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Statistical Tests
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tarix | 09.02.2017 | ölçüsü | 1,43 Mb. | | #8125 |
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Statistical Tests
Let’s Take it Step by Step... Identify topic Literature review Research hypothesis Design study Power analysis Write proposal Design data tools Committees
Goals To understand why a particular statistical test was used for your research project To interpret your results To understand, evaluate, and present your results
Mystat: http://www.systat.com/MystatProducts.aspx Mystat: http://www.systat.com/MystatProducts.aspx List of Free Statistics Software: http://statpages.org/javasta2.html
Before choosing a statistical test… Figure out the variable type - Scales of measurement (qualitative or quantitative)
Figure out your goal - Compare groups
- Measure relationship or association of variables
Nominal Ordinal Interval Ratio
Nominal Scale (discrete) Simplest scale of measurement Variables which have no numerical value Variables which have categories Count number in each category, calculate percentage Examples: - Gender
- Race
- Marital status
- Whether or not tumor recurred
- Alive or dead
Ordinal Scale Variables are in categories, but with an underlying order to their values Rank-order categories from highest to lowest Intervals may not be equal Count number in each category, calculate percentage Examples: - Cancer stages
- Apgar scores
- Pain ratings
- Likert scale
Interval Scale Quantitative data Cannot multiply & divide values Example: - Temperature on a Celsius scale
- 00 indicates point when water will freeze, not an absence of warmth
Ratio Scale (continuous) Quantitative data with true zero - Can add, subtract, multiply & divide
Examples: - Age
- Body weight
- Blood pressure
- Length of hospital stay
- Operating room time
Scales of Measurement Nominal Ordinal Interval Ratio
Two Branches of Statistics Descriptive - Frequencies & percents
- Measures of the middle
- Measures of variation
Inferential - Nonparametric statistics
- Parametric statistics
Descriptive Statistics First step in analyzing data Goal is to communicate results, without generalizing beyond sample to a larger group
Frequencies and Percents Number of times a specific value of an observation occurs (counts) For each category, calculate percent of sample
Measures of the Middle or Central Tendency Mean - Average score
- Most common measure, but easily influenced by outliers
Median - 50th percentile score
- Use when data are asymmetrical or skewed
Measures of Variation or Dispersion Standard deviation (SD) - Square root of the sum of squared deviations of the values from the mean divided by the number of values
Standard error (SE) - Standard deviation divided by the square root of the number of values
Measures of Variation or Dispersion Variance - Square of the standard deviation
Range - Difference between the largest & smallest value
Inferential Statistics Nonparametric tests Parametric tests - Used for analyzing interval & ratio variables
- Makes assumptions about data
- Normal distribution
- Homogeneity of variance
- Independent observations
Which Test Do I Use? Step 1 Know the scale of measurement Step 2 Know your goal - Is it to compare groups? How many groups do I have?
- Is it to measure a relationship or association between variables?
Key Inferential Statistics Chi-Square T-test Analysis of Variance (ANOVA) Pearson’s Correlation Linear Regression
p < 0.05 p < 0.05 p < 0.01 - 1 in 100 or 1% chance of error
p < 0.001 - 1 in 1000 or .1% chance of error
Research Hypothesis Topic research question Research question hypothesis - Null hypothesis (H0)
- Predicts no effect or difference
- Alternative hypothesis (H1)
- Predicts an effect or difference
Are These Categorical Variables Associated?
Chi-Square Most common nonparametric test Use to test for association between categorical variables Use to test the difference between observed & expected proportions - The larger the chi-square value, the more the numbers in the table differ from those we would expect if there were no association
Limitation - Expected values must be equal to or larger than 5
Alternative to Chi-Square Fisher’s exact test - Is based on exact probabilities
- Use when expected count <5 cases in each cell and
- Use with 2 x 2 contingency table
Do These Groups Differ?
Unpaired t-test or Student’s t-test Frequently used statistical test Use when there are two independent groups
Unpaired t-test or Student’s t-test Test for a difference between groups - Is the difference in sample means due to their natural variability or to a real difference between the groups in the population?
Outcome (dependent variable) is interval or ratio Assumptions of normality, homogeneity of variance & independence of observations
Do These Groups Differ?
Analysis of Variance (ANOVA) or F-test Three or more independent groups Test for a difference between groups - Is the difference in sample means due to their natural variability or to a real difference between the groups in the population?
Outcome (dependent variable) is interval or ratio Assumptions of normality, homogeneity of variance & independence of observations
Let’s Test For A Difference
Is there a relationship between the variables?
Pearson’s Correlation Measures the degree of relationship between two variables Assumptions: - Variables are normally distributed
- Relationship is linear
- Both variables are measured on the interval or ratio scale
- Variables are measured on the same subjects
Scatterplots r = -1.0 ---- +1.0
Let’s Test For A Relationship
Interpretation of Results The size of the p value does not indicate the importance of the result Appropriate interpretation of statistical test - Group differences
- Association or relationship
- “Correlation does not imply causation”
Don’t Lie With Statistics !
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