Title: HealthcareAssociated Infection
1Healthcare-Associated Infection Influenza
Surveillance System
Gina Oda, MS, CIC Associate Director, Office of
Public Health Surveillance and Research
Michaele Mahoney OIT Project Manager, Albany OIFO
2Course Outline
- Background
- Goals and development of HAIISS
- Functionality and validation
- National deployment
- HAIISS in action examples
3Impact of HAI
- According to CDC, 1.7 million people per year
acquire HAI in US hospitals - 99,000 deaths
- HAIs cost on average 25,000 per infection
- More than 70 of bacteria causing HAI are
resistant to at least one commonly used
antibiotic
4HAI Types and Proportions
5Seasonal Influenza
- Each year in the U.S. 200,000 people are
hospitalized, and 36,000 die from the flu - This is in a good year
- Prevention Vaccination
6Pandemic Influenza
- Occurs 2-3 times per century
- Previous 3 pandemics
- 1968-69
- 1957-58
- 1918-19
- No way to predict when it will happen again, nor
how severe - No vaccine available
71918 Influenza Pandemic
- 1/3 of the worlds population infected
- 25,000,000 died worldwide
- More died than in WWI, WWII, Korea Vietnam Wars
- 195,000 Americans died in October 1918 the
deadliest month in US history
www.pandemicflu.gov www.cdc.gov/ncidod/EID/vol12n
o01/05-0979.htm
8Pandemic Flu
- Occurs due to a major change in the genetic
makeup of the influenza virus - Antigenic shift vs. drift
- Pandemic is possible when 3 conditions met
- New genetic variant introduced into human
population - Causes serious illness in humans
- Spreads easily from person to person
9Recent Pandemic Concerns
- H5N1 Avian Influenza meets the first 2 conditions
- Now endemic in domestic poultry in some parts of
the world - Little or no immunity to H5N1 strain among human
population
10Benefit of Surveillance
- Landmark Study on the Efficacy of Nosocomial
Infection Control (SENIC Project, 1970s-80s)
demonstrated components of effective infection
control program - Surveillance
- Trained professionals (ICPs)
- Reporting mechanism
11Benefit of Surveillance
- Antimicrobial usage monitoring
- Reduce cost
- Improve care
- Decrease resistance
12Bioterrorism and Naturally Emerging Pathogens
- Early detection and situational awareness
Syndromic Surveillance - Naturally-occurring West Nile Virus, SARS,
Salmonella in peanut butter - Bioterrorism Anthrax post-9/11, Salmonella in
salad bars in Oregon
13Evolution of Surveillance Systems in US
- National Nosocomial Infections Surveillance
(NNIS) System - The first national, aggregated HAI surveillance
system - Established in 1970
- 300 hospitals
- National benchmark
- Manual case finding, data entry
- Strict criteria to ensure standardization
- Voluntary/anonymous participation
14National Healthcare Safety Network (NHSN)
- Next generation of NNIS
- Secure, HIPPAA compliant, web-based reporting
- 950 facilities
- Includes facilities reporting under state-mandate
- Includes facilities only reporting one type of
infection
15HAI Surveillance in VA Today
- Only 13 VA hospitals participate in NHSN
- Comprehensive, aggregate data for all HAI is not
available - Opportunities exist to
- Provide accurate data for frontline staff
- Identify best practices for infection prevention
- Monitor results of control strategies implemented
across VA - Establish VA as a major source of cutting edge
research in HAI prevention
16HAIs in VA NHSN Data
- Retrospective review of VA hospital infection
data - Ventilator associated pneumonia rates
- 13 VA vs. 300 non-VA medical centers
Oda G, et al., ICAAC, Chicago, IL 9/07 (Abstract
K-1066)
17HAIs in VA NHSN Data
- Surgical Site Infection, Coronary Artery Bypass
Grafts (CABG) 1992-2004
Oda G, et al., ICAAC, Chicago, IL 9/07 (Abstract
K-1066)
18National Influenza Surveillance
19VA/DoD Influenza-Like Illness Data
20Mandatory Reporting of HAIs
- As of March 2008, 24 states have mandated public
reporting of HAI - VA hospitals exempt (VHA Directive 2006-016)
- VHA MRSA Prevention Initiative
- Mandatory surveillance and reporting within VHA
- Mandated prevention/control measures
21Problems with Current Surveillance Systems
- NHSN
- Time consuming
- Case finding
- Application of criteria
- Data entry
- Limited to small subset of infections
- Criteria are subjective/not compatible with
electronic systems - Not adequately validated
22Problems with Current Surveillance Systems
- National Flu Surveillance
- Only data available is aggregated
- Sentinel provider system representative of small
fraction of US providers - Not a lot of lead time in predicting/identifying
outbreaks - Mandated systems
- Questionable data integrity
23Ideal Surveillance System
- Local data as well as aggregate
- Standardized
- Comprehensive
- Valid
- Automated
Electronic
24Office of Public Health Surveillance and Research
- Established in 2006, within Office of Public
Health and Environmental Hazards - HAIISS project goals established
- Key partnerships established CDC, Johns Hopkins
University (ESSENCE)
25HAIISS Program Goals
- VA should be the Nations leader in
healthcare-associated infection control and
quality improvement - Jonathan Perlin, MD, former VHA Undersecretary
for Health - Leverage VHAs advanced electronic medical record
and national, integrated healthcare system to
establish a comprehensive electronic surveillance
system to monitor - Healthcare-associated infections and resistance
trends - Influenza and other emerging infectious diseases
or syndromes associated with bioterrorist activity
264 Surveillance Categories/Pillars
- Category 1
- CDCs National Healthcare Safety Network (NHSN)
infection surveillance - Category 2
- Syndromic surveillance
- Category 3
- Organisms/infections of epidemiologic
significance - Category 4
- Antimicrobial usage and decision support
27HAIISS Build it or Buy it?
- BOTH Work with HAI software vendor to modify
COTS product to meet VA needs utilize
ESSENCE/Biosense, already established in VA - Request for proposals April 2006
- Multiphase review process whittled vendor
selection down to 3 - Feasibility studies/technical solutions
submittedNov/Dec 2006
28Contract Award
- OPHSR and OIT evaluation team convened
- Onsite review of 3 vendors products
- Contract awarded to Vecna Technologies, February
2007 - Prototype development begunrequirements for HAI
detection algorithms
29HAIISS Prototype Development
- Prototype released at Palo Alto alpha test site
December 2007 - Ongoing development and validation testing of
software - Ongoing work with OIT
- HL7 messaging for key data elements
microbiology, pharmacy, ADT - Enterprise architecture for deployment to
multiple sites
30Determination of HAIISS Architecture
- Reliable, fast, accessible is a MUST
- Where will enterprise hardware/software reside?
- What will be the role of HDR?
31Next Steps Validation
- Testing of application functionality
- User interface
- System bugs
- Does the system do what its supposed to?
- Validity of data
- Compare to VistA data extractions
- Completeness and accuracy
- Investigate discrepancies
- Compare to gold standard manual surveillance
32Next Steps Deployment
- Completion of HL7 Messaging and Architecture
- Step-wise deployment, beginning Fall 2008
- 4 Pilot Sites
- Continue with completion of installation in all
12 VA NHSN sites - Familiar with surveillance methodology
- Strong stakeholder interest
- Enhancement of CDC partnership
- National deployment153 VA hospitals
33HAIISS in Action Examples
34Dashboard Infection Alerts
35Dashboard Saved Reports
36Create a Report
37 Create a Report
38Category 1 NHSN Infections
Medical Device-Associated Infections
- Central line-associated bloodstream infection
(CLABSI) - Catheter-associated urinary tract infection
(CAUTI) - Ventilator-associated pneumonia (VAP)
- Surgical site infection (SSI)
39Category 1 NHSN Infections
- Complex decision process
- Detection algorithms must apply established NHSN
infection definitions in a consistent manner - Microbiology data
- Admission data
- Clinical factors
40Bloodstream Infection Algorithm
41BSI Surveillance Example
42BSI Surveillance Example
43BSI Surveillance Example
44BSI Surveillance Example
45HAI Detection Algorithm Validity
- Evaluate cases detected by Pathfinder
- Do alerts trigger when they should?
- False positives
- False negatives
- Does data entered into Dynamic Case Form trigger
the appropriate decision by algorithm? - Utilize historic data extraction to allow
evaluation of large number of samples - Future validation studies multi-center studies
in collaboration with CDC EpiCenter Program
46BSI Algorithm Validation
- Preliminary study
- 118 positive blood cultures reviewed
- Compared to routine manual surveillance by ICPs,
the HAIISS electronic algorithm compared very
well - 90 sensitivity
- 91 specificity
- 84 positive predictive value
- 95 negative predictive value
Oda G, et al. Abstract submitted for ICAAC/IDSA
conference, October 2008
47Category 2 Syndromic Surveillance
- 7 Syndrome Groups
- Respiratory cough, pneumonia, upper-respiratory
infection, Influenza-Like Illness (ILI) - Gastrointestinal vomiting, diarrhea
- Neurological meningitis, botulism-like
- Dermatologic 1 hemorrhagic
- Dermatologic 2 vesicular (smallpox-like)
- Fever, Malaise, Sepsis
- Coma/Sudden Death
48Category 2 Syndromic Surveillance
- Outpatient-based
- Emphasis on community-based outbreaks/events
- Utilizes ICD9 codes, chief complaints to detect
early evidence of infectious activity - Sensitive, but not very specific
- Can combine multiple data sources to better
characterize events
49Evaluation of ICD-9 Coding Abnormalities using
ESSENCE
- Frequent Hemorrhagic Illness syndrome alerts
due to overuse of ICD9 code 286.9, coagulation
defect, not otherwise specified. - Result of widespread miscoding of patients
undergoing anticoagulation therapy.
Jan Mar 2007
Oda G, et al. 6th ISDS Conference, Indianapolis,
IN 10/07 (abstract 80).
50Multi-State Salmonella Outbreak
- February 14, 2007 CDC and FDA issued a recall
of peanut butter manufactured at Plant A due to
contamination with Salmonella serotype Tennessee - 628 persons infected with outbreak strain
51Multi-State Salmonella Outbreak
- VA Data from ESSENCE system
52ESSENCE Data 2005-2006 Influenza Season
CDC utilizes the U.S. Sentinel Providers
Surveillance Network, a nationwide system. ILI
defined as 'fever (temperature of gt100F) PLUS
either a cough or a sore throat'
VHA utilizes ESSENCE ILI ICD-9 codes generated
for each outpatient visit
53ILI Surveillance Example
54ILI Surveillance Example
55ILI Surveillance Example
56Category 2 Implementation
- Establishment of Palo Alto ESSENCE Test Bed
- Enhance influenza detection model with overlay of
additional data elements - Lay groundwork for novel applications Telephone
Care and Nursing Home syndromic surveillance
models - Link to ESSENCE to be included on HAIISS Dashboard
57Category 3 Organisms and Infections of
Epidemiologic Significance
- Multi-drug resistant organisms (MDRO)
- MRSA, VRE, multi-resistant gram negatives
- Clustering of organisms of epidemiologic
significance - C. difficile, Legionella, Tuberculosis
- Infectious diseases/conditions reportable to the
local, state, and national public health
authorities - Other significant infections and outbreaks
nursing home, dialysis, etc.
58Category 3 Examples
Clostridium difficile
59Category 3 Examples
60Outbreak Investigation
61Outbreak Investigation
62Outbreak Investigation
63Outbreak Investigation
- Save report criteria for quick reference
- Click enable monitoring to create a
surveillance monitor which will create an alert
every time the selected event occurs - Organism isolated on selected ward(s), with
selected antibiogram, etc. - Can also set to alert whenever a particular
threshold of isolates occurs (via control chart)
64Category 4 Antibiotic Usage and Decision Support
- Antimicrobial usage trends, by drug, and
locations within facility - Antimicrobial resistance patterns, by organism,
and locations within facility - Drug/bug mismatch identification (antibiotic
prescribed does not correlate with resistance
pattern of organism isolated)send alert to
designated staff - Improve prescribing practices and prevent
antimicrobial resistance
65Resistant Bacteria Antimicrobial Usage Examples
66Resistant Bacteria Antimicrobial Usage Examples
67Resistant Bacteria Antimicrobial Usage Examples
68Summary
- HAIISS incorporates multi-faceted surveillance
methodologies - Many opportunities to collaborate and advance
science of infection surveillance - Implementation and validation a complex and
ongoing process, requiring coordination and
cooperation of multiple partners/stakeholders
69Summary
- HAIISS is poised to provide VA with
enterprise-wide electronic HAI and syndromic
surveillance system - Success will establish VA as leader, innovator,
and key partner in field of healthcare
epidemiology