Title: Facility Level Approaches To Infection Control Engineering FLAT ICE
 1Facility Level Approaches To Infection Control 
Engineering(FLAT ICE) 
 2The problem
- We confront a threatening array of pathogens 
- Healthcare facilities amplify dissemination 
- We have limited resources for containment 
- We lack local guidance for containment
3QuestionWe have a nephrology clinic in 
downtown Minneapolis with 3 providers who each 
see 20 patients per day. We have little time and 
scarce resources, and are worried about the 
rising prevalence of MRSA in our patients. What 
can we do to protect our patients? 
 4QuestionOur practice has a small network of 5 
clinics in Southwestern Pennsylvania. Im told 
there is a bad flu going around. Should we 
designate one of our clinics as a flu clinic? 
Is there anything else we can do? 
 5QuestionWeve developed an exposure and 
symptom driven, points based screening instrument 
for influenza that can be implemented over the 
telephone. What balance between sensitivity and 
specificity should we use to minimize 
dissemination in our clinics? 
 6We will deliver software and analyses to help 
local providers answer important questions such as
- What facility measures are most reasonable for 
 me?
- How should high risk individuals be scheduled? 
-  How should I use pre-clinic screening 
 instruments?
7Our goal is to facilitate development of 
infection control policies that are tailored to 
local needs and resources
- During seasonal outbreaks 
- In the face of endemic resistant organisms 
- When confronted by novel pathogens
8Clinical assessment, diagnostic testing, and 
feasible containment options are interrelated 
 9We address these interlocking aspects of 
infection control using tools that are 
- Monte Carlo realizations of Markov processes 
- Temporally and spatially explicit 
- Easily applied to different queue systems 
10Our analyses are based on the probabilities of 
very simple events 
 11Each of these probabilities is readily measured 
in real world settings 
 12We focus on practical, resource sparing 
containment strategies 
 13We build statistical tools that convert 
pathogen characteristics and facility policies 
into predicted dissemination rates 
 14The anticipated effects of different containment 
strategies on dissemination can be compared
(Computations adapted from Hotchkiss, Strike, and 
Crooke, Emerging Infectious Diseases) 
 15The resource costs of different containment 
strategies can be examined 
(Computations adapted from Hotchkiss, Strike, and 
Crooke, Emerging Infectious Diseases) 
 16The tools we will provide can inform local level 
decisions regarding
- Resource-sparing containment strategies 
- Nuanced responses to varying threat levels 
- Simple, novel, and effective interventions 
- Selection of diagnostic thresholds for screening 
 tests
17What we propose to do
- Calibrate models with prospectively collected 
 data
- Observational data from medical clinics 
- Data from mock caregiver/patient encounters 
- Develop user-friendly software packages 
- Generic prediction libraries for non-expert use 
- User configurable software for expert use 
- Identify optimal thresholds for diagnostic tests 
- Incorporate more sophisticated biological details
18What is a generic prediction library?A 
digital database in which a computationally naive 
provider can easily cross reference clinic 
policies, pathogen characteristics, and 
prevalence to identify potentially appealing 
containment strategies 
 19What is User configurable software?A software 
package that allows individuals to construct 
decision support tools that are fine tuned  to 
address specific facilities or networks of 
facilities 
 20Timeline
- Initial months 
- Broad-based, generic recommendations 
- Systematic investigation of diagnostic thresholds 
 
- User-configurable software, Web distribution 
- Begin to collect calibration data on specific 
 pathogens
- Formative months to follow 
- Calibrate and test models for specific pathogens 
- Viral pathogens (Influenza, rotavirus, other) 
- Bacterial pathogens (MRSA, VRE, C. difficile, 
 other)
- Computational refinement 
- Incorporate uncertainty in pathogen 
 tranmissibility
- Address uncertainty in pathogen persistence 
- Integrate with large-scale population models