SlideShare uma empresa Scribd logo
1 de 41
Dr. Dalia El-Shafei
Assistant professor, Community Medicine Department, Zagazig University
Sample
 Group of individuals or things selected from the entire population to
be representative to this population.
 Each member of the population is called the sampling unit.
Epidemiological Study
SampleComprehensive
Study a sample selected from
the population.
Study the whole population.
Sampling frame
A list of all the units in the population from which a
sample will be selected
Sampling
Non-probability
Accessibility
(convenience)
Quota
Judgmental
(Purposive)
Snowball sample
(friend of friend)
Probability
Simple random
Systematic
random
Stratified
random
Cluster
Multi-stage
random
Probability sample:
probability of selecting
an individual is 50%
“no selection bias”.
Types of sample
Probability SampleNon- probability Sample
Investigator has minimal role in
selection.
Sample is representative (each
individual has an equal chance of being
in the sample).
We can generalize the results.
Investigator has a role in selection.
Sample is not representative (not
each individual has an equal chance
of being in the sample).
We cannot generalize the results
Non-probability Sample
Sampling
Non-probability
Accessibility
(convenience)
Quota
Judgmental
(Purposive)
Snowball sample
(friend of friend)
Probability
Simple random
Systematic
random
Stratified
random
Cluster
Multi-stage
random
Probability sample:
probability of selecting
an individual is 50%
“no selection bias”.
Types of sample
Not every
individual has
an equal chance
of being in the
sample.
The investigator
has a role in
selection.
Sample is not
representative
We cannot
generalize the
results.
Advantages
• Cheap
• Quick
• Not require a
sampling frame
Disadvantages
• Not a good
representation of
the population
• Great variability
between persons
in sample.
Accessibility (convenience) sample
Most common of all sampling techniques.
The samples are selected because they are
accessible to the researcher.
Subjects are chosen simply because they
are easy to recruit.
Easiest, cheapest & least time consuming.
Used in: Mass media & pilot study.
Quota sampling
The researcher ensures equal or proportionate representation
of subjects depending on which trait is considered as basis of
the quota.
For example, if basis of the quota is college year level and the
researcher needs equal representation
with a sample size of 100,
he must select 25 1st year students, another 25 2nd year
students, 25 3rd year and 25 4th year students.
The bases of the quota are usually age, gender, education, race,
religion and socioeconomic status.
 Example: interview of all persons passing in a certain street at
certain time.
 The sample is complete when the desired number of population is
reached.
 This can be done in T.V. to known public opinion for the preferable
programs but it is seldom used in scientific medical researchers.
Judgmental (Purposive) sample
Subjects are chosen to
be part of the sample
with a specific purpose
in mind (previous
knowledge or
professional
experience).
The researcher believes
that some subjects are
fit for the research
compared to other
individuals.
Snowball sample
(friend of friend) It is usually done when there
is a very small population
size.
The researcher asks the
initial subject to identify
another potential subject
who also meets the criteria
of the research.
Hardly representative of the
population.
Probability Sampling
Sampling
Non-probability
Accessibility
(convenience)
Quota
Judgmental
(Purposive)
Snowball sample
(friend of friend)
Probability
Simple random
Systematic
random
Stratified
random
Cluster
Multi-stage
random
Probability sample:
probability of selecting
an individual is 50%
“no selection bias”.
Types of sample
Every individual
has an equal
chance of being
in the sample.
The investigator
has minimal
role in selection.
Sample is
representative
We can
generalize the
results.
Simple random sample
 Suitable in small population.
 Not suitable in large population.
 Process:
• Construct “Sample frame”.
• Decide “Sample size”.
• Select the sampling units randomly “lottery or random table or
computer”.
For example: if we want to select 5 individuals out of 15. We
need first to give number for each individual(15)(sampling
frame) ,then randomly select the needed sample (5 unit) by
lottery from a box containing numbers from 1 till 15.
If we need 50 pupils to be our sample, we can select them
randomly from school list records (our frame is the school).
If the sample will be chosen from a large population (as
government) framing is difficult as enlistment of the whole
population living there is difficult, therefore we have to use
other sampling methods.
Systematic random sampling
 Characteristics:
- Does not require sample frame.
- We can select from large population
The selection depends on constant interval (k interval)
Sampling interval= Total population/sample size.
1st number is selected randomly.
Then add the sampling interval to the random start to select
subsequent units.
Advantages
No selection bias Not require sample frame Used for large population
Example:
We need 5 persons from 15.
Sampling interval = 15/5.
We take every 3rd person starting from a random number selected
from the first 3 numbers.
Example:
• We need to select individuals from outpatient clinic. No frame, no of total
population is unknown.
• We decide the sample size.
• We start by a random no from (1-10).
• If we start with no 7, we select every 7th person come to clinic till reach the
sample size.
Stratified random sampling
 Characteristics:
- Every character appears (is
represented) in the sample.
 Process:
- Population divided into
strata according to some
characteristics.
- From each stratum, select
the units by using random
method
Example:
Population is classified into 2 strata (male & female).
Select the same number from male & female.
If the age is different, divide the sample of each sex into age groups.
Select equal number from each age group randomly.
Cluster samplingProcess
The area is divided into clusters
One or 2 clusters are selected
randomly
All individuals in each cluster
are included
Cluster: a group of individuals present in certain locality or geographic area.
Example:
We need to select 5000 individuals live in rural areas in
Sharkia Governorate.
We suspect that this no. will be found in 2 villages.
We select 2 villages randomly.
All individuals in the 2 villages are included.
Multistage sampling
• Used in national or widespread study.
• Selection process is arranged in stages.
• From each stage, select a sample randomly.
Example:
 Select 2 from 28 governorates randomly.
 Select 2 cities from each governorate (4 cities).
 Select one or more district from each city.
 Select the desired number of houses from each district & so on individuals.
Factors affecting sample size
Sample size
The number of individuals or things to be included in the study.
Large sample will increase the significance of minor
difference.
Determinants of sample size
Available resources.
Number of variables affecting the disease.
Prevalence of the disease.
Effect size (the smallest effect worth detecting) or it
is the difference between case & control groups.
The type of the study.
The cost of each sample.
Sample size is
calculated by many
computer packages
but you have to fill
some information in
these statistical
programs.
The needed
information is
specific for each type
of study.
Dr. Dalia El-Shafei's guide to sampling methods and sample size determination

Mais conteúdo relacionado

Mais procurados

Statistics chapter1
Statistics chapter1Statistics chapter1
Statistics chapter1cabadia
 
Population & sample lecture 04
Population & sample lecture 04Population & sample lecture 04
Population & sample lecture 04DrZahid Khan
 
Sampling and sampling distributions
Sampling and sampling distributionsSampling and sampling distributions
Sampling and sampling distributionsStephan Jade Navarro
 
Sampling Technique - Anish
Sampling Technique - AnishSampling Technique - Anish
Sampling Technique - AnishAnish Kumar
 
Sampling distribution
Sampling distributionSampling distribution
Sampling distributionDanu Saputra
 
Sampling and sampling distribution tttt
Sampling and sampling distribution ttttSampling and sampling distribution tttt
Sampling and sampling distribution ttttpardeepkaur60
 
sampling simple random sampling
sampling simple random samplingsampling simple random sampling
sampling simple random samplingDENNY VARGHESE
 
Basic Concepts of Inferential statistics
Basic Concepts of Inferential statisticsBasic Concepts of Inferential statistics
Basic Concepts of Inferential statisticsStatistics Consultation
 
Sampling distribution concepts
Sampling distribution conceptsSampling distribution concepts
Sampling distribution conceptsumar sheikh
 
Sampling techniques 2
Sampling techniques 2Sampling techniques 2
Sampling techniques 2Ruby Ocenar
 
Research method ch07 statistical methods 1
Research method ch07 statistical methods 1Research method ch07 statistical methods 1
Research method ch07 statistical methods 1naranbatn
 
T test^jsample size^j ethics
T test^jsample size^j ethicsT test^jsample size^j ethics
T test^jsample size^j ethicsAbhishek Thakur
 

Mais procurados (20)

Student's T Test
Student's T TestStudent's T Test
Student's T Test
 
t-test vs ANOVA
t-test vs ANOVAt-test vs ANOVA
t-test vs ANOVA
 
Statistics chapter1
Statistics chapter1Statistics chapter1
Statistics chapter1
 
Sampling Distribution
Sampling DistributionSampling Distribution
Sampling Distribution
 
Population & sample lecture 04
Population & sample lecture 04Population & sample lecture 04
Population & sample lecture 04
 
Sampling and sampling distributions
Sampling and sampling distributionsSampling and sampling distributions
Sampling and sampling distributions
 
Sampling Technique - Anish
Sampling Technique - AnishSampling Technique - Anish
Sampling Technique - Anish
 
Sampling design ppt
Sampling design pptSampling design ppt
Sampling design ppt
 
Sampling fundamentals
Sampling fundamentalsSampling fundamentals
Sampling fundamentals
 
Non-Parametric Tests
Non-Parametric TestsNon-Parametric Tests
Non-Parametric Tests
 
Sampling distribution
Sampling distributionSampling distribution
Sampling distribution
 
Sampling and sampling distribution tttt
Sampling and sampling distribution ttttSampling and sampling distribution tttt
Sampling and sampling distribution tttt
 
Parametric test
Parametric testParametric test
Parametric test
 
sampling simple random sampling
sampling simple random samplingsampling simple random sampling
sampling simple random sampling
 
Sampling
SamplingSampling
Sampling
 
Basic Concepts of Inferential statistics
Basic Concepts of Inferential statisticsBasic Concepts of Inferential statistics
Basic Concepts of Inferential statistics
 
Sampling distribution concepts
Sampling distribution conceptsSampling distribution concepts
Sampling distribution concepts
 
Sampling techniques 2
Sampling techniques 2Sampling techniques 2
Sampling techniques 2
 
Research method ch07 statistical methods 1
Research method ch07 statistical methods 1Research method ch07 statistical methods 1
Research method ch07 statistical methods 1
 
T test^jsample size^j ethics
T test^jsample size^j ethicsT test^jsample size^j ethics
T test^jsample size^j ethics
 

Semelhante a Dr. Dalia El-Shafei's guide to sampling methods and sample size determination

Population and Sampling Techniques.pptx
Population and Sampling Techniques.pptxPopulation and Sampling Techniques.pptx
Population and Sampling Techniques.pptxDrHafizKosar
 
Sampling design
Sampling designSampling design
Sampling designNijaz N
 
Samplingtechniquesforthesiswriting
SamplingtechniquesforthesiswritingSamplingtechniquesforthesiswriting
SamplingtechniquesforthesiswritingShah Abdul Azeem
 
Sampling techniques and sample size calculations.pptx
Sampling techniques and sample size calculations.pptxSampling techniques and sample size calculations.pptx
Sampling techniques and sample size calculations.pptxDr Debasish Mohapatra
 
Sampling techniques Psychology
Sampling techniques PsychologySampling techniques Psychology
Sampling techniques Psychologynelson elias
 
SAMPLING PROCEDURES.pptx
SAMPLING PROCEDURES.pptxSAMPLING PROCEDURES.pptx
SAMPLING PROCEDURES.pptxAnalieCabanlit1
 
Sampling Techniques.pptx
Sampling Techniques.pptxSampling Techniques.pptx
Sampling Techniques.pptxHendmaarof
 
RESEARCH METHOD - SAMPLING
RESEARCH METHOD - SAMPLINGRESEARCH METHOD - SAMPLING
RESEARCH METHOD - SAMPLINGHafizah Hajimia
 
Sampling class phd aku
Sampling class phd akuSampling class phd aku
Sampling class phd akusangita singh
 
Lecture 4 Sampling Techniques.ppt
Lecture 4 Sampling Techniques.pptLecture 4 Sampling Techniques.ppt
Lecture 4 Sampling Techniques.ppttesfkeb
 
sampling methods
sampling methodssampling methods
sampling methodsZeba Khan
 
Sampling 111121003751-phpapp01
Sampling 111121003751-phpapp01Sampling 111121003751-phpapp01
Sampling 111121003751-phpapp01ReaNoel
 

Semelhante a Dr. Dalia El-Shafei's guide to sampling methods and sample size determination (20)

Epidemiological approach
Epidemiological approachEpidemiological approach
Epidemiological approach
 
Population and Sampling Techniques.pptx
Population and Sampling Techniques.pptxPopulation and Sampling Techniques.pptx
Population and Sampling Techniques.pptx
 
Sampling design
Sampling designSampling design
Sampling design
 
Samplingtechniquesforthesiswriting
SamplingtechniquesforthesiswritingSamplingtechniquesforthesiswriting
Samplingtechniquesforthesiswriting
 
Qt
QtQt
Qt
 
Sampling techniques and sample size calculations.pptx
Sampling techniques and sample size calculations.pptxSampling techniques and sample size calculations.pptx
Sampling techniques and sample size calculations.pptx
 
Sampling techniques Psychology
Sampling techniques PsychologySampling techniques Psychology
Sampling techniques Psychology
 
Sampling methods.pdf
Sampling methods.pdfSampling methods.pdf
Sampling methods.pdf
 
Sampling
SamplingSampling
Sampling
 
SAMPLING PROCEDURES.pptx
SAMPLING PROCEDURES.pptxSAMPLING PROCEDURES.pptx
SAMPLING PROCEDURES.pptx
 
Presentation3.pptx
Presentation3.pptxPresentation3.pptx
Presentation3.pptx
 
Sampling Techniques.pptx
Sampling Techniques.pptxSampling Techniques.pptx
Sampling Techniques.pptx
 
Samples and Its types
Samples and Its typesSamples and Its types
Samples and Its types
 
RESEARCH METHOD - SAMPLING
RESEARCH METHOD - SAMPLINGRESEARCH METHOD - SAMPLING
RESEARCH METHOD - SAMPLING
 
Sampling class phd aku
Sampling class phd akuSampling class phd aku
Sampling class phd aku
 
Sampling class
Sampling class Sampling class
Sampling class
 
Lecture 4 Sampling Techniques.ppt
Lecture 4 Sampling Techniques.pptLecture 4 Sampling Techniques.ppt
Lecture 4 Sampling Techniques.ppt
 
sampling methods
sampling methodssampling methods
sampling methods
 
Sampling 111121003751-phpapp01
Sampling 111121003751-phpapp01Sampling 111121003751-phpapp01
Sampling 111121003751-phpapp01
 
Sampling.pptx
Sampling.pptxSampling.pptx
Sampling.pptx
 

Mais de Dalia El-Shafei

Mais de Dalia El-Shafei (20)

Occupational & Environmental Medicine (3).pdf
Occupational & Environmental Medicine (3).pdfOccupational & Environmental Medicine (3).pdf
Occupational & Environmental Medicine (3).pdf
 
Occupational & Environmental Medicine (2).pdf
Occupational & Environmental Medicine (2).pdfOccupational & Environmental Medicine (2).pdf
Occupational & Environmental Medicine (2).pdf
 
Occupational & Environmental Medicine (1).pdf
Occupational & Environmental Medicine (1).pdfOccupational & Environmental Medicine (1).pdf
Occupational & Environmental Medicine (1).pdf
 
Patient safety.pptx
Patient safety.pptxPatient safety.pptx
Patient safety.pptx
 
Radiation
RadiationRadiation
Radiation
 
How to find information on the internet
How to find information on the internetHow to find information on the internet
How to find information on the internet
 
Toxic gases
Toxic gasesToxic gases
Toxic gases
 
Occupational health
Occupational healthOccupational health
Occupational health
 
THERAPEUTIC DIET
THERAPEUTIC DIETTHERAPEUTIC DIET
THERAPEUTIC DIET
 
Malnutrition
MalnutritionMalnutrition
Malnutrition
 
Nutrition and Adequate diet
Nutrition and Adequate dietNutrition and Adequate diet
Nutrition and Adequate diet
 
Nutrition and food constituents
Nutrition and food constituentsNutrition and food constituents
Nutrition and food constituents
 
Scientific Research
Scientific ResearchScientific Research
Scientific Research
 
EBM
EBMEBM
EBM
 
Workplace Mental Health (WMH)
Workplace Mental Health (WMH) Workplace Mental Health (WMH)
Workplace Mental Health (WMH)
 
Environment air pollution
Environment air pollutionEnvironment air pollution
Environment air pollution
 
Statistic in research
Statistic in researchStatistic in research
Statistic in research
 
Behavioral science
Behavioral scienceBehavioral science
Behavioral science
 
Waste management
Waste managementWaste management
Waste management
 
Health education
Health educationHealth education
Health education
 

Último

call girls in Connaught Place DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...
call girls in Connaught Place  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...call girls in Connaught Place  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...
call girls in Connaught Place DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...saminamagar
 
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️saminamagar
 
Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.ANJALI
 
Culture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxCulture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxDr. Dheeraj Kumar
 
Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Prerana Jadhav
 
Basic principles involved in the traditional systems of medicine PDF.pdf
Basic principles involved in the traditional systems of medicine PDF.pdfBasic principles involved in the traditional systems of medicine PDF.pdf
Basic principles involved in the traditional systems of medicine PDF.pdfDivya Kanojiya
 
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...Wessex Health Partners
 
Introduction to Sports Injuries by- Dr. Anjali Rai
Introduction to Sports Injuries by- Dr. Anjali RaiIntroduction to Sports Injuries by- Dr. Anjali Rai
Introduction to Sports Injuries by- Dr. Anjali RaiGoogle
 
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptx
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptxSYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptx
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptxdrashraf369
 
POST NATAL EXERCISES AND ITS IMPACT.pptx
POST NATAL EXERCISES AND ITS IMPACT.pptxPOST NATAL EXERCISES AND ITS IMPACT.pptx
POST NATAL EXERCISES AND ITS IMPACT.pptxvirengeeta
 
Primary headache and facial pain. (2024)
Primary headache and facial pain. (2024)Primary headache and facial pain. (2024)
Primary headache and facial pain. (2024)Mohamed Rizk Khodair
 
See the 2,456 pharmacies on the National E-Pharmacy Platform
See the 2,456 pharmacies on the National E-Pharmacy PlatformSee the 2,456 pharmacies on the National E-Pharmacy Platform
See the 2,456 pharmacies on the National E-Pharmacy PlatformKweku Zurek
 
Glomerular Filtration rate and its determinants.pptx
Glomerular Filtration rate and its determinants.pptxGlomerular Filtration rate and its determinants.pptx
Glomerular Filtration rate and its determinants.pptxDr.Nusrat Tariq
 
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptx
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptxPERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptx
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptxdrashraf369
 
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfLippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfSreeja Cherukuru
 
call girls in munirka DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in munirka  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️call girls in munirka  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in munirka DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️saminamagar
 
Apiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptApiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptkedirjemalharun
 
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaur
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaurMETHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaur
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaurNavdeep Kaur
 
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic Analysis
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic AnalysisVarSeq 2.6.0: Advancing Pharmacogenomics and Genomic Analysis
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic AnalysisGolden Helix
 

Último (20)

call girls in Connaught Place DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...
call girls in Connaught Place  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...call girls in Connaught Place  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...
call girls in Connaught Place DELHI 🔝 >༒9540349809 🔝 genuine Escort Service ...
 
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in paharganj DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
 
Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.
 
Culture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxCulture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptx
 
Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.
 
Basic principles involved in the traditional systems of medicine PDF.pdf
Basic principles involved in the traditional systems of medicine PDF.pdfBasic principles involved in the traditional systems of medicine PDF.pdf
Basic principles involved in the traditional systems of medicine PDF.pdf
 
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...
Wessex Health Partners Wessex Integrated Care, Population Health, Research & ...
 
Introduction to Sports Injuries by- Dr. Anjali Rai
Introduction to Sports Injuries by- Dr. Anjali RaiIntroduction to Sports Injuries by- Dr. Anjali Rai
Introduction to Sports Injuries by- Dr. Anjali Rai
 
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptx
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptxSYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptx
SYNDESMOTIC INJURY- ANATOMICAL REPAIR.pptx
 
POST NATAL EXERCISES AND ITS IMPACT.pptx
POST NATAL EXERCISES AND ITS IMPACT.pptxPOST NATAL EXERCISES AND ITS IMPACT.pptx
POST NATAL EXERCISES AND ITS IMPACT.pptx
 
Epilepsy
EpilepsyEpilepsy
Epilepsy
 
Primary headache and facial pain. (2024)
Primary headache and facial pain. (2024)Primary headache and facial pain. (2024)
Primary headache and facial pain. (2024)
 
See the 2,456 pharmacies on the National E-Pharmacy Platform
See the 2,456 pharmacies on the National E-Pharmacy PlatformSee the 2,456 pharmacies on the National E-Pharmacy Platform
See the 2,456 pharmacies on the National E-Pharmacy Platform
 
Glomerular Filtration rate and its determinants.pptx
Glomerular Filtration rate and its determinants.pptxGlomerular Filtration rate and its determinants.pptx
Glomerular Filtration rate and its determinants.pptx
 
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptx
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptxPERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptx
PERFECT BUT PAINFUL TKR -ROLE OF SYNOVECTOMY.pptx
 
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfLippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
 
call girls in munirka DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in munirka  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️call girls in munirka  DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
call girls in munirka DELHI 🔝 >༒9540349809 🔝 genuine Escort Service 🔝✔️✔️
 
Apiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptApiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.ppt
 
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaur
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaurMETHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaur
METHODS OF ACQUIRING KNOWLEDGE IN NURSING.pptx by navdeep kaur
 
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic Analysis
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic AnalysisVarSeq 2.6.0: Advancing Pharmacogenomics and Genomic Analysis
VarSeq 2.6.0: Advancing Pharmacogenomics and Genomic Analysis
 

Dr. Dalia El-Shafei's guide to sampling methods and sample size determination

  • 1. Dr. Dalia El-Shafei Assistant professor, Community Medicine Department, Zagazig University
  • 2. Sample  Group of individuals or things selected from the entire population to be representative to this population.  Each member of the population is called the sampling unit.
  • 3.
  • 4. Epidemiological Study SampleComprehensive Study a sample selected from the population. Study the whole population.
  • 5. Sampling frame A list of all the units in the population from which a sample will be selected
  • 6.
  • 7. Sampling Non-probability Accessibility (convenience) Quota Judgmental (Purposive) Snowball sample (friend of friend) Probability Simple random Systematic random Stratified random Cluster Multi-stage random Probability sample: probability of selecting an individual is 50% “no selection bias”. Types of sample
  • 8. Probability SampleNon- probability Sample Investigator has minimal role in selection. Sample is representative (each individual has an equal chance of being in the sample). We can generalize the results. Investigator has a role in selection. Sample is not representative (not each individual has an equal chance of being in the sample). We cannot generalize the results
  • 10. Sampling Non-probability Accessibility (convenience) Quota Judgmental (Purposive) Snowball sample (friend of friend) Probability Simple random Systematic random Stratified random Cluster Multi-stage random Probability sample: probability of selecting an individual is 50% “no selection bias”. Types of sample
  • 11. Not every individual has an equal chance of being in the sample. The investigator has a role in selection. Sample is not representative We cannot generalize the results.
  • 12. Advantages • Cheap • Quick • Not require a sampling frame Disadvantages • Not a good representation of the population • Great variability between persons in sample.
  • 13. Accessibility (convenience) sample Most common of all sampling techniques. The samples are selected because they are accessible to the researcher. Subjects are chosen simply because they are easy to recruit. Easiest, cheapest & least time consuming. Used in: Mass media & pilot study.
  • 14. Quota sampling The researcher ensures equal or proportionate representation of subjects depending on which trait is considered as basis of the quota.
  • 15. For example, if basis of the quota is college year level and the researcher needs equal representation with a sample size of 100, he must select 25 1st year students, another 25 2nd year students, 25 3rd year and 25 4th year students. The bases of the quota are usually age, gender, education, race, religion and socioeconomic status.
  • 16.  Example: interview of all persons passing in a certain street at certain time.  The sample is complete when the desired number of population is reached.  This can be done in T.V. to known public opinion for the preferable programs but it is seldom used in scientific medical researchers.
  • 17. Judgmental (Purposive) sample Subjects are chosen to be part of the sample with a specific purpose in mind (previous knowledge or professional experience). The researcher believes that some subjects are fit for the research compared to other individuals.
  • 18. Snowball sample (friend of friend) It is usually done when there is a very small population size. The researcher asks the initial subject to identify another potential subject who also meets the criteria of the research. Hardly representative of the population.
  • 20. Sampling Non-probability Accessibility (convenience) Quota Judgmental (Purposive) Snowball sample (friend of friend) Probability Simple random Systematic random Stratified random Cluster Multi-stage random Probability sample: probability of selecting an individual is 50% “no selection bias”. Types of sample
  • 21. Every individual has an equal chance of being in the sample. The investigator has minimal role in selection. Sample is representative We can generalize the results.
  • 22. Simple random sample  Suitable in small population.  Not suitable in large population.  Process: • Construct “Sample frame”. • Decide “Sample size”. • Select the sampling units randomly “lottery or random table or computer”.
  • 23. For example: if we want to select 5 individuals out of 15. We need first to give number for each individual(15)(sampling frame) ,then randomly select the needed sample (5 unit) by lottery from a box containing numbers from 1 till 15. If we need 50 pupils to be our sample, we can select them randomly from school list records (our frame is the school). If the sample will be chosen from a large population (as government) framing is difficult as enlistment of the whole population living there is difficult, therefore we have to use other sampling methods.
  • 24.
  • 25. Systematic random sampling  Characteristics: - Does not require sample frame. - We can select from large population The selection depends on constant interval (k interval) Sampling interval= Total population/sample size. 1st number is selected randomly. Then add the sampling interval to the random start to select subsequent units.
  • 26. Advantages No selection bias Not require sample frame Used for large population
  • 27. Example: We need 5 persons from 15. Sampling interval = 15/5. We take every 3rd person starting from a random number selected from the first 3 numbers.
  • 28. Example: • We need to select individuals from outpatient clinic. No frame, no of total population is unknown. • We decide the sample size. • We start by a random no from (1-10). • If we start with no 7, we select every 7th person come to clinic till reach the sample size.
  • 29. Stratified random sampling  Characteristics: - Every character appears (is represented) in the sample.  Process: - Population divided into strata according to some characteristics. - From each stratum, select the units by using random method
  • 30. Example: Population is classified into 2 strata (male & female). Select the same number from male & female. If the age is different, divide the sample of each sex into age groups. Select equal number from each age group randomly.
  • 31.
  • 32. Cluster samplingProcess The area is divided into clusters One or 2 clusters are selected randomly All individuals in each cluster are included Cluster: a group of individuals present in certain locality or geographic area.
  • 33. Example: We need to select 5000 individuals live in rural areas in Sharkia Governorate. We suspect that this no. will be found in 2 villages. We select 2 villages randomly. All individuals in the 2 villages are included.
  • 34.
  • 35. Multistage sampling • Used in national or widespread study. • Selection process is arranged in stages. • From each stage, select a sample randomly.
  • 36. Example:  Select 2 from 28 governorates randomly.  Select 2 cities from each governorate (4 cities).  Select one or more district from each city.  Select the desired number of houses from each district & so on individuals.
  • 38. Sample size The number of individuals or things to be included in the study. Large sample will increase the significance of minor difference.
  • 39. Determinants of sample size Available resources. Number of variables affecting the disease. Prevalence of the disease. Effect size (the smallest effect worth detecting) or it is the difference between case & control groups. The type of the study. The cost of each sample.
  • 40. Sample size is calculated by many computer packages but you have to fill some information in these statistical programs. The needed information is specific for each type of study.