Title: Research Methods: Design, Data Analysis, And Presentation
1Research Methods Design, Data Analysis, And
Presentation
- Chapter 1.
- H. Singh, Ph.D.
- NTRS 511
2Why research?
- Backbone of nutrition and dietetics or any
subject - To observe association
- To test hypothesis
- To compare programs
- Strong research means strong profession
- Practice related research is important
3Classification Descriptive and Analytical
- Descriptive
- include qualitative, case reports, case series
and survey research. - Useful in generating hypothesis regarding the
determinant of condition or disease - Can establish - associations among factors
4Analytical
- Include clinical and observational research
- Cohort or follow up studies
- Case-control studies
- Designed to test hypotheses to determine cause
and effect relationship by intervention by
researcher
5The research question
- The research process is a problem-solving,
decision making procedure involving a series of
interrelated decision - Researcher should focus on one decision at a time
- Research question should expand current knowledge
and practice of profession - Select issue important to your profession
6What can be answered?
- How can improve health
- To increase effectiveness of services and
products - Untested concepts in published literature
- Researcher should
- Break the problem in to its components parts and
select a component feasible for study - Start with a simple problem and generate data
new questions will develop
7Prepare for the project
- Review literature
- Both on computer and library
- Critical reviews indicate shortcomings and new
areas of possible research - Contact and talk to experts
- Assess available resources
- patient population,
- lab and library facility databases, computer,
personnel, - collaborations and funds needed
8State clearly the question
- Concise, simple and straightforward it is
easy to design the experiment - Who is studied?
- Patient, food items. . .
- What is studied?
- Iron intake, labor cost. . .
- How it will be assessed?
- Alteration in food selection, labor cost per
patient - Know your variables
- Dependent variables is effected
- Serum cholesterol
- Independent variable is changed
- Fiber intake
9Research design
- Cross-sectional study data collected at single
point of time - Longitudinal collected more that one point of
time - Prospective study effect of fiber on CVD with
time - Retrospective study goes back in time to find
relationship
10Prepare research protocol
- Include
- The research question
- Literature review
- Importance and potential value of research
- The research design
- Who, what and how assessed
- Methods
- Data analysis
- Appropriate statistical analysis
11Research protocol( contd.)
- For funding use NIH guidelines
- Title page
- Abstract of research plan
- Table of content
- Research Plan ( expanded in next slide)
- biographical sketch
- Other personnel
- Existing and pending resources
- Available resources
- environment
12Research Plan
- First
- Specific aims and objectives
- Second
- significance of research and review of
literature - Third
- Published and unpublished preliminary studies by
author - Fourth
- Research design and methods
- Fifth
- Human subject approval procedure (IRB)
- Sixth
- Justification for animal used
- Seventh
- Consultants approvals
- Eighth
- Literature cited
- http//era.nih.gov/ElectronicReceipt/
- http//grants.nih.gov/grants/guide/index.html
- http//grants.nih.gov/grants/funding/424/index.htm
13Conduct a pilot study
- Strongly advised
- Provides experience
- Refinements
- Redrafting of proposal
- Unknowns come up
- Collect and process data
14Assure ethics in research
- Informed consent
- Voluntary participation
- Anonymity
- Confidentiality
- Risk of harm
15Qualitative research
- Explore the phenomenon of interest by
- Observations
- Interviews
- Structured or less structured
- Group together focus group
- Questionnaires
- Delphi technique
- answer separately --- circulated ----questioned
again 2 -3 times till consensus is reached - Good for planning, solving a problem and
forecasting
16Case Series
- Is a report of observations on more than one
subject - The purpose of this design to describe
quantitatively the experience of a series of
cases with a disease - Can lead to
- Hypothesis for future studies
- Evidence for association between disease and
condition - Identifying the variables
17Case Series contd.
- Steps. . . .
- Institutional approval and confidentiality
- Features and Subject Selection
- Patients with gastric cancer referred in last six
months - The results from this study cannot be generalized
- Data collection
- Existing record
- Concurrent data
18Case Series contd.
- Statistical analysis
- Means, medians, standard deviation, ranges and
frequencies are appropriate - Inference can not be made
- Sample is not representative of all of large
population
19Survey
- Design to describe and quantify characteristics
of a defined population - Lacks a specific hypothesis
- May suspect a relationship
- Provide statistical profile of the population
- Uses -
- Establishing association among variable
- Provide clue for further study
- baseline data
- Planning health services
- E.g. cold vs hot tray
20Features
- Sample is selected based on probability design
- subjects are questioned and screened
- Target population should be defined
- More the number of samples more representative
the results are.
21Survey contd.
- Data collection
- Using interviews or surveys
- Most difficult part is designing questionnaire
- Length, format also effect
- Do a pilot study
- Correct and improve according to the objective
- Interviewer must be well trained
22Survey contd.
- Validity and Accuracy
- Validity the instrument is measuring what it is
suppose to - Quantitative measure of validity is accuracy
- Reliability and Precision
- Reliability is consistency or repeatability
- Quantitative measure of reliability is precision
A
P
23Sensitivity and specificity
- Part of Diagnostic test
- Sensitivity refers to how good a test is at
correctly identifying people who have the
disease. - e.g. Less than 6n mol folate - who are actually
deficient is sensitivity - Specificity, on the other hand, is concerned with
how good the test is at correctly identifying
people who are well - Proportion of non afflicted individual who test
negative is specificity - if we increase sensitivity we loose specificity
- http//bmj.bmjjournals.com/cgi/content/full/327/74
17/716
24Statistical Analysis and Interpretation
- Means
- Medians
- Standard deviation and frequency
- Scatter diagram to show correlations
- If data is skewed use Histograms
- limitation
- Low response rate affects the confidence in the
study - Measurements are not taken at the same point of
time - (risk and prognostic factors should be
distinguishable)
25Ex post Facto Analysis (after the fact)
- Should be used with caution since there was no
control on the design and variables - Must be exploratory and no causal relationship
should be developed - e.g. Bone density and food consumption in women
26Experimental Design
- Gold standard of analytic research all factors
are held constant - To establish causal relationship
- Important consideration during analytic study
are - Ethical guidelines to protect rights, privacy and
welfare of individuals NIH has detailed
guidelines on this - Institutional review board (IRB) is another
agency to educate investigators
27Randomized clinical trial
- Most common design
- Used to prove the feasibility and safety of a
treatment - To compare the efficacy of two or more treatments
- Features
- Subjects are informed
- Assigned to groups
- With randomness
- Observe the outcome
28Selecting the subjects
- If the study group is not representative results
cannot be generalized - Select subject relatively homogeneous
- Compliance should be enhanced by incentives
- Pre-study of collecting urine every 24 hours
- Setting for the study should be natural
29Choice of Intervention or treatment
- The more the treatment of intervention group
differs from the comparison group the better the
results - Equivalent treatment or placebo should be given
- Blind study- subject are unaware of treatment
assigned - Blinding should be maintained
- If subject and investigator are unaware of the
treatment it is double blind
30Assignment to treatment groups
- Random method is essential
- Age and gender is important
- If the sample size is less than 200, chances of
imbalance is there - Crossover design
- Require fewer subjects. Same subject is used to
check the effect of treatment is not long lasting
and the condition is chronic subjects are
referred to two kind of treatments - Shortcoming of this method is that subject may
carry over effects of treatment to next cycle.
31Size of Sample
- Choose the main endpoint and its method of
measurement - Choose the statistical test
- Specify the magnitude of difference smaller
difference require bigger sample (sensitivity) - From published results look for variability or
best guess - Specify chance of being wrong
- N(zs2)/E where z critical value of confidence
interval standard deviation and E is plus or
minus error allowed
32End point and data collection
- End point of a study is the variable by which
the treatments are compared - Real end point may be difficult to record
- Surrogate end point is observed
- Hard (objective) and soft (subjective) end points
- cholesterol vs degree of head ache
- Variables of subjects should be recorded
33Statistical Analysis and Interpretation
- Non-compliance and loss of subjects is main
problem - Report side effects
34Factorial DesignIf there are more than one
variables
- Check job performance after 3 months
Factor A
Factor B
Bp bonus points B - monetary bonus
35Partially controlled or quasi experimental design
- Cohort study
- Follow-up studies are observational
- Cohort is a group of patients followed over time
to observe the effects of treatments - Group is exposed to a potential risk factor and
followed for detection of disease - Time of exposure to disease should be short
- A large group is required
36Cohort contd.
- Subjects should be free of disease at start
- Samples size
- low frequency of disease need a large number
- End point should be unambiguous
- Statistical analysis descriptive type
- Shortcoming relationship is not causal - only
exposure was observed other factors may effect
37Case control study
- Observational design to investigate hypothesis of
causal relationship - Retrospective
- No intervention - So not experimental
- Individual cases or comparison is studied
- Exposure status is determined after disease status
38Statistical Analysis and Presentation of results
- Descriptive
- Inferential
- Probability tells whether these results are due
to chance rather than due to experimental
variable - Frequency histograms
- Mean and standard deviation when symmetrical
- Median and percentile range when unsymmetrical
39Stat.
- Inferential
- Comparing expected and observed results
- Expected is null hypothesis
- There is no association between factors
- Mean and variance are compared
- Parametric test assume normal distribution and
similar variability within the group - Non-parametric test for interval and category
type data but are less significant statistically
40Significance test
- Two sided - more common
- on either side of mean
- Standard deviation
- is descriptive
- Describe the spread
- Standard error is
- Is inferential
- Describe the variation relative to sample size
41Confidence interval
- Degrees of freedom
- P value
- Statistics give us
- Estimate of the quantity mean difference
- Probability that this is due to chance
- Parameters are represented with values to lie
with in a range of values confidence interval - Calculated from estimated and its standard error
42Repeated and Replicated measurements
- Repeat at several point of time
- T-test to measure the difference among the means
- Replicated at the same time from the single
subject - Analysis of variance can be used to evaluate the
variability it need same number of measurements
43Stat
- Multiple significance test
- If multiple tests are done on many subgroups or
many variables - T-test
- LSD values (least square difference)
- Outliers
- Not consistent with normal data
- Missing values
- Must not ignored
- Discuss how it could effect your results
44Regression and Correlations
- Relationship between the variables is often
expressed by mathematical model - Correlation coefficient indicate strength of
relationship - Probability and Variance also need to be
mentioned
45Other
- Multivariate analysis
- Meta- analysis
- Now
- Conclusion are made keeping in mind limitations
and assumptions made. - The new questions arisen are explored and further
studies are recommended - Negative studies also important
46Some points
- This class is about steps involved and tolls
required to do research and not to finalize a
proposal - because all areas of research are
different and need expert to guide - You can take help from you supervisor to select a
topic - It is not your thesis but a proposal your
research will not be done in this class
47Some points
- Read Read Read -- is the key to find a topic,
refine the topic and write the proposal, So Read
read read read ----- - Discuss, Discuss and Discuss with peers and your
superviser - Write your plan - Planning ahead is super
important