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Medical Statistics as a science

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Title: Basic Biostatistics Author: hutos Last modified by: Biblioteka Created Date: 3/24/2003 1:57:35 AM Document presentation format: Company – PowerPoint PPT presentation

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Title: Medical Statistics as a science


1
Medical Statisticsas a science
2
Why Do Statistics?
  • Extrapolate from data collected to make general
    conclusions about larger population from which
    data sample was derived
  • Allows general conclusions to be made from
    limited amounts of data
  • To do this we must assume that all data is
    randomly sampled from an infinitely large
    population, then analyse this sample and use
    results to make inferences about the population

3
Statistical Analysisin a Simple Experiment
  • Define population of interest
  • Randomly select sample of subjects to
    study(clinical trials do not enrol a randomly
    selected sample of patients due to
    inclusion/exclusion criteria but define a precise
    patient population)
  • Half the subjects receive one treatment and the
    other half another treatment (usually placebo)
  • Measure baseline variables in each group(e.g.
    age, Apache II to ensure randomisation
    successful)
  • Measure trial outcome variables in each group
    (e.g. mortality)
  • Use statistical techniques to make inferences
    about the distribution of the variables in the
    general population and about the effect of the
    treatment

4
Data
  • Categorical data ? values belong to categories
  • Nominal data there is no natural order to the
    categoriese.g. blood groups
  • Ordinal data there is natural order e.g. Adverse
    Events (Mild/Moderate/Severe/Life Threatening)
  • Binary data there are only two possible
    categoriese.g. alive/dead
  • Numerical data ? the value is a number(either
    measured or counted)
  • Continuous data measurement is on a
    continuume.g. height, age, haemoglobin
  • Discrete data a count of events e.g. number of
    pregnancies

5
  • Descriptive Statistics
  • concerned with summarising or describing a
    sample eg. mean, median
  • Inferential Statistics
  • concerned with generalising from a sample, to
    make estimates and inferences about a wider
    population eg. T-Test, Chi Square test

6
Statistical Terms
  • Mean ? the average of the data ? sensitive
    to outlying data
  • Median ? the middle of the data ? not
    sensitive to outlying data
  • Mode ? most commonly occurring value
  • Range ? the spread of the data
  • IQ range ? the spread of the data
    ? commonly used for skewed data
  • Standard deviation ? a single number which
    measures how much the observations vary
    around the mean
  • Symmetrical data ? data that follows normal
    distribution ? (meanmedianmode)
    ? report mean standard deviation n
  • Skewed data ? not normally distributed
    ? (mean?median ?mode)
    ? report median IQ Range

7
Standard Normal Distribution
8
Standard Normal Distribution
Mean /- 1 SD ? encompasses 68 of
observations Mean /- 2 SD ? encompasses 95 of
observations Mean /- 3SD ? encompasses 99.7 of
observations
9
Steps in Statistical Testing
  • Null hypothesisHo there is no difference
    between the groups
  • Alternative hypothesisH1 there is a difference
    between the groups
  • Collect data
  • Perform test statistic eg T test, Chi square
  • Interpret P value and confidence intervals
  • P value ? 0.05 Reject Ho
  • P value gt 0.05 Accept Ho
  • Draw conclusions

10
Meaning of P
  • P Value the probability of observing a result as
    extreme or more extreme than the one actually
    observed from chance alone
  • Lets us decide whether to reject or accept the
    null hypothesis
  • P gt 0.05 Not significant
  • P 0.01 to 0.05 Significant
  • P 0.001 to 0.01 Very significant
  • P lt 0.001 Extremely significant

11
T Test
  • T test checks whether two samples are likely to
    have come from the same or different populations
  • Used on continuous variables
  • Example Age of patients in the APC study
    (APC/placebo)
  • PLACEBO APC mean age 60.6 years mean
    age 60.5 years
  • SD/- 16.5 SD /- 17.2
  • n 840 n 850
  • 95 CI 59.5-61.7 95 CI 59.3-61.7
  • What is the P value?
  • 0.01
  • 0.05
  • 0.10
  • 0.90
  • 0.99
  • P 0.903 ? not significant ? patients from the
    same population(groups designed to be matched
    by randomisation so no surprise!!)

12
T Test SAFE Serum Albumin
  • PLACEBO ALBUMIN
  • n 3500 3500
  • mean 28 30
  • SD 10 10
  • 95 CI 27.7-28.3 29.7-30.3
  • Q Are these albumin levels different?Ho
    Levels are the same (any difference is there by
    chance)H1 Levels are too different to have
    occurred purely by chance
  • Statistical test T test ? P lt 0.0001 (extremely
    significant)Reject null hypothesis (Ho) and
    accept alternate hypothesis (H1) ie. 1 in 10 000
    chance that these samples are both from the same
    overall group therefore we can say they are very
    likely to be different

13
Effect of Sample Size Reduction
PLACEBO ALBUMIN n 350
350 mean 28 30 SD 10 10 95
CI 27.0-29.0 29.0-31.0
  • smaller sample size (one tenth smaller)
  • causes wider CI (less confident where mean is)
  • P 0.008 (i.e. approx 0.01 ? P is significant
    but less so)
  • This sample size influence on ability to find any
    particular difference as statistically
    significant is a major consideration in study
    design

14
Reducing Sample Size (again)
  • PLACEBO ALBUMINn 35 35
  • mean 28 30
  • SD 10 10
  • 95 CI 24.6-31.4 26.6-33.4
  • using even smaller sample size (now 1/100)
  • much wider confidence intervals
  • p0.41 (not significant anymore)
  • ? SMALLER STUDY has LOWER POWER to find any
    particular difference to be statistically
    significant (mean and SD unchanged)
  • POWER the ability of a study to detect an actual
    effect or difference

15
Chi Square Test
  • Proportions or frequencies
  • Binary data e.g. alive/dead
  • PROWESS Study Primary endpoint 28 day all cause
    mortality

ALIVE DEAD TOTAL
DEAD PLACEBO 581 (69.2)
259 (30.8) 840 (100)
30.8 DEAD 640 (75.3) 210
(24.7) 850 (100) 24.7 TOTAL
1221 (72.2) 469 (27.8) 1690 (100)
  • Perform Chi Square test ? P 0.006 (very
    significant)
  • 6 in 1000 times this result could happen by
    chance ? 994 in 1000 times this difference
    was not by chance variation

16
Reducing Sample Size
  • Same results but using much smaller sample size
    (one tenth)
  • ALIVE DEAD TOTAL
    DEAD
  • PLACEBO 58 (69.2) 26
    (30.8) 84 (100) 30.8
  • DEAD 64 (75.3) 21 (24.7)
    85 (100) 24.7
  • TOTAL 122 (72.2) 47 (27.8)
    169 (100)
  • Perform Chi Square test ? P 0.39 39 in
    100 times this difference in mortality could
    have happened by chance therefore results
    not significant
  • Again, power of a study to find a difference
    depends a lot on sample size for binary data
    as well as continuous data

17
Summary
  • Size mattersBIGGER IS BETTER
  • Spread mattersSMALLER IS BETTER
  • Bigger differenceEASIER TO FIND
  • Smaller differenceMORE DIFFICULT TO FIND
  • To find a small difference you need a big study
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