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Introduction to IHStat software(requiredfor assignment 3)
IHStat is a free statistical package developed by the American Industrial Hygiene Association for evaluating occupational samples The program is a preprogramed Excel worksheet that: computes descriptive statistics determines if the distributions are normal or log normally distributed calculates associated confidence limits Ideal for determining compliance with little work What is ihstat?
Normal distribution  When data resembles a bell shape (i.e. equally clustered around the mean/average) Often occurs with noise data and/or physiological monitoring (ex. blood pressure, heart rate) Log Normal distribution  When original data is skewed and does not resemble a bell curve  Occurs frequently with air monitored sampling (e.g. particulates) Transforming the data (i.e. taking the natural logarithm of each sample) provides us with a normally distributed variable Lognormal vs normal distributions
The remainder of this PowerPoint will walk you through how to use IHStatwith the use of screen shots. Before we can proceed you need to: Download and open IHStat from Moodle or from the AIHA website  Ensure macros are enabled in Excel NOTE: if you are unable to enable macros there is a macro free version available on the AIHA website; however, the layout and design is slightly different. How do I use Ihstat?
Opening page of ihstat program STEP 2: Click button to enter program STEP 1: Select language preference
How to enter exposure limit for comparisons STEP 3: Enter /change occupational exposure limit of hazard you are evaluating by typing in the new value. For example: chlorine has a TLV of 0.5 ppm.
How to clear data STEP 4: When you open IHSTAT there may be existing data in the sheet. Clear existing data to input new data by clicking on the eraser (circled).
How to Enter data STEP 5: Enter your data Copy the data points from your Excel sheet you want to evaluate  ,[object Object],Go to IHStat program, click the first empty cell under the “Sample data” column and paste data (or enter by hand) When you paste your data the statistics/ graphics will be computed ,[object Object],[object Object]
You will also note they include the percent of samples above the OEL you indicated in Step 3,[object Object]
No/red thumbs down = does not fit distributionIn this example we can see that the data fits a log normal distribution.
α level NOTE: α = 0.05 is referring to the confidence level α = 0.05 means we have a confidence level of 95% IHStat uses 95% confidence level for all tests
Choosing confidence limits What do you do in cases where: Data fits both a normal and lognormal distribution ,[object Object],Data does not fit a normal or lognormal distribution ,[object Object],[object Object]
Confidence limits are calculated by Land’s Exact methodNormal parametric statistics box ,[object Object]
Confidence limits are calculated by                    t-statistics1 2
saving files You can save the program with the current data by clicking the save icon on the program sheet. ,[object Object],When you are doing your assignment it is a good idea to save each analysis (i.e. each grouping) as a separate file so you don’t have to reenter data if you want to double check your numbers.   ,[object Object],[object Object]

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Introduction to IHStat Software

  • 1. Introduction to IHStat software(requiredfor assignment 3)
  • 2. IHStat is a free statistical package developed by the American Industrial Hygiene Association for evaluating occupational samples The program is a preprogramed Excel worksheet that: computes descriptive statistics determines if the distributions are normal or log normally distributed calculates associated confidence limits Ideal for determining compliance with little work What is ihstat?
  • 3. Normal distribution When data resembles a bell shape (i.e. equally clustered around the mean/average) Often occurs with noise data and/or physiological monitoring (ex. blood pressure, heart rate) Log Normal distribution When original data is skewed and does not resemble a bell curve Occurs frequently with air monitored sampling (e.g. particulates) Transforming the data (i.e. taking the natural logarithm of each sample) provides us with a normally distributed variable Lognormal vs normal distributions
  • 4. The remainder of this PowerPoint will walk you through how to use IHStatwith the use of screen shots. Before we can proceed you need to: Download and open IHStat from Moodle or from the AIHA website Ensure macros are enabled in Excel NOTE: if you are unable to enable macros there is a macro free version available on the AIHA website; however, the layout and design is slightly different. How do I use Ihstat?
  • 5. Opening page of ihstat program STEP 2: Click button to enter program STEP 1: Select language preference
  • 6. How to enter exposure limit for comparisons STEP 3: Enter /change occupational exposure limit of hazard you are evaluating by typing in the new value. For example: chlorine has a TLV of 0.5 ppm.
  • 7. How to clear data STEP 4: When you open IHSTAT there may be existing data in the sheet. Clear existing data to input new data by clicking on the eraser (circled).
  • 8.
  • 9.
  • 10. No/red thumbs down = does not fit distributionIn this example we can see that the data fits a log normal distribution.
  • 11. α level NOTE: α = 0.05 is referring to the confidence level α = 0.05 means we have a confidence level of 95% IHStat uses 95% confidence level for all tests
  • 12.
  • 13.
  • 14. Confidence limits are calculated by t-statistics1 2
  • 15.
  • 16. To view comments hover over triangle and the comment will appear (as shown above)
  • 17. These comments are meant to provide you with information or descriptions of the statistic