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Johns Hopkins University

Hypothesis Testing in Public Health

Biostatistics is an essential skill for every public health researcher because it provides a set of precise methods for extracting meaningful conclusions from data. In this second course of the Biostatistics in Public Health Specialization, you'll learn to evaluate sample variability and apply statistical hypothesis testing methods. Along the way, you'll perform calculations and interpret real-world data from the published scientific literature. Topics include sample statistics, the central limit theorem, confidence intervals, hypothesis testing, and p values.

Status: Epidemiology
Status: Biostatistics
BeginnerCourse19 hours

Featured reviews

AB

4.0Reviewed Jun 12, 2020

perfect except if there is a reference material, as PDFs, for self-revision after the course; no need to go back to the full video to remember everything

DK

5.0Reviewed Jul 18, 2020

excellant descriptions, good examples and challenging practice sessions. Better if some more were added about ANOVA also. If it is considered as advanced , then it is ok. Good experience

KC

5.0Reviewed Aug 23, 2021

The really great thing of this course is the professor! Outstanding! I just wish there were at least some recommended lectures/resources to calculate some of the exercises ourselves.

GP

4.0Reviewed Nov 23, 2025

The contents are good. But the feedback tutorial on the training quizzes can be provided. Also, maybe R or Python programming can be briefly taught?

SN

5.0Reviewed Jul 9, 2022

Very detailed lectures and mostly all the concepts were cleared by examples which was great for me to conceptualize all the topics in a simple manner. Thank you so much.

NT

5.0Reviewed Nov 5, 2021

This course is extremely easy to understand. Now I can get a good grasp of the Confidence Interval and Hypothesis Testing. Thanks a lot!

NZ

5.0Reviewed Apr 9, 2019

Excellent course, very well explained and the scientific articles used were a superb way to boost my confidence that I can do this, meaning stats. Thank you!

HK

5.0Reviewed Oct 1, 2020

This was a very well structured course, so many of those examples do make things a lot more easier to understand. Absolutely loved it!

RH

5.0Reviewed Sep 14, 2019

Simply the best course ever illustrated so far!! Instructor Dr. John is an awesome motivator and true passionate instructor!

AT

5.0Reviewed Mar 10, 2023

Beautiful and highly educative course with very applicable steps. However, the correction to all tests done will go a long way to help better understanding. Thanks

AB

5.0Reviewed Apr 5, 2020

Great overview of basic hypothesis testing for means, proportions, and survival curves. Only additional thing that would be nice was a deeper review of the code involved in R.

LM

4.0Reviewed Nov 19, 2019

It would be useful to have replies from the professor to the questions in the forum, also more feedback from the quizzes in the course.

All reviews

Showing: 20 of 159

Ji Hui Neo
3.0
Reviewed Jun 16, 2019
Laura Martínez
4.0
Reviewed Nov 19, 2019
Dan Feldman
5.0
Reviewed Apr 13, 2020
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5.0
Reviewed Oct 30, 2019
Ingrid Soleil Hernández Caracún
5.0
Reviewed Oct 30, 2019
Bhalchandra Vaidya
5.0
Reviewed Mar 31, 2020
Daniel Yong Tze Yeo
5.0
Reviewed May 26, 2019
Denise Pinheiro Falcão
5.0
Reviewed Feb 17, 2019
Scott Ferrell
5.0
Reviewed May 22, 2020
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5.0
Reviewed Jul 19, 2020
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5.0
Reviewed May 27, 2019
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3.0
Reviewed Oct 2, 2019
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Reviewed Jan 17, 2025
Info Data
5.0
Reviewed May 3, 2021
David Mansour MD
5.0
Reviewed Feb 6, 2021
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5.0
Reviewed Jul 10, 2019