Name that Data
Put it to the Test
Power Trip
Cause and Effect-Size
Trial and Error
100

Blood type (A, B, AB, O)

Nominal

100

Continuous data with a normal distribution comparing two samples that are related to one another

Paired T-test

100

This tells us how likely one can correctly conclude there is a difference

Power

100

Tells us how large is the difference in study outcome between two treatments under comparison

effect size

100

This is usually chosen as the value for alpha

0.05

200

Stage of Cancer

Ordinal

200

Ordinal data comparing two independent samples

Wilcoxon Rank-sum/Mann-Whitney U

200

Increasing the sample size has this effect on power

Increases power

200

The larger the effect size the _________ the power

Higher

200

Alpha is the maximum allowable probability of making this type of error

type-1 error

300

Temperature in Celsius

Interval

300

Two large, unrelated samples of nominal data

Chi-square

300

This factor does not directly enter into the equation for power and may affect the observed variation in the outcome

study design

300

Name one way to calculate effect size if the data is binary

1. odds ratio

2. absolute difference in proportions

300

This type of error is considered a false negative

type-II error

400

Blood pressure (mmHg)

Continuous

400

Four samples of independent, normally distributed data compared

One-way ANOVA

400

This factor has a negative association to power

variation of the outcome

400

Unknown actual effect size? This is a medical and scientific judgment rather than a statistical decision.

minimum clinically significant effect size

400

This error is considered a false positive

Type-1 error

500

Weight categorized into underweight, normal, overweight

Categorical

500

Four small, unrelated samples of data

Fisher's Exact

500

This factor is often used interchangeably with power analysis

sample size determination/calculation

500

Ways to calculate effect size with continuous data

mean difference (M1 - M2) 


standardized mean difference (M1-M2/SP)
500

Rejecting the null hypothesis whenever it is actually true

type-I error

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