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Significance testing Introduction to Intervention Epidemiology

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1 Significance testing Introduction to Intervention Epidemiology
Tunis, 3 November 2014 Dr. Ibrahim Saied Epidemiologist, Ministry of Health and Population - Egypt

2 Objectives Building sound concepts about: Null hypothesis P value
Significance testing Confidence interval By the end of this presentation the participants are aimed to have sound concepts about: No point no five

3 Association Vs Significance test
RR=1 P = 0.03 RR=5 X ? Problem ? Factor B Factor A From engagement to marriage I have a problem Significance testing Calculation or Estimation of Association What about factor A Also what about factor B

4 The aim of a statistical test
+ To reach a scientific decision (“yes” or “no”) on a difference (or effect), on a probabilistic basis, on observed data. Which group is taller, female or male? Subjective Objective To

5 Null Hypothesis

6 Null vs. alternative hypotheses
Null hypothesis (H0): “There is no difference (no effect).” RR=1 ; OR=1 Alternative hypothesis (H1): “There is a difference (effect).”; indicates that the null hypothesis is not true. RR ≠ 1 ; OR ≠ 1 → The intention of a significance test is to reject the null hypothesis!

7 Even in law The accused person has to be considered innocent until proved otherwise.

8 Null hypothesis These squares have no white elephants

9 Alternative hypothesis
These squares have white elephants

10 Right decisions and types of errors
Truth H0 is true H0 is false H0 is not rejected Correct decision Type II error ( error) Decision H0 is rejected Correct decision Type I error (-error) Power

11 P-value

12 Probability of getting our result (observation) due to chance
p-value Probability of getting our result (observation) due to chance Chance Results Similarity 25 % 15 % 3 % 4 % P value Help to reject null hypothesis 8

13 How to interpret P value
Statistical expression 0.05 5 % Significant Not significant 0.01 0.04 0.05 0.06 0.15

14 Significance Tests

15 Some types of significance tests
According to type of variables: Variable 1 Variable 2 Test Categorical Chi square Numerical t-test Correlation

16 Test decision >> Scenario 1
0.17 p value Expected Observed Not Reject Null Hypothesis Short distance

17 Test decision >> Scenario 2 Reject Null Hypothesis
0.03 p value Expected Observed Reject Null Hypothesis Long distance

18 How to read test results?
Test Value P Value Sig. Test Chi = 0.032 t = r =

19 Example from SPSS

20 Example from SPSS (Cont’d)
Chi-Square = 0.487,  p = .485. When reading this table we are interested in the results of the "Pearson Chi-Square" row. We can see here that χ(1) = 0.487, p = This tells us that there is no statistically significant association between Gender and Preferred Learning Medium; that is, both Males and Females equally prefer online learning versus books. This tells us that there is no statistically significant association between Gender and Preferred Learning Medium; that is, both Males and Females equally prefer online learning

21 Confidence interval

22 Confidence interval Range of values, on the basis of the sample data, in which the population value (or true value) may lie. Example: A 95% CI includes the true value with a certainty of 95%.

23 Confidence Interval A confidence interval represents the range of effects that are compatible with the data. CI provides Precision of the point estimate Direction of the effect (risk factor, protective factor) Magnitude of the measured effect How reliable are the information (parameters) one obtains from the data?

24 Wide Confidence interval
Parameter * Small Sample Sample value 2 95% of values * 1 Wide Confidence interval

25 Narrow Confidence interval
Parameter * Large Sample Sample value 2 * 1 95% of values Narrow Confidence interval

26 Confidence interval (CI)
Frequently used formulation: If the data collection and analysis could be replicated many times, the CI should include within it the true value of the measure 95% of the time.

27 (lower limit ; upper limit) Point estimate ± “deviation”
Structure of CIs (lower limit ; upper limit) Point estimate ± “deviation” “deviation” depends on Sample size Level of confidence Variability of data “deviation” comprises the Standard error

28 precision of the estimates increases
Confidence Interval Sample size increases  RR=4 ( ) RR=4.5 ( ) High data variability  large CI High confidence level  large CI precision of the estimates increases Sample of 25 Sample of 85

29 CIs and statistical significance
If the null hypothesis (RR=1) is included within the CI → not significant RR=2 ( ) (0.8 , 0.9 , 1 , 2 , 3 , 4) If the null hypothesis (RR=1) is not included within the CI → significant RR=2 ( ) where significance level=(1- confidence level) (1.8 , 1.9 , 2 , 3 , 4 , 5 , 6)

30 Chlordiazepoxide use and risk of congenital heart disease
Example Chlordiazepoxide use and risk of congenital heart disease Chlo. use No Chlo. use Cases 4 386 Controls 1250 OR = (4 x 1250) / (4 x 386) = 3.2 p = 0.08 (not significant) From Rothman K

31 So chlordiazepoxide use is safe?
”The confidence interval includes 1 so the association is not significant”

32 Summary Confidence interval RR = 3 (2 – 8) Test of significance
P = 0.03 Null Hypothesis RR = 1 Association RR = 5 Go Problem

33 Conclusions Not all associations found to be statistically significant
Significance testing evaluates only the role of chance as alternative explanation of observed difference or effect Confidence intervals are more informative than p-values

34 Recommendations Finding the proper test is an important step
Use confidence intervals to describe your results! (More than one dimension) Report p-values precisely! Say “0.002” not just saying “less than 0.05” Revise and check your results Interpret with caution associations that achieve statistical significance! Always look at the raw data (2x2-table). How many cases can be explained by the exposure?

35 Suggested reading KJ Rothman, S Greenland, TL Lash, Modern Epidemiology, Lippincott Williams & Wilkins, Philadelphia, PA, 2008 SN Goodman, R Royall, Evidence and Scientific Research, AJPH 78, 1568, 1988 SN Goodman, Toward Evidence-Based Medical Statistics. 1: The P Value Fallacy, Ann Intern Med. 130, 995, 1999 C Poole, Low P-Values or Narrow Confidence Intervals: Which are more Durable? Epidemiology 12, 291, 2001

36 Significance testing Introduction to Intervention Epidemiology
Tunis, 3 November 2014 Dr. Ibrahim Saied Epidemiologist, Ministry of Health and Population - Egypt


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