If you’ve ever skipped over the results section of a medical paper because terms like “confidence interval” or “p-value” go over your head, then you’re in the right place. You may be a clinical practitioner reading research articles to keep up-to-date with developments in your field or a medical student wondering how to approach your own research. Greater confidence in understanding statistical analysis and the results can benefit both working professionals and those undertaking research themselves.
If you are simply interested in properly understanding the published literature or if you are embarking on conducting your own research, this course is your first step. It offers an easy entry into interpreting common statistical concepts without getting into nitty-gritty mathematical formulae. To be able to interpret and understand these concepts is the best way to start your journey into the world of clinical literature. That’s where this course comes in - so let’s get started!
The course is free to enroll and take. You will be offered the option of purchasing a certificate of completion which you become eligible for, if you successfully complete the course requirements. This can be an excellent way of staying motivated! Financial Aid is also available.
Welcome to the first week. Here we’ll provide an intuitive understanding of clinical research results. So this isn’t a comprehensive statistics course - rather it offers a practical orientation to the field of medical research and commonly used statistical analysis. The first topics we will look at are research methods and data collection with a specific focus on study types. By the end, you should be able to identify which study types are being used and why the researchers selected them, when you are later reading a published paper.
Introduction to Understanding Clinical Research•2 minutes
About the course•3 minutes
Observing and intervening: Observational & experimental studies•3 minutes
Observing and describing: Case series studies•3 minutes
Comparing groups: Case-control studies•3 minutes
Collecting data at one point in time: Cross-sectional studies•4 minutes
Studying a group with common traits: Cohort studies•5 minutes
Let's intervene: Experimental studies•7 minutes
Working with existing research: Meta-analysis and Systematic Review•5 minutes
Doing a literature search: Part 1•5 minutes
Doing a literature search: Part 2•6 minutes
11 readings•Total 100 minutes
How this course works•5 minutes
Pre-course survey•5 minutes
Study types•10 minutes
Key notes: Observational and experimental studies•10 minutes
Key notes: Case series studies•10 minutes
Key notes: Case-control studies•10 minutes
Key notes: Cross-sectional studies•10 minutes
Key notes: Cohort studies•10 minutes
Key notes: Experimental studies•10 minutes
Key notes: Meta-analysis and systematic review•10 minutes
Peer review introduction•10 minutes
1 assignment•Total 30 minutes
Test your knowledge: Study types•30 minutes
1 peer review•Total 120 minutes
Week 1: Navigating Clinical Research•120 minutes
1 discussion prompt•Total 10 minutes
Introduce yourself•10 minutes
Describing your data
Module 2•6 hours to complete
Module details
We finally get started with the statistics. Have you ever looked at the methods and results section of any healthcare research publication and noted the variety of statistical tests used? You would have come across terms like t-test, Mann-Whitney-U test, Wilcoxon test, Fisher’s exact test, and the ubiquitous chi-squared test. Why so many tests you might wonder? It’s all about types of data. This week I am going to tackle the differences in data that determine what type of statistical test we can use in making sense of our data.
Natural ordering of attributes: Ordinal categorical data•3 minutes
Measurements and numbers: Numerical data types•3 minutes
How to tell the difference: Discrete and continuous variables•3 minutes
Introduction•1 minute
Measures of central tendency•5 minutes
Measures of dispersion•7 minutes
(Optional) Setting up spreadsheets to do your own analysis•3 minutes
(Optional) Descriptive statistics using spreadsheets•9 minutes
Making inferences: Sampling•5 minutes
Types of sampling•3 minutes
Case study 1•10 minutes
12 readings•Total 120 minutes
Key notes: Definitions•10 minutes
Key notes: Data types•10 minutes
Key notes: Nominal categorical data•10 minutes
Key notes: Ordinal categorical data•10 minutes
Key notes: Numerical data types•10 minutes
Key notes: Discrete and continuous variables•10 minutes
Key notes: Describing the data•10 minutes
Key notes: Measures of central tendency•10 minutes
Key notes: Measures of dispersion•10 minutes
Visual representation of data•10 minutes
Key notes: Sampling•10 minutes
Key notes: Types of sampling•10 minutes
4 assignments•Total 120 minutes
Week 2 Graded Quiz•30 minutes
Test your knowledge: Data types•30 minutes
Test your knowledge: Measures of central tendency and dispersion•30 minutes
Test your knowledge: Sampling•30 minutes
1 peer review•Total 60 minutes
Identify measures of central tendency and dispersion•60 minutes
1 discussion prompt•Total 10 minutes
Share an example of clinical research•10 minutes
Building an intuitive understanding of statistical analysis
Module 3•5 hours to complete
Module details
There is hardly any healthcare professional who is unfamiliar with the p-value. It is usually understood to have a watershed value of 0.05. If a research question is evaluated through the collection of data points and statistical analysis reveals a value less that 0.05, we accept this a proof that some significant difference was found, at least statistically.In reality things are a bit more complicated than that. The literature is currently full of questions about the ubiquitous p-vale and why it is not the panacea many of us have used it as. During this week you will develop an intuitive understanding of concept of a p-value. From there, I'll move on to the heart of probability theory, the Central Limit Theorem and data distribution.
What's included
14 videos12 readings4 assignments
Show info about module content
14 videos•Total 78 minutes
P-values: P is for probability•2 minutes
Working out the probability: Rolling dice•5 minutes
Area under the curve: Continuous data types•5 minutes
Introduction to the central limit theorem: The heart of probability theory•2 minutes
Asymmetry and peakedness: Skewness and Kurtosis•4 minutes
Learning from the lotto: Combinations•4 minutes
Approximating a bell-shaped curve: The central limit theorem•5 minutes
Patterns in the data: Distributions•3 minutes
The bell-shaped curve: Normal distribution•4 minutes
Plotting a sample statistic: Sampling distribution•7 minutes
Standard normal distribution: Z distribution•10 minutes
Estimating population parameters: t-distribution•3 minutes
(Optional) Generating random data point values using spreadsheet software•6 minutes
Case study 2•17 minutes
12 readings•Total 120 minutes
Key notes: P-values•10 minutes
Key notes: Rolling dice•10 minutes
Key notes: Continuous data types•10 minutes
Introduction to the central limit theorem•10 minutes
Key notes: Skewness and kurtosis•10 minutes
Key notes: Combinations•10 minutes
Key notes: Central limit theorem•10 minutes
Key notes: Distributions•10 minutes
Key notes: Normal distribution•10 minutes
Key notes: Sampling distribution•10 minutes
Key notes: Z-distribution•10 minutes
Key notes: The t-distibution•10 minutes
4 assignments•Total 120 minutes
Week 3 Graded Quiz•30 minutes
Test your knowledge: Probability•30 minutes
Test your knowledge: The central limit theorem•30 minutes
Test your knowledge: Distributions•30 minutes
The important first steps: Hypothesis testing and confidence levels
Module 4•4 hours to complete
Module details
In general, a researcher has a question in mind that he or she needs to answer. Everyone might have an opinion on this question (or answer), but a researcher looks for the answer by designing an experiment and investigating the outcome. First, we will look at hypotheses and how they relate to ethical and unbiased research and reporting. We'll also tackle confidence intervals which I believe are one of the least understood and often misrepresented values in healthcare research. The most common tests used in the literature to compare numerical data point values are t-tests, analysis of variance, and linear regression. In the last lesson we take a closer look at these tests, but perhaps more importantly, their strict assumptions.
What's included
8 videos6 readings2 assignments1 peer review
Show info about module content
8 videos•Total 33 minutes
Introduction to Hypothesis Testing•2 minutes
Testing assumptions: Null and alternative hypothesis•3 minutes
Is there a difference?: Alternative Hypothesis•4 minutes
Type I and II: Hypothesis testing errors•3 minutes
Introduction to confidence intervals•3 minutes
How confident are you?: Confidence levels•4 minutes
(Optional) Calculating confidence intervals using spreadsheet software•10 minutes
6 readings•Total 60 minutes
Key notes: Null and alternative hypothesis•10 minutes
Key notes: Alternative hypothesis•10 minutes
Key notes: Hypothesis errors•10 minutes
Key notes: Introduction to confidence intervals•10 minutes
Key notes: Confidence levels•10 minutes
Key notes: Confidence intervals•10 minutes
2 assignments•Total 60 minutes
Testing your knowledge: Hypothesis•30 minutes
Test your knowledge: Confidence intervals•30 minutes
1 peer review•Total 60 minutes
Week 4 Peer review•60 minutes
Which test should you use?
Module 5•4 hours to complete
Module details
The most common statistical test that you might come across in the literature is the t-test. There are, in actual fact, a few t-tests, but the one most are familiar with, is of course, Student’s t-test and its ubiquitous p-value. Not everyone, though, knows that the name Student was actually a pseudonym, used by William Gosset (1876 - 1937). Parametric tests have very strict assumptions that must be met before their use is justified. In this lesson we take a closer look at these tests, but perhaps more importantly, their strict assumptions. Once you know these, you will be able to identify when these tests are used inappropriately.
What's included
15 videos6 readings3 assignments
Show info about module content
15 videos•Total 86 minutes
Introduction to parametric tests•2 minutes
Student's t-test•15 minutes
ANOVA•4 minutes
Linear Regression•4 minutes
(Optional) Student's t-test in action•13 minutes
Introduction to nonparametric tests•3 minutes
Checking for normality•5 minutes
Thinking nonparametrically•2 minutes
Comparing paired observations: Signs•3 minutes
Ordering values: Ranking•3 minutes
Paired comparisons: Sign ranks•2 minutes
Summation of ranks: Rank sums•6 minutes
Comparing two populations: Mann-Whitney-U test•4 minutes
More nonparametric tests•5 minutes
Case study 3•14 minutes
6 readings•Total 60 minutes
Key notes: Parametric tests•10 minutes
Key notes: Student's t-test•10 minutes
Key notes: ANOVA•10 minutes
Key notes: Linear regression•10 minutes
Key notes: Nonparametric tests•10 minutes
Key notes: Nonparametric tests•10 minutes
3 assignments•Total 90 minutes
Week 5 Graded Quiz•30 minutes
Test your knowledge: Parametric tests•30 minutes
Test your knowledge: Non-parametric tests•30 minutes
Categorical data and analyzing accuracy of results
Module 6•3 hours to complete
Module details
Congratulations! You've reached the final week of the course Understanding Clinical Research. In this lesson we will take a look at how good tests are at picking up the presence or absence of disease, helping us choose appropriate tests, and how to interpret positive and negative results. We’ll decipher sensitivity, specificity, positive and negative predictive values. You'll end of this course with a final exam, to test the knowledge and application you've learned in this course. I hope you've enjoyed this course and it helps your understanding of clinical research.
What's included
13 videos4 readings4 assignments
Show info about module content
13 videos•Total 56 minutes
Introduction to comparing categorical data•2 minutes
The University of Cape Town is the oldest university in South Africa and is one of the leading research universities on the African continent. UCT has over 28 000 students, of whom 30% are postgraduate students. We offer degrees in six faculties: Commerce, Engineering & the Built Environment, Health Sciences, Humanities, Law, and Science. We pride ourself on our diverse student body, which reflects the many cultures and backgrounds of the region. We welcome international students and are currently home to thousands of international students from over 100 countries. UCT has a tradition of academic excellence that is respected world-wide and is privileged to have more than 30 A-rated researchers on our staff, all of whom are recognised as world leaders in their field. Our aim is to ensure that our research contributes to the public good through sharing knowledge for the benefit of society. Past students include five Nobel Laureates – Max Theiler, Alan Cormack, Sir Aaron Klug, Ralph Bunche and, J M Coetzee.
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L
LK
5·
Reviewed on Jul 28, 2017
Great course!! it is gonna provide you a good foundation in clinical studies if you want to start your career in clinical research! Clear explanation and comprehensive case study! highly recommended!
M
MH
5·
Reviewed on Dec 25, 2021
If you are looking for a course to help you understand the basics of reading and evaluating research as well as giving you the skills to conduct your own, then this is the course to take.
M
MA
5·
Reviewed on Jul 30, 2023
One of best teacher i have seen in my entire life. course is well designed and explained. Force me to learn alot especially through finding research papers and finding concepts in them. love you sir.
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