Title: Modeling Patient Survivability for Emergency Medical Service Systems
1Modeling Patient Survivability for Emergency
Medical Service Systems
- Laura A. McLay
- Virginia Commonwealth University
- Statistical Sciences Operations Research
- lamclay_at_vcu.edu
- 4 October 2007
- In conjunction with the Hanover Fire and EMS
Department in Hanover County, Virginia
2Motivation
- Goal design next-generation emergency medical
service (EMS) systems that - deliver advanced medical care quickly
- save lives
- Optimization models for EMS systems
straightforward if goal is to deliver medical
care quickly - Optimization models for saving lives not so clear
- Agenda introduce a new approach to modeling
patient survivability
3Emergency Medical Service (EMS) Systems
- EMS systems measured according to how they
respond to cardiac arrest (CA calls) - CA victims have 1-8 chance of survival
- CAs cause 400,000 460,000 deaths per year
- Ambulances employ either
- Paramedics (ALS)
- Emergency medical technicians (BLS)
- Most EMS systems in the US have moved from BLS to
ALS since the 1960s - CAs motivated change
- Development of CPR and defibrillators
4EMS Models
- Why not redesign EMS systems to optimize patient
survivability? - Focus on CA 911 calls
- What does the medical community know?
- What helps CA patients?
- Early bystander intervention
- Early CPR
- Defibrillators at scene in 4 minutes
- What doesnt?
- Paramedics at scene in 8 minutes (as opposed to
basic medical care)
5Why dont paramedics save lives?
- System designed to cover 80 of calls for service
in 9 minutes - Rule of thumb for survivability
- 90 survival rate if defibrillation within one
minute - Survival reduces about 10 every minute thereafter
6Maximizing Patient Survivability
- Traditional models for EMS systems maximize a
proxy for patient survivability - cover the most area possible in a given amount of
time - cover the largest population in a given amount of
time - cover the most calls for service in a given
amount of time - Objective Directly tie ambulance service to
patient outcomes - Why hasnt this been done before???
- EMS systems designed prior to the information age
7Maximizing Survivability
- Objective Directly tie ambulance service to
patient outcomes - Traditional operations research optimization
models for EMS systems maximize a proxy for
patient survivability - Examples
- cover the most area possible in a given amount of
time - cover the largest population in a given amount of
time - cover the most calls for service in a given
amount of time - Does this just in time modeling approach save
lives?
8Anatomy of a 911 call
- Defibrillation should occur within six minutes
from CA - Response time measures time from ambulance
dispatch, not time from CA
Response time (patient)
9Maximize CA patient survivability
- Not all ways of reaching 80 coverage are equal
- System that responds robustly to CA calls will
respond well to all calls
http//images.jupiterimages.com/common/detail/89/1
1/22251189.jpg http//www.clipartheaven.com/clipar
t/holidays/halloween/tombstone-clipart.gif
10Existing OR models for EMS
- Goal of operations research models to determine
- what type of resources (ambulances) to purchase
- where to place ambulances
- how to staff ambulances
- how to dispatch ambulances
- how to accurately measure time traveling and
other parameters - Operations research methods
- Simulation, optimization, queuing
- Issues considered
- Busy vehicles, back-up coverage, vehicle types,
dynamic issues
11Existing OR models for EMS, contd
- Much research in 1970s and 1980s
- No CAD systems, dispatch centers pencil and paper
- Data difficult to obtain so reasonable
assumptions made - Information age in 1990s and beyond
- CAD systems in dispatch centers collect lots of
data - Patient billing data links EMS to patient
outcomes - The proxies for patient survivability dont do
what we want them to do
12Case study Hanover County, Virginia
Anecdotes from an ambassador to the EMS community
13Hanover County map
- The basics
- Population 100,000
- Area 474 mi2
- 70 rural with small pockets of suburbs
- EMS a branch of the Fire Department
- EMS all volunteer-run (BLS) until recently
- Staff (ALS) work on weekdays
14Hanover County Goals
- Their goals
- Cover 80 of calls within 9 minutes
- (currently covering 50 of calls)
- Understand if not meeting goal due to geography
or insufficient resources - Decide which resources to purchase
- My goals
- Is covering 80 of calls within 9 minutes really
the goal? - Is 80 coverage realistic in a semi-rural county?
- Are they measuring what they really need to
measure to reach their goals?
15Response Time Stopping the Clock
- Priority 1 (life threatening) calls require ALS
response (60 of calls) - 24 of calls could potentially be CAs
- 11 of calls are Chest Pain/Heart Problems
- 13 of calls are Breathing Difficulty
- Double coverage by BLS ambulance or fire truck if
ALS not immediately available (12 of calls) - Response time defined when ALS arrives
- Issue models depends on response time
- Can we stop the clock when the first responder
arrives?
16The Problem is Complex
- Vehicles that can respond to calls
- ALS ambulance 2 people
- BLS ambulance 2 people
- ALS QRV (non-transport unit) 1 person
- Fire truck (BLS) 3 people
- Police car (AED) 1 person
- Two types of vehicles hard problem
- Five types of vehicle great problem
- Impact out-of-service times, response times,
service times, turnaround times.
17Final messages
- The dispatch center and CAD system are backbone
of entire EMS system - Software constrains how systems works
- Constant customer interaction and feedback
- Need input from (real) doctors
- Its truly a systems problem
- Police cars have defibrillators
- Other counties rely on Hanover County EMS
- Be a good first responderlearn CPR