Title: Conditional Independence
1Conditional Independence
- Farrokh Alemi Ph.D.Professor of Health
Administration and PolicyCollege of Health and
Human Services, George Mason University4400
University Drive, Fairfax, Virginia 22030703 993
1929 falemi_at_gmu.edu
2Lecture Outline
- What is probability?
- Assessment of rare probabilities
- Calculus of probability
- Conditional independence
- Definition
- Use
- Methods of verification
- Causal modeling
- Case based learning
- Validation of risk models
- Examples
3Joint Distributions
- Shows probability of co-occurrence
4Joint Distributions
First Event Second Event Second Event Total
First Event Absent Present Total
Absent a b ab
Present c d cd
Total ac bd abcd1
5Example
Medication Error Medication Error Total
No error Error Total
Adequate staffing 50 8 13
Under staffed 7 15 22
Total 12 23 35
6Example
Medication Error Medication Error Total
No error Error Total
Adequate staffing 50 8 13
Under staffed 7 15 22
Total 12 23 35
Medication Error Medication Error Total
No error Error Total
Adequate staffing 0.63 0.1 0.73
Under staffed 0.09 0.19 0.28
Total 0.71 0.29 1
7Reducing Universe of Possibilities
Medication Error Medication Error Total
No error Error Total
Adequate staffing
Under staffed 0.32 0.68 1
Total
8Mathematical Definition of Independence
P(A B) P(A)
9Joint Marginal Distributions
Medication Error Medication Error Total
No error Error Total
Adequate staffing 0.52 0.21 0.73
Under staffed 0.2 0.08 0.28
Total 0.71 0.29 1
P(AB) P(A) P(B)
10CHITEST function
11Comparison of Conditioned Un-conditioned
Probabilities
P( Medication error ) ? P( Medication error
understaffing) 0.29 ? 0.68
12Mathematical Definition of Conditional
Independence
P(A B, C) P(A C)
13Mathematical Definition of Conditional
Independence
P(AB C) P(A C) P(B C)
14Dependent Events Can Be Conditionally Independent
P( Medication error ) ? P( Medication error Long
shift)
15Dependent Events Can Be Conditionally Independent
P( Medication error ) ? P( Medication error Long
shift)
P( Medication error Long shift, Not fatigued)
P( Medication error Not fatigued)
16Use of Conditional Independence
- Analyze chain of dependent events
- Simplify calculations
17Use of Conditional Independence
- Analyze chain of dependent events
- Simplify calculations
18Use of Conditional Independence
- Analyze chain of dependent events
- Simplify calculations
P(C1,C2,C3, ...,CnH1) P(C1H1)
P(C2H1,C1)
P(C3H1,C1,C2) P(C4H1,C1,C2,C3)
...
P(CnH1,C1,C2,C3,...,Cn-1)
19Use of Conditional Independence
- Analyze chain of dependent events
- Simplify calculations
P(C1,C2,C3, ...,CnH1) P(C1H1)
P(C2H1,C1)
P(C3H1,C2) P(C4H1,C3)
... P(CnH1,Cn)
20Verifying Independence
- Reducing sample size
- Correlations
- Direct query from experts
- Separation in causal maps
21Verifying Independence by Reducing Sample Size
- P(Error Not fatigued) 0.50
- P(Error Not fatigue Long shift) 2/4 0.50
22Verifying through Correlations
- Rab is the correlation between A and B
- Rac is the correlation between events A and C
- Rcb is the correlation between event C and B
- If Rab Rac Rcb then A is independent of B given
the condition C
23Example
Case Age BP Weight
1 35 140 200
2 30 130 185
3 19 120 180
4 20 111 175
5 17 105 170
6 16 103 165
7 20 102 155
24Verifying by Asking Experts
- Write each event on a 3 x 5 card
- Ask experts to assume a population where
condition has been met - Ask the expert to pair the cards if knowing the
value of one event will make it considerably
easier to estimate the value of the other - Repeat these steps for other populations
- Ask experts to share their clustering
- Have experts discuss any areas of disagreement
- Use majority rule to choose the final clusters
25Verifying Independence by Causal Maps
- Ask expert to draw a causal map
- Conditional independence A node that if removed
would sever the flow from cause to consequence - Any two nodes connected by an arrow are
dependent. - Multiple cause of same effect are dependent
- The consequence is independent of the cause for a
given level of the intermediary event. - Multiple consequences of a cause are independent
of each other given the cause
26Example
Blood pressure does not depend on age given weight
27Take Home Lesson
- Conditional Independence Can Be Verified in
Numerous Ways
28What Do You Know?
- What is the probability of hospitalization given
that you are male?
Case Hospitalized? Gender Age Insured
1 Yes Male gt65 Yes
2 Yes Male lt65 Yes
3 Yes Female gt65 Yes
4 Yes Female lt65 No
5 No Male gt65 No
6 No Male lt65 No
7 No Female gt65 No
8 No Female lt65 No
29What Do You Know?
- Is insurance independent of age?
Case Hospitalized? Gender Age Insured
1 Yes Male gt65 Yes
2 Yes Male lt65 Yes
3 Yes Female gt65 Yes
4 Yes Female lt65 No
5 No Male gt65 No
6 No Male lt65 No
7 No Female gt65 No
8 No Female lt65 No
30What Do You Know?
- What is the likelihood associated of being more
than 65 years old among hospitalized patients?
Please note that this is not the same as the
probability of being hospitalized given you are
65 years old.
Case Hospitalized? Gender Age Insured
1 Yes Male gt65 Yes
2 Yes Male lt65 Yes
3 Yes Female gt65 Yes
4 Yes Female lt65 No
5 No Male gt65 No
6 No Male lt65 No
7 No Female gt65 No
8 No Female lt65 No
31What Do You Know?
- In predicting hospitalization, what is the
likelihood ratio associated with being 65 years
old?
Case Hospitalized? Gender Age Insured
1 Yes Male gt65 Yes
2 Yes Male lt65 Yes
3 Yes Female gt65 Yes
4 Yes Female lt65 No
5 No Male gt65 No
6 No Male lt65 No
7 No Female gt65 No
8 No Female lt65 No
32What Do You Know?
- What is the prior odds for hospitalization before
any other information is available?
Case Hospitalized? Gender Age Insured
1 Yes Male gt65 Yes
2 Yes Male lt65 Yes
3 Yes Female gt65 Yes
4 Yes Female lt65 No
5 No Male gt65 No
6 No Male lt65 No
7 No Female gt65 No
8 No Female lt65 No
33What Do You Know?
- Draw what causes medication errors on a piece of
paper, with each cause in a separate node and
arrows showing the direction of causality. List
all causes, their immediate effects until it
leads to a medication error. - Analyze the graph you have produced and list all
conditional dependencies inherent in the graph.
34Minute Evaluations
- Please use the course web site to ask a question
and rate this lecture