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Published byShona Robertson Modified over 9 years ago
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Easy (and not so easy) questions to ask about adolescent health data J. Dennis Fortenberry MD MS Indiana University School of Medicine
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Four types of questions about health data About data users About data production About data quality About data inferences
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Questions about users
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Questions about the users Who are the end-users What are the data skills of the end-users What are the conditions of use
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Questions about data production
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Why were the data collected Who collected the data How were the data collected How were the data processed
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Questions about data production Who is represented by the data Who is left out – and why Are there issues of privacy and confidentiality
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Questions about data quality
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Missing data Incorrect data Coded data Out of range data Accuracy
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Precision and Accuracy True Value Accurate & Precise Accurate only Neither Accurate nor Precise Precise only
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Questions about data inferences
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What type of data is available Nominal Ordinal Interval Ratio
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Measurement Scales Nominal Ordinal Interval Ratio Interval and Ratio scales produce continuous variables A nominal scale produces categorical variables
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Examples of Measurement Scales Nominal Temperature ( 0 F) Ordinal Blood Pressure Interval Tanner Stage Ratio Gender
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What type of descriptive statistics are needed Mean Median Shape of distribution Variation – standard deviation Proportion
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Mean + 2 SD-2 SD -1 SD+1 SD -1.96 SD+1.96 SD For a normal curve, a traditional alpha is nearly two standard deviation units from the mean
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Standard Deviation A measure of variability within a sample Positive square root of variance Area between - 1SD and +1 SD represents 68% of area under the curve Between -2 SD and +2 SD is 95.4%
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Confidence Intervals Range of values containing true mean with a given level of certainty 95% CI commonly used 95% CI = mean 1.96 SE
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The Null Hypothesis H 0 : A does not differ from B H 1 : A is different than B Where A and B are two variables of interest
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Types of Error in Statistical Testing Type 1: Rejection of a ‘true’ null hypothesis Type 2: Acceptance of a ‘false’ null hypothesis
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One-Tail versus Two-Tails One-Tailed tests are used to assess a directional hypothesis One-tailed tests have greater power One-tailed tests can be used when there is solid theoretical or empirical basis
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Elements of Statistical Power The statistical test Level of Alpha 1-Tailed / 2-Tailed Sample Size The difference to be detected
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What type of inferential statistics are appropriate Correlation Chi square t test Risk ratio and Odds ratio
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What is a Risk Ratio
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What is an Odds Ratio
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Who do the data represent and Can the data be applied to other groups Representativeness Generalizability
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Questions?
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