EXERCISE
IN OCCUPATIONAL EXPOSURE ASSESSMENT
After reviewing the lecture on occupational
exposure assessment, students are expected to work through the following
exercise. The data is from a study whose objective it was to determine the relationship between respirable dust
exposure on coal mines and declines in lung function.
PROBLEM
Coal workers
exposed to respirable dust in coalmines are at considerable risk for a variety
of respiratory problems. These include chronic bronchitis, coal workers
pneumoconiosis and silicosis. Evidence now suggests that such workers are also
at risk for developing loss of lung function which may not be clinically
symptomatic. In order to investigate this, it is essential to be able to
understand the relationship between respirable dust exposure on coal mines and
declines in lung function in this workforce. To ensure that your study is
satisfactory, your exposure assessments are critical.
Your task,
using the dataset provided, is to determine the various methods of assessing
exposure, beginning, at what you believe to be crude methods of assessment, and
then working toward more sensitive measures.
Download the dataset (this is only a
subset of the original research data), and review this together with the coding
sheet shown below.
VARIABLES
IN DATASET
1. What would be the crudest method of exposure assessment that you would consider?
2. Why
would this not be useful in this dataset?
3. What
other crude method of assessment will be more applicable in this dataset?
4. Using
the dataset provided, please calculate this crude measure
5. What
are the shortcomings of this measure?
6. Given
the shortcomings of this measure, what other measure can you do to consider
differences in exposure?
7. Using
the dataset provided, please calculate this measure
8. What
other variable/s could you consider to make your assessment more precise?
9. Using
the dataset provided, please calculate this measure
You have now considered the dataset, and worked with the available data, but obviously this dataset lacked quantitative exposure (i.e dust data). This may seriously compromise your ability to determine relationships between dust exposure and lung function. The funders decided to make available additional funds for you to conduct dust sampling. After a series of dust sampling underground and on the surface, the laboratories analysing the samples provide you with the following summary results.
10. How could you now include this in your exposure assessment, if you assume that the average dust levels presented were typical of all years of exposure?
11. Using
the dataset provided, please calculate this measure
12. How
could you, given the different exposure strata in the original data, calculate
a Simple Cumulative Exposure measure for this cohort of miners?
You now
realise that the absence of historical data also compromises your exposure
assessment. The mining companies decide to give you full access to all the data that they have collected over the
years.
Your
statistician explains that in order for you to integrate all this data together
with the dust data you have collected yourself, statistical modelling is
necessary. The statistician works with the information and is able to provide
you with the following matrix derived from
the statistical models.
13. How will you make use of this information to
increase the precision of your exposure assessment measure?
EXPOSURE ASSESSMENT EXERCISES: RESPONSE TO QUESTIONS
What would be the crudest method of exposure assessment that you would
consider?
RESPONSE:
assessment based
on ever employment in industry
Why would this not be useful in this
dataset?
RESPONSE: All participants employed in the coal industry
What
other crude method of assessment will be more applicable in this dataset?
RESPONSE: Assessment based on years employed in
industry
Using
the dataset provided, please calculate this crude measure
RESULT
Studyid totyr
13211 14
13220 21
13245 21
11002 18
12104 13
12110 8
12116 13
12135 12
12143 9
13212 11
11041 23
11009 26
11016 23
11043 22
What are
the shortcomings of this measure?
RESPONSE:
This does not
take into consideration differences in exposure between different workers in
different mines, or different sections of the respective mines.
Given
the shortcomings of this measure, what other measure can you do to consider
differences in exposure?
RESPONSE:
Assessment based
on years employed in specific mine
Using the
dataset provide, please calculate this measure
RESULT:
Studyid MINE 1 MINE 2 MINE 3 MINE 4
13211 13 0 0 1
13220 11 0 0 10
13245 13 0 0 8
11002 4 0 8 6
12104 13 0 0 0
12110 5 0 0 3
12116 10 0 0 0
12135 12 0 0 0
12143 7
0 2 0
13212 5 0 0 6
11041 13 0 4 6
11009 13 0 0 13
11016 13 0 0 10
11043 13 0 9 0
What
other variable/s could you consider to make your assessment more precise?
RESPONSE 1: Assessment based on years worked in specific
job section (surface/face/underground backbye)
RESPONSE
2: Assessment
based on years worked in a specific job, in a specific section, in a specific
mine
Using the
dataset provide, please calculate this measure
RESULT
– RESPONSE 1:
Studyid FACE BACKBYE SURFACE
13211 0 0 14
13220 0 0 21
13245 0 0 21
11002 4 14 0
12104 6 2 5
12110 8 0 0
12116 2 0 11
12135 8 4 0
12143 7 0 2
13212 1 0 10
11041 16 4 3
11009 26 0 0
11016 23 0 0
11043 20 0 0
RESULT – RESPONSE 2:
|
MINE 1 |
MINE 2 |
MINE 3 |
||||||
STUDYID |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
11002 |
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11009 |
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11016 |
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11041 |
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11043 |
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12104 |
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12110 |
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12116 |
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12135 |
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12143 |
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13210 |
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13211 |
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13212 |
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13220 |
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13245 |
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How could you now include this in your exposure assessment, if you assume that the average dust levels presented were typical of all years of exposure?
RESPONSE: Assessment using investigator collected dust
data (assuming similar levels through the years) for years worked in the
specific mine
RESULT
STUDYID |
MINE 1 |
MINE 2 |
MINE 3 |
OTHER |
11002 |
Dm*Ym |
|
|
|
11009 |
|
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|
11016 |
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11041 |
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11043 |
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12104 |
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12110 |
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12116 |
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12135 |
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12143 |
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13210 |
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13211 |
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13212 |
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13220 |
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13245 |
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|
Where D = mean dust level for that mine; Y = years worked at that mine
Studyid MINE 1 MINE 2 MINE 3 MINE 4
13211 12.22 0 0.00 0.93
13220 10.34 0 0.00 9.30
13245 12.22 0 0.00 7.44
11002 3.76 0 4.08 5.58
12104 12.22 0 0.00 0.00
12110 4.70 0 0.00 2.79
12116 9.40 0 0.00 0.00
12135 11.28 0 0.00 0.00
12143 6.58 0 1.02 0.00
13212 4.70 0 0.00 5.58
11041 12.22 0 2.04 5.58
11009 12.22 0 0.00 12.09
11016 12.22 0 0.00 9.30
11043 12.22 0 4.59 0.00
RESULT
|
MINE 1 |
MINE 2 |
MINE 3 |
|
||||||
STUDYID |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
CUMEX |
11002 |
Dsm*Ysm |
|
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10.92 |
11009 |
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29.51 |
11016 |
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25.43 |
11041 |
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20.27 |
11043 |
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27.11 |
12104 |
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7.97 |
12110 |
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8.63 |
12116 |
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4.30 |
12135 |
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9.20 |
12143 |
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8.97 |
13211 |
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4.26 |
13212 |
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3.53 |
13220 |
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5.71 |
13245 |
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5.87 |
Where Dsm = mean dust level for a specific section in specific mine; Ysm = years worked in that section at that mine
How will you make use of this information to
increasing the precision of your exposure assessment measure?
RESULT
You will
need to design a matrix as shown below, and calculate the data, using the
formula shown in the first cell. The final column provides you with the Cumulative
Dust Exposure measure for each participant
|
MINE 1 |
MINE 2 |
MINE 3 |
|
||||||
STUDYID |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
FACE |
BACKBYE |
SURFACE |
CDE |
11002 |
Dsm*Ysm |
|
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44.14 |
11009 |
|
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136.50 |
11016 |
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119.61 |
11041 |
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90.73 |
11043 |
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88.04 |
12104 |
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36.77 |
12110 |
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41.24 |
12116 |
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16.06 |
12135 |
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46.16 |
12143 |
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33.59 |
13211 |
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11.18 |
13212 |
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13.49 |
13220 |
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17.79 |
13245 |
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17.55 |
Where Dsm = mean dust level for a specific section in specific mine, calculated from statistical models; Ysm = years worked in that section at that mine