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Experimental Design

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Title: Experimental Design


1
Experimental Design
  • Shoo K Lee, MBBS, FRCPC, FAAP, PhD
  • Canada Research Chair
  • Professor of Pediatrics, University of Alberta
  • Scientific Director, iCARE

2
Study Design
3
Precision and accuracy
  • PRECISION is a measure of how close an estimator
    is expected to be to the true value of a
    parameter.
  • ACCURACY is the measure of how close a measured
    value is to the true or expected value.

4
Standard deviation
  • The standard deviation is a statistic that tells
    you how tightly all the various examples are
    clustered around the mean in a set of dataSD is
    a measure of the spread of its values

5
Standard error of the mean
  • Standard Error of the Mean is the standard
    deviation of the difference between the measured
    or estimated values and the true values
  • SE used to provide measures of uncertainty, e.g.
    to calculate Confidence Intervals

6
Mean, Median, Mode
  • The Mean of the data set is its average
  • The Median is the number which is in the exact
    middle of the data set
  • The Mode is the number that appears the most
    often if you are working with only one variable

7
Null Hypothesis
  • Null hypothesis is a hypothesis set up to be
    nullified or refuted in order to support an
    alternative hypothesis.
  • Null hypothesis states that the results observed
    in a study are no different from what might have
    occurred as a result of the play of chance

8
Errors
  • Alpha (Type 1) error is rejecting the null
    hypothesis when it is true
  • Beta (Type 2) error is failing to reject the null
    hypothesis when it is false

9
Power
  • If H1 is true (that is, the distribution of X is
    specified by H1), then P(X R), the probability
    of rejecting H0 (and thus making a correct
    decision), is known as the power of the test for
    the distribution

10
Confidence intervals
  • A confidence interval gives an estimated range of
    values which is likely to include an unknown
    population parameter

11
Probability Distribution
  • The probability distribution of a discrete random
    variable is a list of probabilities associated
    with each of its possible values.

12
Prevalence and incidence
  • Prevalence - the measure of a condition in a
    population at a given point in time
  • Incidence - the number of new occurrences of a
    condition in a population over a period of time.

13
Sensitivity and specificity
  • Sensitivity refers to how good a test is at
    correctly identifying people who have the disease
  • Specificity refers to how good the test is at
    correctly identifying people who do not have the
    disease

14
False positive and negative
  • False positive is a result that is erroneously
    positive when a situation is normal (Type 1
    error).
  • False negative is a result that shows no evidence
    of the disease although the disease is actually
    present (Type 2 error).

15
Positive and Negative predictive
  • Positive predictive value - how often a patient
    with a positive test has the disease
  • Negative predictive value - how often a patient
    with a negative test does not have the disease

16
Disease
Test
17
Calculation of Sensitivity, Specificity, PPV, NPV
SENSITIVITY __TP___ X 100 TP
FN SPECIFICITY __TN___ X 100 FP
TN POSITIVE PREDICTIVE VALUE __TP___ X 100
TP FP NEGATIVE PREDICTIVE VALUE __TN___ X
100 FN TN
18
Stratification
  • Data collected about a problem may represent
    multiple sources that need to be treated
    separately
  • Stratification is a technique to separate the
    data so that patterns can be seen.

19
Types of Variables
  • Categorical (or nominal) - one that is given by
    list of categories or classes, e.g. eye color
  • Ordinal one that orders (or ranks) data in
    terms of degree, e.g. score
  • Continuous - A quantitative variable with an
    infinite number of attributes, e.g. length

20
Parametric and Non-parametric Tests
  • Parametric Test - A statistical test in which
    assumptions are made about the underlying
    distribution of observed data
  • Non-Parametric tests are used in place of their
    parametric counterparts when certain assumptions
    about the underlying population are questionable.

21
  • PARAMETRIC
  • Chi-square
  • Fischers exact test
  • Students t-test
  • ANOVA
  • Logistic regression
  • NON-PARAMETRIC
  • Sign rank test
  • Rank sum test

22
Parametric Tests
  • Chi-square test is used to examine differences
    with categorical variables
  • The Fischer's exact test should be used when the
    frequency is lt5 in any part of the contingency
    table
  • Students t-test assesses whether the means of
    two groups are statistically different from each
    other
  • ANOVA tests the hypothesis that the means among
    two or more groups are equal
  • Logistic regression Logistic regression describes
    the relationship between a dichotomous response
    variable and a set of explanatory variables

23
Non-parametric Tests
  • Wilcoxon Matched-Pairs Signed Ranks Test is used
    to determine differences between groups of paired
    data when the data do not meet the rigor
    associated with a parametric test (t-test)
  • Wilcoxon Rank Sum Test can be used to test the
    null hypothesis that two populations X and Y have
    the same continuous distribution

24
Choosing a Test
25
Paired or Matched Observation
26
Odds ratio
  • The odds ratio is a way of comparing whether the
    probability of a certain event is the same for
    two groups
  • OR1, the event is equally likely in both groups.
    ORgt1, the event is more likely in the first
    group. ORlt1, the event is less likely in the
    first group
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