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Summary Biostatics

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Uploaded on
June 17, 2024
Number of pages
39
Written in
2021/2022
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Summary

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Day 1:

Definition of essential terms:

1. Population:
- Entire group of observations
- Symbols for population: μ (mu) = mean / σ (sigma) = standard deviation

2. Sample
- Subset (parts) of population → for approximation
- Symbols for sample: X̄ = mean / s = standard deviation
- Selected randomly and independently from populations

Data classification
1. Nominal: only classification
2. Ordinal: classification + ranking
3. Interval scale: measurement with fixed unit an arbitrary starting point ( one
variable)
4. Ratio scale: fixed unit + fixed null point (relationship between two variables)
5. Censored data: one end of interval is not known → drug testing




Or in sample: s

,Day 2
Tips to approach probability question:
1. Analyze the given variables 🡪 let A be the first event… / B be the second event…
2. Write down the info known in numerical value 🡪 convert from %
3. Understand problem given in probability notation 🡪 conditional probability
phrase indication: “of this sample [outcome A], [probability] has also [outcome B]
….
4. Use appropriate equation given




Conditional probability (if NOT mutually independent)




Diagnostic test (*)

,Probability distribution with discrete (fixed) outcomes
1. Uniform probability → equal and unbiased probability for a particular
event

2. Binomial probability → 2 outcomes [e.g: Pr(A) and Pr (NOT A)]




n = sample size / 𝛑 = probability (must be FIXED)




3. Poisson probability → random event occurred independently at
particular time and space

, *Very large (unknown) sample size*




Expected outcome = variance = 𝛍




Day 3
Normal distribution




- Symmetrical
- Continuous variable
- Represented as X N ( μ , σ 2 )

Linear Transformation




Steps to approach a typical normal distribution question
1. Analyze the question first → find out what is μ∧σ given in the qn
2. Express the data in the form of X N ( μ , σ 2 )
3. Perform standardization (see formula below)

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