Decision-making And Statistical Inference Flashcards

1
Q

Basic steps for testing research hypothesis and statistical analysis

A

1) determine the null and alternative hypotheses
2) collect data and summarize evidence with a summary statistic and CI
3) determine the p-value
4) make a decision on which hypothesis is more likely

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2
Q

Null vs alternative hypothesis

A

Null “Ho”=. No change/no difference

  • this hypothesis is presumed until proven other wise
  • the goal of the study is to prove this wrong

Alternative “Ha”= Change/difference present

  • this hypothesis is not presumed until proven otherwise
  • the goal of the study it to prove this right
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3
Q

False positive (a) vs false negative (b)

A

False positive = rejection of a true null hypothesis
- this is deemed positive since rejecting the null is a “positive” outcome of a study

False negative = not rejecting a false null hypothesis

A = the percentage chance of a false positive

B = The percentage chance of a false negative

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4
Q

One-sided vs two-sided alternative hypothesis

A

One-sided = compared to a placebo, the drug is either better or worse

Two-sided alternative = Compared to an actual drug, the drug is either better or worse.

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5
Q

What is a summary statistic

A

Statistic that summarizes the collected data and generally contributes to tested hypotheses
Ex: mean,mode,median, standard deviation

These are also referred to as a point estimate

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6
Q

Are confidence intervals or summary statistics better?

A

Confidence intervals are better

  • they provide more information than point estimates
  • provide a probabilistic range for the summary statistic (generates a chance that the population statistic will fall within the standard deviation)
  • confidence intervals shrink as population size grows

example: CI =0.95 can also be worded as “we are confident that if the study were repeated 100 times, the population statistic will appear within this interval

NOTE: CI does NOT mean there is a definitive 95% chance the population statistic is within the interval or that 95% of data values are within the CI

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7
Q

P-value

A

The probability of observing a test statistic as an extreme
- probability of a false positive

If the P value is < a
- we reject null hypothesis and say the result is statistically significant

If the P value is > a
- we dont reject the null hypothesis and say the result is not statistically significant

a is usually 0.05

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8
Q

Issues with P-values

A

Only is valid for a single comparison (since it is compared to “a”)
- can only be with 1 statistic

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9
Q

Equivalence testing

A

Used to determine if things are similar within a boundary (‘d’)
- used ONLY after a null hypothesis is confirmed

  • switch the null and alternative hypothesis and retest again

Essentially Showing that the null hypothesis is true.

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10
Q

Statistical vs clinical significance

A

Statistical significance says nothing about the relevance of results
- this is why p values are starting to fall out of favor

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11
Q

P values vs confidence interval

A

P value = the conditional probability
- a statement that suggests how likely a result would be assuming the null hypothesis is true
P < a = the result depicted in the study suggests that the null hypothesis is not true (reject Ho)
- very dependent on sample size

Confidence interval = provides a magnitude for uncertainty around the summary statistic

  • has a 1:1 relationship w/ p-value
  • IF IT CONTAINS THE HYPOTHESIZED VALUE FROM Ho, IT IS NOT SIGNIFICANT
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12
Q

Non-inferiority testing

A

Shows the difference between effects of two drugs (usually negative effects)
- used heavily in pharmacology

Null hypothesis “Ho” = mean difference between two groups is less than “M”

Alternative hypothesis “Ha” = mean difference from two groups is greater than or equal to “M”

M = non-inferiority matin

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13
Q

Two types of errors

A

Type 1: False positive (a) = reject a true null

Type 2: False negative (b) = dont reject a false null

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14
Q

Significance level (a)

A

Decision threshold upon which to state a result is significant

It is the probability of a type 1 error

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15
Q

Confidence level

A

Probability of failing to reject if the null is true (1-a)

Chance that the research is true and not bias

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16
Q

Power

A

Probability of rejecting a false null hypothesis (1-B)

The probability of asserting the alternative hypothesis is true when it is actually is given the sample size
- the remaining percentage will not be signify cut and usually chance

17
Q

What is the relationship between a and B?

A
Inverse relationship (as long as the sample size is fixed) 
- if you decrease one, the other is increased
18
Q

Ways to increase power

A

Increase sample size

Increase differences between numerical distance in Ho and Ha

Decrease variability

Increase significance level
- increases false positive chance however