Title: ACMT Board Review Course Population Health and Assessments
1 ACMT Board Review
Course Population Health and Assessments
- Jeffrey Brent, M.D., Ph.D.
- Toxicology Associates
- University of Colorado
- School of Medicine
- and
- Colorado School of Public Health
2Topics for this Lecture
- Exposure monitoring and sampling
- PPE
- Study designs and measures of association
- Statistical concepts
- Bias and confounding
- The Hill criteria
- Sensitivity, specificity, predictive values
3Exposure monitoring and sampling
- Exposure monitoring
- Environmental sampling
- Wipe sampling
- Water sampling
- Air sampling
- Breathing zone measurements are best for
inhalational exposures - Biological monitoring e.g.
- Blood Pb
- Urine mercury
4Personal protective equipment
- Respiratory
- Chemically protective clothing
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6Respiratory protection
- Classification by size
- Quarter face
- Half face
- Full face
- Classification by function
- Air-purifying
- Uses chemical specific cartridges
- Supplied air
- SCBA
7Protection Factor
- The factor by which exposure is reduced by use of
a respirator - Ambient/protection factor exposure
- For example
- Ambient of 100 PPM
- Protection factor of 10
- Exposure 100/10 10 PPM
- Protection factors range form 5 10,000
- The goal is to get exposure to below safe limits
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9Chemically protective clothing
- Simple protection
- Ex. Aprons, boots, gloves
- Nonencpasulating suits
- 1 or 2 pieces, for example
- 1 piece hooded coveralls
- Hooded jacket chem protective pants
- Encapsulating suit
- Highest level of protection
10Chemically protective clothing is usually
designated by the EPA rating system
- Level A Max protection
- Encapsulating suit
- SCBA
- Level B
- Supplied air respirator (or SCBA)
- Non-encapsulating garment
- Level C
- Air purifying respirator
- Non-encapsulating garment
- Level D standard work clothes
11Study design and measures of associationStatistic
al concepts
12Types of human data
- Anecdotal
- Case-reports and series
- Controlled observational
- Controlled epidemiological studies
- Controlled interventional
- Trials
13Controlled observational studies
- Cohort
- Cross-sectional
- Mortality
- Case-control
- Ecologic
- For all epi studies
- Groups should be matched for relevant variables
(e.g.) - Age
- Sex
- Anything else that can affect results
14Cohort studies
- Compares exposed group to an unexposed group
- Can be retrospective or prospective
- Can assess incidence rates
- Incidence Rate of new cases
- (e.g. Cases/100,00/yr)
- Prevalence Number of cases in the population
- (e.g. cases/100,000)
- Results expressed as Relative Risk (aka risk
ratio or rate ratio)
15Cross-sectional studies
- Compares exposed group to an unexposed group at
one snapshot in time - Provides prevalence data
- Example Prevalence of drug abuse in medial
toxicologists taking the board exam v those that
are not - Results expressed as Relative Risk (aka risk
ratio or rate ratio)
16Mortality Studies
- Typically a variation of a cohort study
- Assesses diagnoses at time of death
- Results expressed as mortality rates corrected
for relevant factors (Standardized mortality
rates) - Usually expressed as a percentage
- (Mortality rate of exposed/rate in unexposed) X
100 SMR) - Thus an SMR of 100 no difference btw exposed
and unexposed
17Case-control studies
- Compares individuals with a specific condition
with individuals that do not have that condition
and compares exposures (or other risk factors) - For example Comparing medical toxicologists with
alcohol abuse (the cases) with those w/o this dx
(controls) to see if there is a higher likelihood
of alcoholic abuse if preparing to take the
boards. - Thus assesses risk factors (e.g. exposures)
related to specific conditions - Recall bias major problem
- Results expressed as Odds Ratios
18Ecologic Studies
- Assesses population numbers, not individuals
- Example Rate of admission for asthma
exacerbations in a city with high airborne PM10
compared to a city with low PM10 - Results expressed as Relative Risk (aka risk
ratio or rate ratio) - Ex Snows study of cholera rates in London
districts
19Assessment of results of epi studies
- By convention a result is statistically
significant if the likelihood that it is chance
result is lt 5 or approx 2SDs from the mean
20Interpretation of EPI Data
- You can never assess the degree of association
based only on the magnitude of the RR, OR or SMR - These values have an inherent uncertainty that is
determined by the nature of the data - In modern epi this uncertainty is expressed as
Confidence Intervals
21The 95 Convention
- In science the uncertainty in a result is
expressed as that range of data in which there is
a 95 likelihood that the real value exists - CIs express this range
- Ex RR 1.6 (CI 0.7 2.4)
22The importance of confidence intervals
- If RR 1.6 (0.7 2.4)
- Than there is a 95 likelihood that the real
value lies between 0.7 2.4 - If the real RR is
- gt1 association
- 1 Non-association
- lt1 negative association (protective effect)
- The 95 rule defines statistical significance
- Thus, in order to be a statistically significant
result the CI must not include 1
23What about p values?
- p Values are an older way of describing
statistical significance - P lt 0.05 means a result is statistically
significant - OR 1.6 (0.7 2.4) OR 1.6 p gt 0.05
- OR 1.6 (1.1 2.1) OR 1.6 p lt 0.05
24Now the Bad NewsA statistical relationship never
a priori means a causal relationship
25It is not the falling of the leaves that causes
winter to come
- There are many more statistical associations in
toxicology than there are causal relationships
26How to get from association to causation
- Requires specific rigorous methodology
- Stems from Doll and Hills observation of an
association between smoking and lung cancer
27Hills Viewpoints
- To be applied if a statistical association is
shown to exist - Does not account for quality of studies showing
such an association
28Hills Viewpoints
- Strength of association
- Consistency
- Specificity
- Biological gradient
- Temporal precedence
- Coherence
- Plausibility
- Experimental support
- Analogy
- Also must consider the quality of the study
29Bias and confounding
- Bias systematic error
- Ex You are doing a study on childhood bl Pb
concentrations and behavior. However, your lab
technique inflates blood lead values by 20 a
bias. - Confounding uncontrolled for factor affecting
results. - Ex You are doing a retrospective cohort study on
chronic exposures to phosgene in laboratory
workers and the incidence of lung cancer but you
do not control for smoking. - Smoking is a confounder
30A little tip -Know how to calculate sensitivity,
specificity, and predictive values
31Sensitivity
- The likelihood of a test being positive if the
condition is present - Ex Being under 16 yrs old has 100 sensitivity
for the detection of childhood Pb poisoning. - Good for screening (few false negatives (FN))
- Sensitivity True positives (TP)/(TP FN)
- Sensitivity is often expressed as a
- In example above if screen 100 individuals and 10
had Pb poisoning Sens 10/(100) 10/10 1
(or 100)
32Another example
- To determine the sensitivity of a terminal R in
lead AVR for the detecting of Na channel
antagonist toxicity in all OD patients. - Screen 1,000 EKGs of OD patients, 100 had ODd on
Na channel blockers and 80 had a terminal R
wave (TPs). 50 had a terminal R wave but did not
OD on these agents. - TP 80
- FN 20
- Sens TP/(TP FN) 80/(80 20)
- 80/100 0.8 (80)
33Specificity
- The likelihood of the unaffected individuals
correctly having a negative test - Test using criteria of being under 16 for dx of
childhood Pb poisoning. - N 100
- 10 with Pb poisoning - the other 90 are false
positives (FP) - Specificity True neg (TN)/(TN FP) 0/090 0
34The second experiment
- Screen 1,000 EKGs of OD patients, 100 had ODd on
Na channel blockers and 80 had a terminal R
wave. 50 others had a terminal R wave but did not
OD on these agents (FPs). - TN 850
- FP 50
- Sp TN/(TNFP) 850/(85050)
- 850/900 0.94 (94)
35Comparison btw Sensitivity and specificity
- Both True/(True False)
- Sens TP/(TPFN)
- Specificity is the mirror image
- Spec TN/(TNFP)
- For both the trues in the numerator and
denominator terms are the same. - The other denominator term is the complete
opposite
36Positive predicative value
- PPV likelihood that the test will correctly Dx
the condition - Test using criteria of being under 16 for dx of
childhood Pb poisoning. - N 100
- 10 with Pb poisoning (TP) - the other 90 are
false positives (FP) - PPV TP/(TPFP) 10/(10 90) 0.1
- So 10 PPV
37PPV the second experiment
- Screen 1,000 EKGs of OD patients, 100 had ODd on
Na channel blockers and 80 had a terminal R
wave (TP). 50 others had a terminal R wave but
did not OD on these agents (FPs). - TP 80
- FP 50
- PPV TP/(TP FP) 80/(8050) 80/130
- 0.6
38Negative predicative value
- The likelihood that the disease is not present if
the test is negative - Test using criteria of being under 16 for dx of
childhood Pb poisoning. - N 100
- 0 are TN
- 0 are FN
- NPV TN/(TNFN) 0/(00) 1 (100)
-
39NPV a more rational study
- Screen 1,000 EKGs of OD patients, 100 had ODd on
Na channel blockers and 80 had a terminal R
wave. 50 others had a terminal R wave but did not
OD on these agents (FPs). - NPV TN/(TN FN)
- TN 850
- FN 20
- NPV 850/(85020) 850/870 0.97
40Predicative values - summary
- PPV uses only positive terms
- PPV TP/(TPFP)
- NPV uses only negative terms and is exactly
opposite of the PPV - NPV TN/(TNFN)
41If, when you are studying, this you have any
questions call me (24/7) _at_ 303-765-3800 or e-mail
me at Jeffrey.Brent_at_ucdenver.edu