinical characteristics

 

Type of data field

Pick-up lists, check boxes, free text fields

Pick-up lists, check boxes, free text fields

Pick-up lists, check boxes, free text fields

 

Other record

Photos

 

Photos, epidemiologic questionnaires

Output

   

Related to epidemiologic surveillance

Analysis and reporting at the practitioner, regional, and national levels

Incident pattern reports from coverage areas defined by practitioners, maps

Practice statistics, statistics with all reported cases, access to all reports

 

Other outputs

Visit management, list of remedies, printouts for clients (wireless technology)

   

Further technical developments

   

GPS capability, linkage of clinical to laboratory diagnosis, barcode scanning

GPS capability

Implementation of anatomo-pathology and laboratory analyses


*VetPAD, Veterinary Practitioner Aided Disease; RSVP-A, Rapid Syndrome Validation Project – Animal; "émergences," information system in France; PC, personal computer; GPS, global positioning system.

 

Suggested citation for this article:
Vourc'h G, Bridges VE, Gibbens J, De Groot BD, McIntyre L, Poland R, et al. Detecting emerging diseases in farm animals through clinical observations. Emerg Infect Dis [serial on the Internet]. 2006 Feb [date cited]. Available from http://www.cdc.gov/ncidod/EID/vol12no02/05-0498.htm

   
     
   
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