Title: Root%20Cause%20Analysis
1Root Cause Analysis
- Farrokh Alemi, Ph.D.
- Jee Vang
2Definitions
- Root cause analysis is a process for identifying
the causes that underlie variation in
performance, including the occurrence or possible
occurrence of a sentinel event. - Sentinel event is a major adverse event that
could have prevented (e.g. wrong side surgery)
3Conducting Root Cause Analysis
- Before a sentinel event occurs, an investigative
team is organized. - When a sentinel event is reported, the people
closest to the incidence are asked to record
facts (not accusations) about the event. - The investigative team meets and brainstorms
- potential causes for the incidence
- key constraints that if they were in place would
have prevented the incidence. - Causes are organized into direct and root causes.
- A flow chart is organized showing the direct
causes linked to their effects - Analysis validated by checking assumptions and
accuracy of predictions
4Examples
- Investigation of eye splash and needle-stick
incidents from an HIV-positive donor on an
intensive care unit using root cause analysis - The Veterans Affairs root cause analysis system
in action. - Root cause analysis in perinatal care.
- Root-cause analysis of an airway filter
occlusion.
5Definitions Continued
- Bayesian networks transfer probability calculus
into a Directed Acyclical Graph and vice versa. - A Directed Acyclical Graph is directed because
each arc has a direction - The node at the end of the arrow is understood as
the cause of the node at the head of the arrow. - It is acyclic because there is no path starting
with any node and leading back to itself.
6Links Between Graphs Probabilities
- Conditional independence implies a specific root
cause graph vice versa - Probability calculations are based on assumptions
of conditional independence and vice versa
ConditionalDependence
Root CauseGraph
Probability Calculus
7Conditional Independence in Serial Graph
8Conditional Independence in Diverging Graph
9Conditional Independence in Complex Graphs
- Any two nodes with a direct connection are
dependent - Any two nodes without a direct connection are
independent if and only if - Either serial or diverging
- Not converging
- If condition is removed, the directed link
between root cause and sentinel event is lost - Assumptions of conditional independence can be
verified by asking the expert or checking against
objective data
10Identify Conditional Independencies in the Graph
11Prediction from Root Causes
- Use Bayes formula and Total Probability formula
- Use software http//www.norsys.com/download.html
- download free version at the bottom of the page
- Download
- Double click to self extract to directory Netica
12Netica
13Create a New Network
14Add nodes
Click on this click into white space
15Add arcs
Click onthis, click on start, click onend
16Add Descriptions
- Double click on a node
- Enter description with no spaces
17Add Marginal Probabilities
- Double click on node
- Select Table
- Enter 100 times marginal probability, click for
the Missing probabilities button for the system
to calculate 1 minus marginal probability
18Enter marginal probability of poor training as 12
standing for 12
Recalculates Remaining probabilities
19Adding Conditional Probabilities
- Double click on the node
- Select table
- Enter 100 times probability of effect given the
cause - Enter data for each condition. When conditions
change, probabilities cannot be calculated from
previous data - Select the button for calculating remaining
probabilities
20Entering Probability of Not Following Markings
Given Poor or Good Training
Calculates remaining probabilities
21Enter Conditional Probabilities for All Combined
Direct Causes
Conditions Conditions Conditions Probability of wrong side surgery given conditions
Patient provided wrong information Surgeon did not follow markings Nurse marked patient wrong Probability of wrong side surgery given conditions
True True True 0.75
True True False 0.75
True False True 0.70
True False False 0.60
False True True 0.75
False True False 0.70
False False True 0.30
False False False 0.01
22Compile the Graph
23Making Predictions
- Select a node
- Select the condition that is true
- Read off probability of other nodes
- Predict sentinel event from combination of root
causes - Predict most likely cause from observed sentinel
event - Estimate prevalence of root causes from observed
direct causes
24Predicting Sentinel Event With No Information on
Causes
25Predicting Sentinel Event with Three Observed
Causes
26Predicting Prevalence of Fatigued Nurse if
Patient is Marked Wrong
27Selecting Most Likely Cause of Sentinel Event
28Discussion
- Estimating the probabilities can verify if
assumptions are reasonable, conclusions fit
observed frequencies, and help select most likely
cause. - JCAHO reports some conditional probabilities
- Experts estimates are accurate if
- brief training in conditional probabilities
- Provided with available objective data
- Allowed to discuss their different estimates
29Take Home Lesson
- Question the obvious. Examine your root cause
assumptions predictions