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Monitoring and Evaluation

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Title: Monitoring and Evaluation


1
Food and Nutrition Surveillance and Response in
Emergencies
  • Session 12
  • Data Collection, Analysis
  • and Interpretation

2
Introduction
  • Assessing the impact on food and nutrition and
    understanding the coping mechanisms of different
    affected groups is needed to
  • Target
  • design and
  • implement appropriate strategies
  • To protect and promote good nutrition and
    household food security throughout relief and
    rehabilitation responses.

3
Introduction
  • Population in crisis may be moving or living in
    camps, towns or villages or dispersed in the
    rural environment
  • Design of the assessment depends mainly on the
    practical crisis conditions

4
Typical survey designs include
  • Longitudinal survey data is collected for the
    same population over a long period of time.
    Longitudinal studies are useful in establishing
    trends over a long period of time
  • Cross-sectional surveys This is one of the
    commonly used survey designs that looks into
    population issues at a given point in time.
  • In emergency Cross-sectional surveys mainly
    used.

5
Survey Planning
6
Survey Planning
  • Collect the following information, if available,
    before the rapid assessment
  • Previous nutrition surveys
  • Demographic information
  • Mortality and morbidity
  • Socio-economic situation
  • Administrative structure

7
Survey Planning
  • CHECKLIST FOR PLANNING SURVEY
  • Which population is to be assessed
  • What is the smallest unit to be assessed (camp,
    village, district)
  • Which sampling methods will be used (systematic,
    cluster)
  • Which age group
  • Which indicators will be used (Weight for Height,
    oedema)
  • What personnel, equipment, transport, number of
    teams and resources will be needed
  • How many clusters/children per day per team

8
Sampling methods in Emergency
  • Simple Random Sampling
  • Systematic Random Sampling
  • Cluster Sampling

9
Simple Random Sampling
  • The survey subjects are chosen at random from a
    list of all those eligible in the sampling
    population.
  • This is the ideal procedure but not practicable
    in emergency situation

10
Systematic Random Sampling
  • Survey subjects are selected systematically e.g.
    every 10th child from a list of all households.
    If the average number of preschool children is
    known, a sample of every 10th house or tent may
    be taken systematically and all eligible children
    examined
  • Sample size for systematic random sampling is
    450 children

11
Systematic Random Sampling
  • Recommended where
  • the population is concentrated in an organised or
    structured urban setting or in refugee camp.
  • The total number of households is less than 10,000

12
Systematic Random Sampling
  • Information required for this sampling method
  • Total number of households.
  • Total population
  • Average number of children 6 months to 5 years
    age (100 cm) bracket per household
  • In camps and permanent settlements, the sampling
    unit household or dwelling (tent)

13
Systematic Random Sampling
  • Calculation of the number of households to
    obtain the required number of eligible children
  • No. of Households 450/ (A x P)
  • where A Average household size
  • P Proportion of children right
    age/height

14
Systematic Random Sampling
  • No. of Households to be visited
  • Example If average hh size is 6 persons and
    the percentage of children under 5 years is 15
    (0.15)
  • 450 / ( 6 x 0.15) 500 households

15
Systematic Random Sampling
  • No. of Households to be visited
  • Example If the sampling area consists of 9000
    household the sampling interval is
  • 9000/ 500 18.
  • Visit every 18th household

16
Cluster Sampling
  • Sampling method used for large populations and
    populations spread over large area for which
    estimates of the number of people are available.
  • It may also be useful in large or newly
    established camps where numbers and ages of
    people are not fully known
  • The sample size needed to obtain the same
    precision is about twice that of the systematic
    random sample 900 children

17
Cluster Sampling
  • To obtain 900 children, the sample size for
    cluster sampling is 30 clusters of 30 children.
  • The sampling method is referred to as
  • 30 by 30 cluster method
  • For reliability of results, it is important to
    examine not less than 30 clusters and not less
    than a total of 900 children.

18
Cluster Sampling
  • Sampling procedure
  • Map out area of study following existing
    geographic or administrative boundaries
  • Obtain best available census data for each
    division/location
  • Prepare a list with three columns Column 1 Name
    of each geographic unit ( e.g. District,
    Division, Location.

19
Cluster Sampling
  • Column 2 Population of each unit,
  • Column 3 cumulative population of the units.
  • Each unit should have at least 300 inhabitants
  • Draw a systematic sample of 30 clusters from the
    list and their population estimates

20
Cluster Sampling
  • Obtain sampling interval by dividing the total
    population by number of clusters-usually 30
  • Example Suppose there is a total of 183
    sections, the sampling interval 183/306.1
  • Every 6th section/unit is then drawn randomly
    until 30 survey sections the clusters - are
    selected
  • The 30 children are obtained from these 30
    clusters

21
Design of Survey Tools
  • Main Indicator
  • Weight for height is recommended as the main
    indicator of malnutrition by most guidelines
  • Independent of age
  • Has internationally accepted reference population
  • Interpretation based on wide experiences from
    many parts of the world.

22
Design of Survey Tools
  • Questionnaire Design Consideration
  • Surveys are two communication
  • AUDIENCE PURPOSEDESIGN
  • Respondents prefer shorter surveys
  • Keep questions clear and concise
  • Contents should not be controversial or sensitive

23
Rapid Assessment
  • Mainly carried out on adhoc bases.
  • Useful when
  • When nutrition information are fast needed
  • When resources of carrying out Nutrition survey
    are limited.
  • MUAC is usually used
  • Additional methods include FGD, Key informant
    interview, observation (transect walks), seasonal
    calendars and Case study.

24
Type of information in RA
  • MUAC measurements adults (women), lt5yr
  • Food availability and accessibility
  • Water sources
  • Common diseases- how are recent trends
  • Access to health services/ other interventions
  • Livestock and population movement- destinations/
    origin of emigrants
  • Type of food consumed/freq. of feeding
  • Security situation

25
What is Data analysis?
  • The way information and results are interpreted
    and assessed
  • Assigning meaning to figures, stories,
    observations, etc that have been gathered and
    recorded.
  • Conceptual frameworks (i.e., UNICEF) guide data
    analysis.
  • Data analysis possible by hand or computer
    (various packages, e.g., EPINFO EPINUT SPSS
    etc.)

26
Handling data before analysis
  • Clearly identify source (by name or code)
  • Keep track of those who have not responded and
    follow up
  • Indicate the date and file data securely
  • Review responses for completeness
  • Translate into code (if necessary) or summarise
    using key words
  • Decide on how to record missing data
  • Transfer data to blank copies of the original
    monitoring sheet or a spreadsheet programme in
    preparation for analysis.

27
Types of Data
  • Numerical values for which a numeric magnitude
    has meaning
  • discreet
  • Restricted to certain values that differ in fixed
    amounts. No intermediate values are possible,
    i.e., number of times a woman has given birth or
    number of beds available in a hospital
  • Continuous
  • Not restricted to whole number values, i.e.,
    height, weight
  • Non-numerical values for which magnitude has no
    meaning.
  • Nominal/categorical class
  • Values are arbitrary codes with no inherent
    meaning. The order and magnitude are
    unimportant, i.e., sex (1male, 2female)
  • Ordinal
  • Values have inherent meaning based on order but
    not magnitude, i.e., ratings of quality (1high,
    2low or 2high, 1low)

28
Steps in data analysis and interpretation
  • Review the questions that generated the
    information.
  • Why was the particular information necessary?
    What kind of decisions are to be made based on
    this information?
  • Collate the relevant data
  • Baseline info and previous surveys or assessments
    undertaken
  • Background info e.g. morbidity data, food
    security info, health facilities data, ongoing
    interventions, security situation.
  • Sort information into parts that belong together.

29
Steps in data analysis and interpretation
continued
  • Data preparation and cleaning
  • Before starting the analysis, the data needs to
    be prepared and cleaned. Issues to look out for
    include-
  • Missing data
  • Data out of the required range.
  • Extreme (biologically unlikely) weight for height
    data outliers
  • Analyze qualitative data
  • Analyze quantitative data
  • Integrate the information

30
Analysing Qualitative Data
  • Describe the phenomena
  • transcribe all interviews/observations
  • thorough and comprehensive (thick description),
    i.e., information about the context of an act,
    the intentions of the actor and the process in
    which action is embedded.
  • describe the sample population,
  • who were the key informants, what made them
    qualify as such? Who took part in the FGDs? How
    representative were the participants of the
    groups they represented? Under what circumstances
    were observations carried out? Who was observed
    (and who was not)?
  • Classification of the data
  • look for and code key words and phrases that are
    similar in meaning
  • categorize issues by topics
  • Identify and group (categorise) pieces of data
    together, i.e., separate similar or related data

31
Analysing Qualitative Data continued ...
  • Interconnect the concepts
  • compare responses from different groups
  • determine patterns and trends in the responses
    from different groups or individual respondents
  • make summary statements of the patterns or trends
    and responses
  • cite key quotations, statements and phrases from
    respondents to give added meaning to the text.
  • re-check with key informants to verify the
    responses and the generalization of the findings.
  • Display summaries of data in such a way that
    interpretation becomes easy,
  • list the data that belong together may be
    followed by further summarization graphically in
    some chart (i.e., a matrix most common form of
    graphic display of qualitative data) or a figure
    (i.e., diagram, flow chart). These help
    visualize possible relationships between certain
    variables.

32
Analysing Qualitative Data continued ...
  • draw conclusions, and (remember)
  • collection, processing, analysis and reporting of
    qualitative data are closely intertwined, and not
    (as is the case with quantitative data) distinct
    successive steps. One searches for evidence,
    purposively looks for associations during the
    fieldwork by intertwining data collection and
    analysis, verifies findings by looking for
    independent supporting evidence.
  • develop strategies for testing or confirming
    findings to prove their validity.
  • Check for representativeness of data (since
    informants are selected systematically
    according to previously established rules) ---
    are all categories of informants been
    interviewed? Cross-check data with evidence from
    other, independent sources (informants, informant
    categories or different research techniques)

33
Analysing quantitative data
  • First thing to do to analyse quantitative data is
    convert raw data into useful summaries
  • Descriptive measures
  • Proportions, frequencies and ratios
  • Measures of central tendency
  • Mean/average, median, mode
  • Measures of dispersion
  • Range, standard deviation, percentiles.

34
Measures of Central Tendency
  • A fundamental task in many statistical analyses
    is to estimate a location parameter for the
    distribution i.e., to find a typical or central
    value that best describes the data.
  • Interval estimates
  • Parameter estimated from a sample data (point
    estimate or sample estimate) as opposed to
    population (true value) parameter.
  • Mean the true mean is the sum of all the
    members of the given population divided by the
    number of members in the population. Impractical
    to measure every member ? a random sample is
    drawn ? gives the point estimate of the
    population mean.
  • Interval estimate expand on point estimates by
    incorporating the uncertainty of the point
    estimate.
  • For example, different samples from the same
    population will generate different values for the
    sample mean.
  • An interval estimate quantifies this uncertainty
    in the sample estimate by computing lower and
    upper values of an interval which will, with a
    given level of confidence (i.e., probability)
    contain the population parameter.

35
Measures of central tendency continued
  • Why different measures
  • Normal distribution
  • Symmetric distribution single peak,
    well-behaved tails
  • (estimates for mean, median mode similar) - use
    mean as the locator estimate.
  • Exponential distribution
  • Skewed distribution mean median not the same
    mean pulled to one side (direction of
    skewness).
  • ?Use all three central measures.
  • Cauchy distribution
  • Symmetric distribution single peak with heavy
    tails
  • extreme values in the tails distort the mean -
    use median as the locator estimate.

36
Quantitative techniques continued
  • Hypothesis test
  • Also addresses the uncertainty of the sample
    estimate. However, instead of providing an
    interval, a hypothesis test attempts to refute a
    specific claim about a population parameter based
    on the sample data.
  • To reject a hypothesis is to conclude that it is
    false.
  • To accept a hypothesis does not mean that it is
    true, only that we not have evidence to believe
    otherwise.
  • Hypothesis tests are usually stated in terms of
    both a condition that is doubted (null
    hypothesis) and a condition that is believed
    (alternative hypothesis).

37
Quantitative techniques continued
  • Common format for a hypothesis test
  • H0 a statement of the null hypothesis, e.g., two
    population
  • means are equal.
  • Ha a statement of the alternative hypothesis,
    e.g., two population
  • means are not equal.
  • Test statistic the test statistic is based on
    the specific hypothesis test.
  • Significance level the significance level, a,
    defines the sensitivity of the test (i.e., 0.1,
    0.05, 0.001) and denotes that we inadvertently
    reject the null hypothesis by that percentage
    (i.e., 10,5 or 1) of the time when it is in fact
    true. The probability of rejecting the null
    hypothesis when it is in fact false is called the
    power of the test and is denoted by 1-ß. Its
    compliment, the probability of accepting the null
    hypothesis when the alternative hypothesis is, in
    fact, true is called ß, and can only be computed
    for a specific alternative hypothesis.

38
Quantitative techniques continued
  • Two-sample t-test for Equal Means
  • Used to determine if two population means are
    equal, i.e., tests if a new process or treatment
    is superior to a current process or treatment.
  • Data may either be paired or not paired.
  • One-factor ANOVA
  • One factor analysis of variance is a special case
    of ANOVA for one factor of interest and a
    generalization of the two-sample t-test.
  • Multi-factor ANOVA
  • Used to detect significant factors in a
    multi-factor model. A response (dependent)
    variable and one or more factor (independent)
    variables as is the case in designed experiments
    where the experimenter sets the values for each
    of the factor variables and then measures the
    response variable.

39
Data interpretation
  • Summaries of data ? interpretation of results.
  • What tools are used for interpretation?
  • Logic
  • Knowledge of the programme
  • Experience.
  • Ascription
  • Pre- and post-measures of change.
  • After-the-fact statements of change
  • Explicit statements of cause/motivation of change
  • Evidence ruling out plausible alternative
    explanation for the change
  • Independence evidence attesting to the programs
    likelihood of effecting change.

40
Data interpretation continued
  • Assessment
  • Comparison with past project performance
  • Comparison with accepted target levels
  • Comparison with other programmes or general norms
  • Comparison with constituents needs
  • With some standards, cost-benefit comparison

41
Data interpretation continued
  • Description of the sample
  • Describe the study population by producing tables
    showing the distribution of important variables
    e.g. sex, age, sex by age, morbidity, nutritional
    status, nutritional status and age, nutritional
    status and sex, nutritional status and morbidity,
    etc.
  • Establish the links and association among the
    various variables and the nutritional status
  • Statistical analysis could be used to determine
    links or associations between various
    quantitative data.
  • Further links between qualitative data and the
    resulting nutritional status could be established
    guided by the conceptual framework.

42
Data interpretation continued
  • Variables to look into in establishing
    associations/links-
  • Socio-economic and political environment
  • Food security situation (food availability and
    access)
  • Health and sanitation
  • Care practices for mothers and children
  • Food consumption
  • Food utilization by the body
  • Mortality

43
Data interpretation continued
  • Identify areas requiring interventions
  • Are the interventions that contribute positively
    to nutritional status available and accessible to
    all or sustainable?
  • Identify factors contributing negatively to
    nutritional status. Have these been sufficiently
    addressed?
  • Compare the current, nutrition situation and the
    previous rates. Is it acceptable, poor, serious
    or critical (WHO classification)?
  • Prepare study findings or results
  • Prepare study results highlighting the key
    findings
  • Discuss study findings with study population and
    partners
  • Provides an opportunity for further comprehensive
    discussion and analysis of the results especially
    with the study population.

44
Cut off points for indicators of Malnutrition
Indicator Weight for Height of the Median Weight for Height Z Score (SD) MUAC
Severe Acute Malnutrition lt70 or oedema lt-3 Z scores or oedema lt11 cm or oedema
Moderate Acute Malnutrition 70 and lt80 -3 Z-scores and lt-2 Z-scores 11 cm and lt12.5 cm
Global / Total Acute malnutrition. lt80 or oedema lt-2 Z scores or oedema lt12.5 cm or oedema
Normal 80 -2 Z-scores 13.5 cm
At risk 12.5 cm and lt13.5 cm
45
median and Z scores
  • Percentage of Median the ratio of a childs
    weight to the median weight of a child of the
    same height in the reference data, expressed as a
    percentage, e.g., if the median weight of the
    reference data for a particular height is 10kgs
    then to say that the child is 80 weight for
    height means that the child is 8kgs.
  • WFH Percent median Individual weight x 100
  • Median reference weight
  • Z-scores by describing how far in units (units
    called SDs) a childs weight is from the median
    weight of a child at the same height in the
    reference data. The distance is called a
    Z-score. It is expressed in multiples of the
    standard deviation and is derived as follows
  • WFH Z-score Observed weight median weight
  • Standard Deviation

46
WHO Classification of Global Acute Malnutrition
Using Z- Scores
Global /Total Acute malnutrition WFH Z Scores Interpretation
lt5 Acceptable level
5 9.9 Poor
10 14.9 Serious
gt15 Critical
47
Quality control measures
  • Thorough training of staff plus pre-testing of
    tools (interpretation of the questionnaires, if
    necessary)
  • Standardization tests- Intra-personal/
    interpersonal errors
  • Close monitoring of the field work by qualified
    persons
  • Cross-checking of the field questionnaires for
    anomaly daily
  • Daily review of enumerator experiences and
    problems
  • Progress review per plan and by checklist
  • Data cleaning collection, entry,
  • Integrity of equipments maintain accuracy using
    known weights
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