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Variables Sherine ShawkySherine Shawky, MD, Dr.PH Assistant Professor Department of Community Medicine & Primary Health Care College of Medicine King Abdulaziz University
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Learning Objectives Understand the concept of variable Distinguish the types of variables Recognize data processing methods
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Performance Objectives Select the variables relevant to study Perform appropriate data transformation Present data appropriately
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“A variable is any quantity that varies. Any attribute, phenomenon or event that can have different values” Definition Of Variable
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Information Supplied By Variables Indices of Person Indices of Place Indices of Time
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Specification of Variable Clear precise standard definition Method of measurement Scale of measurement
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Role Of Variable Interdependent Correlation Interdependent
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Role Of Variable Independent Dependent Independent Dependent Confounding Independent Dependent Effect modifier Association
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Types of Variables Quantitative (continuous) Qualitative (Discrete)
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I- Quantitative Variables Data in numerical quantities that can assume all possible values Data on which mathematical operations are possible Example: age, weight, temperature, haemoglobin level, RBCs count
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II- Qualitative Variables Qualitative variables are those having exact values that can fall into number of separate categories with no possible intermediate levels NominalOrdinal
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1- Nominal Variable Unordered qualitative categories Dichotomous (2 categories) Multichotomous (> 2 categories)
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2- Ordinal Variable Ordered qualitative categories Scorebirth order Categorical social class Numerical discrete parity
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Continuous Variable 0321-2-3 0123 Numerical Discrete Continuous & Numerical Discrete Variables
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Types of Variables - Quantitative - Dichotomous - Multichotomous - Score - Categorical - Numerical discrete How much? How many? Who, How, where, when, What,…etc.?
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Age in years: Height in cm: Gender: 1) male, 2) female Data Collection Tool Social class: 1) low, 2) middle, 3) high.
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Data Transformation Data Reduction Creation of composite variable
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Data Reduction Example Data: Age from 47 individuals Arrange in ascending order: 20, 21, 22, 23, 23, 24, 25, 29,29, 30, 30, 34, 34, 34, 34, 34, 34, 35, 35, 36, 37, 39, 39, 40, 43, 43, 43, 46, 46, 47, 47, 48, 48, 48, 50, 52, 56, 56, 58, 59, 59, 60, 62, 64, 64, 67, 69
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Data Reduction Example (cont.) Calculate the range: 69-20= 49 No. of intervals= 5 Width of class= 49/5 = 9.8 10 Class intervals= 20-29, 30-39, 40-49, 50-59, 60-69
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Data Reduction Continuous: 20, 21, 22…….69 Interval: 20-29, 30-39, 40-49, 50-59, 60-69 Ordinal: Twenties, Thirties, Forties, Fifties, Sixties Nominal: Young or Old
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Creation Of Composite Variable Quantitative Qualitative Single variables Composite variable Quantitative Qualitative
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Data Presentation TabularDiagrammatic
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VariableTableChart Nominal - Frequency - Percentage - Pie - Column or Bar Ordinal - Frequency - Percentage - Cumulative frequency - Cumulative percentage - Pie - Column or Bar - Linear - Ogive Interval - Frequency - Percentage - Cumulative frequency - Cumulative percentage - Histogram - Frequency polygon - Ogive Continuous - Mean, SD - Mean, 95%CI - Scatter - Box plot Data Presentation
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Frequency Table
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Pie Chart
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Column Chart Single CategoryAll categories %
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Bar Chart Single CategoryAll categories %
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Frequency and Cumulative Frequency Table
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Linear Chart Ogive (Cumulative Percentage) Percentage Stages of Breast Cancer
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Frequency and Cumulative Frequency Table for Variable of Interval
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Horizontal axis For Variable of Interval
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Histogram %
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Frequency Polygon %
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Tabular Presentation of Quantitative Data VariableTotalMeanSD95% CI Age (years) 4742.1 13 5.38.2 - 46.0 or
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Scatter Diagram
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Box-whisker plot 20 27N = SEX FemaleMale AGE in years 80 70 60 50 40 30 20 10
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Conclusion The variable is the basic unit required to perform a research. The researcher has to select the list of variables relevant to the study objectives, specify every piece of information and assign its role. The type of variable should be set in order to allow for proper data collection, transformation and presentation.
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