This document provides an overview of basic statistical analyses that are commonly used for research projects, including descriptive and inferential statistics. Descriptive statistics like frequencies, percentages, means and standard deviations are used to summarize single variables. Inferential statistics like correlation, t-tests, chi-square, and logistic regression are used to determine relationships between variables and make inferences about populations. The document outlines when each statistical test is appropriate, how to interpret results, and how to report findings for common analyses like correlation, t-tests, chi-square, and logistic regression.
Study of the distribution and determinants of
health-related states or events in specified populations and the application of this study to control health problems.
John M. Last, Dictionary of Epidemiology
Need a nonplagiarised paper and a form completed by 1006015 before.docxlea6nklmattu
Need a nonplagiarised paper and a form completed by 10/06/015 before 7:00pm. I have attached the documents along the rubics that must be followed.
Coyne and Messina Articles, Part 2 Statistical Assessment
Details:
1) Write a paper of 1,000-1,250 words regarding the statistical significance of outcomes as presented in Messina's, et al. article "The Relationship between Patient Satisfaction and Inpatient Admissions Across Teaching and Nonteaching Hospitals."
2) Assess the appropriateness of the statistics used by referring to the chart presented in the Module 4 lecture and the resource "Statistical Assessment."
3) Discuss the value of statistical significance vs. pragmatic usefulness.
4) Prepare this assignment according to the APA guidelines found in the APA Style Guide located in the Student Success Center. An abstract is not required.
5) This assignment uses a grading rubric. Instructors will be using the rubric to grade the assignment; therefore, students should review the rubric prior to beginning the assignment to become familiar with the assignment criteria and expectations for successful completion of the assignment.
Statistics: What you Need to Know
Introduction
Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things:
·
The research question itself
·
The sample size
·
The type of data you have collected
·
The type of statistic called for by the design
All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies.
Types of Statistics
There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set.
Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generaliza.
Basics for beginners in statistics
Statistics is a branch of science that deals with the study of collection, compilation, analysis, interpretation and presentation of data.
Statistics What you Need to KnowIntroductionOften, when peop.docxdessiechisomjj4
Statistics: What you Need to Know
Introduction
Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things:
The research question itself
The sample size
The type of data you have collected
The type of statistic called for by the design
All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies.
Types of Statistics
There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set.
Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generalizations, and possibilities regarding the relationship between the independent variable and the dependent variable to indicate how those inferences answer the research question. Researchers can make predictions and estimations about how the results will fit the overall population. Statistics can also be described in terms of the types of data they can analyze. Non-parametric statistics can be used with nominal or ordinal data, while parametric statistics can be used with interval and ratio data types.
Types of Data
There are four types of data that a researcher may collect.
Nominal Data Sets
The Nominal data set includes simple classifications of data into categories which are all of equal weight and value. Examples of categories that are equal to each other include gender (male, female), state of birth (Arizona, Wyoming, etc.), membership in a group (yes, no). Each of these categories is equivalent to the other, without value judgments.
Ordinal Data Sets
Ordinal data sets also have data classified into categories, but these categories have some form or order or ranking attached, often of some sort of value / val.
P-values the gold measure of statistical validity are not as reliable as many...David Pratap
This is an article that appeared in the NATURE as News Feature dated 12-February-2014. This article was presented in the journal club at Oman Medical College , Bowshar Campus on December, 17, 2015. This article was presented by Pratap David , Biostatistics Lecturer.
The Roman Empire A Historical Colossus.pdfkaushalkr1407
The Roman Empire, a vast and enduring power, stands as one of history's most remarkable civilizations, leaving an indelible imprint on the world. It emerged from the Roman Republic, transitioning into an imperial powerhouse under the leadership of Augustus Caesar in 27 BCE. This transformation marked the beginning of an era defined by unprecedented territorial expansion, architectural marvels, and profound cultural influence.
The empire's roots lie in the city of Rome, founded, according to legend, by Romulus in 753 BCE. Over centuries, Rome evolved from a small settlement to a formidable republic, characterized by a complex political system with elected officials and checks on power. However, internal strife, class conflicts, and military ambitions paved the way for the end of the Republic. Julius Caesar’s dictatorship and subsequent assassination in 44 BCE created a power vacuum, leading to a civil war. Octavian, later Augustus, emerged victorious, heralding the Roman Empire’s birth.
Under Augustus, the empire experienced the Pax Romana, a 200-year period of relative peace and stability. Augustus reformed the military, established efficient administrative systems, and initiated grand construction projects. The empire's borders expanded, encompassing territories from Britain to Egypt and from Spain to the Euphrates. Roman legions, renowned for their discipline and engineering prowess, secured and maintained these vast territories, building roads, fortifications, and cities that facilitated control and integration.
The Roman Empire’s society was hierarchical, with a rigid class system. At the top were the patricians, wealthy elites who held significant political power. Below them were the plebeians, free citizens with limited political influence, and the vast numbers of slaves who formed the backbone of the economy. The family unit was central, governed by the paterfamilias, the male head who held absolute authority.
Culturally, the Romans were eclectic, absorbing and adapting elements from the civilizations they encountered, particularly the Greeks. Roman art, literature, and philosophy reflected this synthesis, creating a rich cultural tapestry. Latin, the Roman language, became the lingua franca of the Western world, influencing numerous modern languages.
Roman architecture and engineering achievements were monumental. They perfected the arch, vault, and dome, constructing enduring structures like the Colosseum, Pantheon, and aqueducts. These engineering marvels not only showcased Roman ingenuity but also served practical purposes, from public entertainment to water supply.
How to Make a Field invisible in Odoo 17Celine George
It is possible to hide or invisible some fields in odoo. Commonly using “invisible” attribute in the field definition to invisible the fields. This slide will show how to make a field invisible in odoo 17.
Study of the distribution and determinants of
health-related states or events in specified populations and the application of this study to control health problems.
John M. Last, Dictionary of Epidemiology
Need a nonplagiarised paper and a form completed by 1006015 before.docxlea6nklmattu
Need a nonplagiarised paper and a form completed by 10/06/015 before 7:00pm. I have attached the documents along the rubics that must be followed.
Coyne and Messina Articles, Part 2 Statistical Assessment
Details:
1) Write a paper of 1,000-1,250 words regarding the statistical significance of outcomes as presented in Messina's, et al. article "The Relationship between Patient Satisfaction and Inpatient Admissions Across Teaching and Nonteaching Hospitals."
2) Assess the appropriateness of the statistics used by referring to the chart presented in the Module 4 lecture and the resource "Statistical Assessment."
3) Discuss the value of statistical significance vs. pragmatic usefulness.
4) Prepare this assignment according to the APA guidelines found in the APA Style Guide located in the Student Success Center. An abstract is not required.
5) This assignment uses a grading rubric. Instructors will be using the rubric to grade the assignment; therefore, students should review the rubric prior to beginning the assignment to become familiar with the assignment criteria and expectations for successful completion of the assignment.
Statistics: What you Need to Know
Introduction
Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things:
·
The research question itself
·
The sample size
·
The type of data you have collected
·
The type of statistic called for by the design
All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies.
Types of Statistics
There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set.
Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generaliza.
Basics for beginners in statistics
Statistics is a branch of science that deals with the study of collection, compilation, analysis, interpretation and presentation of data.
Statistics What you Need to KnowIntroductionOften, when peop.docxdessiechisomjj4
Statistics: What you Need to Know
Introduction
Often, when people begin a statistics course, they worry about doing advanced mathematics or their math phobias kick in. Understanding that statistics as addressed in this course is not a math course at all is important. The only math you will do is addition, subtraction, multiplication, and division. In these days of computer capability, you generally don't even have to do that much, since Excel is set up to do basic statistics for you. The key elements for the student in this course is to understand the various types of statistics, what their requirements are, what they do, and how you can use and interpret the results. Referring back to the basic components of a valid research study, which statistic a researcher uses depends on several things:
The research question itself
The sample size
The type of data you have collected
The type of statistic called for by the design
All quantitative studies require a data set. Qualitative studies may use a data set or may use observations with no numerical data at all. For the purposes of the next modules, our focus will be on quantitative studies.
Types of Statistics
There are several types of statistics available to the researcher. Descriptive statistics provide a basic description of the data set. This includes the measures of central tendency: means, medians, and modes, and the measures of dispersion, including variances and standard deviations. Descriptive statistics also include the sample size, or "N", and the frequency with which each data point occurs in the data set.
Inferential statistics allow the researcher to make predictions, estimations, and generalizations about the data set, the sample, and the population from which the sample was drawn. They allow you to draw inferences, generalizations, and possibilities regarding the relationship between the independent variable and the dependent variable to indicate how those inferences answer the research question. Researchers can make predictions and estimations about how the results will fit the overall population. Statistics can also be described in terms of the types of data they can analyze. Non-parametric statistics can be used with nominal or ordinal data, while parametric statistics can be used with interval and ratio data types.
Types of Data
There are four types of data that a researcher may collect.
Nominal Data Sets
The Nominal data set includes simple classifications of data into categories which are all of equal weight and value. Examples of categories that are equal to each other include gender (male, female), state of birth (Arizona, Wyoming, etc.), membership in a group (yes, no). Each of these categories is equivalent to the other, without value judgments.
Ordinal Data Sets
Ordinal data sets also have data classified into categories, but these categories have some form or order or ranking attached, often of some sort of value / val.
P-values the gold measure of statistical validity are not as reliable as many...David Pratap
This is an article that appeared in the NATURE as News Feature dated 12-February-2014. This article was presented in the journal club at Oman Medical College , Bowshar Campus on December, 17, 2015. This article was presented by Pratap David , Biostatistics Lecturer.
The Roman Empire A Historical Colossus.pdfkaushalkr1407
The Roman Empire, a vast and enduring power, stands as one of history's most remarkable civilizations, leaving an indelible imprint on the world. It emerged from the Roman Republic, transitioning into an imperial powerhouse under the leadership of Augustus Caesar in 27 BCE. This transformation marked the beginning of an era defined by unprecedented territorial expansion, architectural marvels, and profound cultural influence.
The empire's roots lie in the city of Rome, founded, according to legend, by Romulus in 753 BCE. Over centuries, Rome evolved from a small settlement to a formidable republic, characterized by a complex political system with elected officials and checks on power. However, internal strife, class conflicts, and military ambitions paved the way for the end of the Republic. Julius Caesar’s dictatorship and subsequent assassination in 44 BCE created a power vacuum, leading to a civil war. Octavian, later Augustus, emerged victorious, heralding the Roman Empire’s birth.
Under Augustus, the empire experienced the Pax Romana, a 200-year period of relative peace and stability. Augustus reformed the military, established efficient administrative systems, and initiated grand construction projects. The empire's borders expanded, encompassing territories from Britain to Egypt and from Spain to the Euphrates. Roman legions, renowned for their discipline and engineering prowess, secured and maintained these vast territories, building roads, fortifications, and cities that facilitated control and integration.
The Roman Empire’s society was hierarchical, with a rigid class system. At the top were the patricians, wealthy elites who held significant political power. Below them were the plebeians, free citizens with limited political influence, and the vast numbers of slaves who formed the backbone of the economy. The family unit was central, governed by the paterfamilias, the male head who held absolute authority.
Culturally, the Romans were eclectic, absorbing and adapting elements from the civilizations they encountered, particularly the Greeks. Roman art, literature, and philosophy reflected this synthesis, creating a rich cultural tapestry. Latin, the Roman language, became the lingua franca of the Western world, influencing numerous modern languages.
Roman architecture and engineering achievements were monumental. They perfected the arch, vault, and dome, constructing enduring structures like the Colosseum, Pantheon, and aqueducts. These engineering marvels not only showcased Roman ingenuity but also served practical purposes, from public entertainment to water supply.
How to Make a Field invisible in Odoo 17Celine George
It is possible to hide or invisible some fields in odoo. Commonly using “invisible” attribute in the field definition to invisible the fields. This slide will show how to make a field invisible in odoo 17.
Ethnobotany and Ethnopharmacology:
Ethnobotany in herbal drug evaluation,
Impact of Ethnobotany in traditional medicine,
New development in herbals,
Bio-prospecting tools for drug discovery,
Role of Ethnopharmacology in drug evaluation,
Reverse Pharmacology.
The Indian economy is classified into different sectors to simplify the analysis and understanding of economic activities. For Class 10, it's essential to grasp the sectors of the Indian economy, understand their characteristics, and recognize their importance. This guide will provide detailed notes on the Sectors of the Indian Economy Class 10, using specific long-tail keywords to enhance comprehension.
For more information, visit-www.vavaclasses.com
The French Revolution, which began in 1789, was a period of radical social and political upheaval in France. It marked the decline of absolute monarchies, the rise of secular and democratic republics, and the eventual rise of Napoleon Bonaparte. This revolutionary period is crucial in understanding the transition from feudalism to modernity in Europe.
For more information, visit-www.vavaclasses.com
Students, digital devices and success - Andreas Schleicher - 27 May 2024..pptxEduSkills OECD
Andreas Schleicher presents at the OECD webinar ‘Digital devices in schools: detrimental distraction or secret to success?’ on 27 May 2024. The presentation was based on findings from PISA 2022 results and the webinar helped launch the PISA in Focus ‘Managing screen time: How to protect and equip students against distraction’ https://www.oecd-ilibrary.org/education/managing-screen-time_7c225af4-en and the OECD Education Policy Perspective ‘Students, digital devices and success’ can be found here - https://oe.cd/il/5yV
Synthetic Fiber Construction in lab .pptxPavel ( NSTU)
Synthetic fiber production is a fascinating and complex field that blends chemistry, engineering, and environmental science. By understanding these aspects, students can gain a comprehensive view of synthetic fiber production, its impact on society and the environment, and the potential for future innovations. Synthetic fibers play a crucial role in modern society, impacting various aspects of daily life, industry, and the environment. ynthetic fibers are integral to modern life, offering a range of benefits from cost-effectiveness and versatility to innovative applications and performance characteristics. While they pose environmental challenges, ongoing research and development aim to create more sustainable and eco-friendly alternatives. Understanding the importance of synthetic fibers helps in appreciating their role in the economy, industry, and daily life, while also emphasizing the need for sustainable practices and innovation.
Palestine last event orientationfvgnh .pptxRaedMohamed3
An EFL lesson about the current events in Palestine. It is intended to be for intermediate students who wish to increase their listening skills through a short lesson in power point.
1.4 modern child centered education - mahatma gandhi-2.pptx
Statistics.pptx
1. Basic Statistics Overview
Dr. N. Mohana
Assistant Professor Senior
Division of Mathematics, School of Advanced Sciences
Vellore Institute of Technology, Chennai
2. Preface
• The purpose of this presentation is to help you
determine which statistical tests are appropriate
for analyzing your data for your resident research
project. It does not represent a comprehensive
overview of all statistical tests and methods.
• Your data may need to be analyzed using
different statistical tests than are presented here,
but this presentation focuses on the most
common techniques.
4. Types of Statistics/Analyses
Descriptive Statistics
– Frequencies
– Basic measurements
Inferential Statistics
– Hypothesis Testing
– Correlation
– Confidence Intervals
– Significance Testing
– Prediction
Describing a phenomena
How many? How much?
BP, HR, BMI, IQ, etc.
Inferences about a phenomena
Proving or disproving theories
Associations between phenomena
If sample relates to the larger
population
E.g., Diet and health
5. Descriptive Statistics
Descriptive statistics can be used to summarize
and describe a single variable
• Frequencies (counts) & Percentages
– Use with categorical (nominal) data
• Levels, types, groupings, yes/no, Drug A vs. Drug B
• Means & Standard Deviations
– Use with continuous (interval/ratio) data
• Height, weight, cholesterol, scores on a test
6. Frequencies & Percentages
Look at the different ways we can display frequencies and
percentages for this data:
Table
Bar chart
Pie chart
Good if more
than 20
observations
AKA frequency
distributions –
good if more
than 20
observations
8. Continuous Categorical
It is possible to take
continuous data
(such as hemoglobin
levels) and turn it
into categorical data
by grouping values
together. Then we
can calculate
frequencies and
percentages for each
group.
9. Continuous Categorical
Distribution of
Glasgow Coma
Scale Scores
Even though
this is
continuous
data, it is
being treated
as “nominal”
as it is broken
down into
groups or
categories
Tip: It is usually better to collect continuous data and then break it
down into categories for data analysis as opposed to collecting data
that fits into preconceived categories.
10. Ordinal Level Data
Frequencies and percentages can be computed
for ordinal data
– Examples: High School/Some College/College
Graduate/Graduate School
0
10
20
30
40
50
60
Strongly
Agree
Agree Disagree Strongly
Disagree
11. Interval/Ratio Data
We can compute frequencies and percentages
for interval and ratio level data as well
– Examples: Age, Temperature, Height, Weight,
Many Clinical Serum Levels
Distribution of Injury Severity
Score in a population of patients
12. Interval/Ratio Distributions
The distribution of interval/ratio data often
forms a “bell shaped” curve.
– Many phenomena in life are normally
distributed (age, height, weight, IQ).
13. Interval & Ratio Data
Measures of central tendency and measures of dispersion are often
computed with interval/ratio data
• Measures of Central Tendency (aka, the “Middle Point”)
– Mean, Median, Mode
– If your frequency distribution shows outliers, you might want to use
the median instead of the mean
• Measures of Dispersion (aka, How “spread out” the data are)
― Variance, standard deviation, standard error of the mean
― Describe how “spread out” a distribution of scores is
― High numbers for variance and standard deviation may mean that
scores are “all over the place” and do not necessarily fall close to the
mean
In research, means are usually presented along with standard deviations or
standard errors.
14. INFERENTIAL STATISTICS
Inferential statistics can be used to prove or
disprove theories, determine associations between
variables, and determine if findings are significant
and whether or not we can generalize from our
sample to the entire population
The types of inferential statistics we will go over:
• Correlation
• T-tests/ANOVA
• Chi-square
• Logistic Regression
15. Type of Data & Analysis
• Analysis of Categorical/Nominal Data
– Correlation T-tests
– T-tests
• Analysis of Continuous Data
– Chi-square
– Logistic Regression
16. Correlation
• When to use it?
– When you want to know about the association or relationship
between two continuous variables
• Ex) food intake and weight; drug dosage and blood pressure; air temperature and
metabolic rate, etc.
• What does it tell you?
– If a linear relationship exists between two variables, and how strong that
relationship is
• What do the results look like?
– The correlation coefficient = Pearson’s r
– Ranges from -1 to +1
– See next slide for examples of correlation results
17. Correlation
Guide for interpreting
strength of correlations:
0 – 0.25 = Little or no
relationship
0.25 – 0.50 = Fair degree of
relationship
0.50 - 0.75 = Moderate
degree of relationship
0.75 – 1.0 = Strong
relationship
1.0 = perfect correlation
18. Correlation
• How do you interpret it?
– If r is positive, high values of one variable are associated with high values
of the other variable (both go in SAME direction - ↑↑ OR ↓↓)
• Ex) Diastolic blood pressure tends to rise with age, thus the two variables are
positively correlated
– If r is negative, low values of one variable are associated with high values
of the other variable (opposite direction - ↑↓ OR ↓ ↑)
• Ex) Heart rate tends to be lower in persons who exercise frequently,
the two variables correlate negatively
– Correlation of 0 indicates NO linear relationship
• How do you report it?
– “Diastolic blood pressure was positively correlated with age (r = .75, p < . 05).”
Tip: Correlation does NOT equal causation!!! Just because two variables are highly correlated, this
does NOT mean that one CAUSES the other!!!
19. T-tests
• When to use them?
– Paired t-tests: When comparing the MEANS of a continuous variable in
two non-independent samples (i.e., measurements on the same people
before and after a treatment)
• Ex) Is diet X effective in lowering serum cholesterol levels in a sample of 12
people?
• Ex) Do patients who receive drug X have lower blood pressure after
treatment then they did before treatment?
– Independent samples t-tests: To compare the MEANS of a
continuous variable in TWO independent samples (i.e., two different
groups of people)
• Ex) Do people with diabetes have the same Systolic Blood Pressure as
people without diabetes?
• Ex) Do patients who receive a new drug treatment have lower blood
pressure than those who receive a placebo?
Tip: if you have > 2 different groups, you use ANOVA, which compares the means of 3 or more groups
20. T-tests
• What does a t-test tell you?
– If there is a statistically significant difference
between the mean score (or value) of two groups
(either the same group of people before and after
or two different groups of people)
• How do you interpret it?
– By looking at corresponding p-value
• If p < .05, means are significantly different from each
other
• If p > 0.05, means are not significantly different from
each other
21. How do you report t-tests results?
“As can be seen in Figure 1, specialty candidates had significantly
higher scores on questions dealing with treatment than residency
candidates (t = [insert t-value from stats output], p < .001).
“As can be seen in Figure 1, children’s mean reading
performance was significantly higher on the post-tests in
all four grades, ( t = [insert from stats output], p < .05)”
22. Chi-square
• When to use it?
– When you want to know if there is an association between two
categorical (nominal) variables (i.e., between an exposure and
outcome)
• Ex) Smoking (yes/no) and lung cancer (yes/no)
• Ex) Obesity (yes/no) and diabetes (yes/no)
• What does a chi-square test tell you?
– If the observed frequencies of occurrence in each group are
significantly different from expected frequencies (i.e., a
difference of proportions)
23. Chi-square
• What do the results look like?
– Chi-square test statistics = X2
• How do you interpret it?
– Usually, the higher the chi-square statistic, the
greater likelihood the finding is significant, but you
must look at the corresponding p-value to
determine significance
Tip: Chi square requires that there be 5 or more in each cell of a 2x2 table and 5 or more in 80% of
cells in larger tables. No cells can have a zero count.
24. How do you report chi-square?
“Distribution of obesity by gender showed
that 171 (38.9%) and 75 (17%) of women
were overweight and obese (Type I &II),
respectively. Whilst 118 (37.3%) and 12
(3.8%) of men were overweight and obese
(Type I & II), respectively (Table-II).
The Chi square test shows that these
differences are statistically significant
(p<0.001).”
25. Logistic Regression
• When to use it?
– When you want to measure the strength and direction of
the association between two variables, where the
dependent or outcome variable is categorical (e.g., yes/no)
– When you want to predict the likelihood of an outcome
while controlling for confounders
• Ex) examine the relationship between health behavior (smoking,
exercise, low-fat diet) and arthritis (arthritis vs. no arthritis)
• Ex) Predict the probability of stroke in relation to gender while
controlling for age or hypertension
• What does it tell you?
– The odds of an event occurring The probability of the
outcome event occurring divided by the probability of it
not occurring
26. Logistic Regression
• What do the results look like?
• Odds Ratios (OR) & 95% Confidence Intervals (CI)
• How do you interpret the results?
– Significance can be inferred using by looking at confidence intervals:
• If the confidence interval does not cross 1 (e.g., 0.04 – 0.08 or 1.50 – 3.49),
then the result is significant
– If OR > 1 The outcome is that many times MORE likely to occur
• The independent variable may be a RISK FACTOR
• 1.50 = 50% more likely to experience event or 50% more at risk
• 2.0 = twice as likely
• 1.33 = 33% more likely
– If OR < 1 The outcome is that many times LESS likely to occur
• The independent variable may be a PROTECTIVE FACTOR
• 0.50 = 50% less likely to experience the event
• 0.75 = 25% less likely
27. How do you report Logistic Regression?
“Table 3 shows the effects of both statins and fibrates adjusted for the concomitant
conditions on the risk of peripheral neuropathy. With the exception of connective tissue
disease, significant increased risks were observed for all the other concomitant
conditions. Odds ratios associated with both statins and fibrates were also significant.”
Confidence Interval crosses
1 NOT SIGNIFICANT !!!
49% increased risk
Those taking lipid lowering
drugs had greater risk for
neuropathy
control
variables
28. Summary of Statistical Tests
Statistic Test Type of Data Needed Test Statistic Example
Correlation Two continuous
variables
Pearson’s r Are blood pressure and
weight correlated?
T-tests/ANOVA Means from a
continuous variable
taken from two or
more groups
Student’s t Do normal weight (group 1)
patients have lower blood
pressure than obese
patients (group 2)?
Chi-square Two categorical
variables
Chi-square X2 Are obese individuals
(obese vs. not obese)
significantly more likely to
have a stroke (stroke vs. no
stroke)?
Logistic
Regression
A dichotomous
variable as the
outcome
Odds Ratios (OR)
& 95%
Confidence
Intervals (CI)
Does obesity predict stroke
(stroke vs. no stroke) when
controlling for other
variables?
29. Summary
• Descriptive statistics can be used with nominal, ordinal, interval
and ratio data
• Frequencies and percentages describe categorical data and
means and standard deviations describe continuous variables
• Inferential statistics can be used to determine associations
between variables and predict the likelihood of outcomes or
events
• Inferential statistics tell us if our findings are significant and if we
can infer from our sample to the larger population
30. Next Steps
• Think about the data that you have collected
or will collect as part of your research project
– What is your research question?
– What are you trying to get your data to “say”?
– Which statistical tests will best help you answer
your research question?
– Contact the research coordinator to discuss how
to analyze your data!
31. References
• Essential Medical Statistics. Kirkwood & Sterne, 2nd Edition.
2003
• http://ocw.tufts.edu/Content/1/lecturenotes/193325
• http://stattrek.com/AP-Statistics-
1/Association.aspx?Tutorial=AP
• http://udel.edu/~mcdonald/statcentral.html
• Background to Statistics for Non-Statisticians. Powerpoint
Lecture. Dr. Craig Jackson , Prof. Occupational Health
Psychology , Faculty of Education, Law & Social Sciences, BCU.
ww.hcc.uce.ac.uk/craigjackson/Basic%20Statistics.ppt.