Login for PhD students at UCPH
Login for others
Home
Course Catalogue
Communication & Teaching
Online Courses
Responsible Conduct of Research
Specialist Courses
Statistics
PhD Supervision for Academic staff
Course fee, cancellation policy and invoice details
How to apply for a course
PhD students from NorDoc universities
Newly enrolled PhD students at SUND
PhD students at UCPH
Other applicants
How to log on to the course system
How to log in as a student
How to log in as a course provider
Contact information
Processing...
Basic Statistics for health researcher (English course)
Provider: Faculty of Health and Medical Sciences
Activity no.: 3305-25-00-00
There are no available seats
Enrollment deadline: 17/01/2025
Date and time
24.02.2025, at: 08:00 - 02.04.2025, at: 15:00
Regular seats
30
Course fee
10,200.00 kr.
Lecturers
Paul Blanche
ECTS credits
7.50
Contact person
Susanne Kragskov Laupstad E-mail address: skl@sund.ku.dk
Enrolment Handling/Course Organiser
PhD administration E-mail address: phdkursus@sund.ku.dk
Aim and content
This is a generic course. This means that the course is reserved for PhD students at the Graduate School of Health and Medical Sciences at UCPH.
Anyone can apply for the course, but if you are not a PhD student at the Graduate School, you will be placed on the waiting list until enrollment deadline. After the enrolment deadline, available seats will be allocated to the waiting list.
The course is free of charge for PhD students at Danish universities (except Copenhagen Business School), and for PhD students at NorDoc member faculties. All other participants must pay the course fee
Course title
Basic statistics for health researchers (English course)
Learning objectives
This course will teach you how to use statistics in a research context by giving you a thorough presentation of basic statistical concepts and models illustrated with case studies from health science.
A student who has met the objectives of the course will be able to:
• Interpret basic statistical information from research papers: descriptive statistics, sample size calculations, estimates of effect or association, confidence intervals, and p-values.
• Understand the basic statistical analyses most commonly used in health science: two-sample and paired t-test, linear regression, correlation, analysis of variance (ANOVA), analysis of covariance (ANCOVA), linear models, risk difference, relative risk, odds ratio, chi-square test, logistic regression, survival analysis, hazard ratio and linear mixed models.
• Carry out the most commonly used basic statistical analyses using the R statistical software, interpret the results, and present them in appropriate tables and figures.
• Recognize the limitations and potential misinterpretations of statistical analyses related to e.g. model violations, confounding, missing data, regression to the mean, lack of power, and multiple testing.
• Follow advanced statistics courses from the Ph.D. school at the faculty of health science.
• Take advice from or collaborate with a statistician, e.g. in the advisory service at the Section of Biostatistics.
Content
Basic statistical concepts (data types, distributions, estimation, confidence intervals). Significance tests (power and sample size calculation, adjustments for multiple testing). Planning and interpretation (exploratory vs confirmatory analyses, randomized vs observational studies, confounding, effect modification, estimation vs prediction, association vs causation). Analysis of quantitative outcomes (t-tests, ANOVA, linear regression, correlation, ANCOVA, multiple linear regression). Analysis of binary and categorical outcomes (association in two-way tables, logistic regression). Introduction to survival analysis (Kaplan-Meier curves, log-rank test, Cox regression). Introduction to analysis of repeated measurements and clustered data (linear mixed models, simplification).
Prerequisites:
• ESSENTIAL: A minimum level of familiarity with basic R corresponding to that obtained after completing the course “Introduction to R for basic statistics” (taking place one week before this course). This might be obtained via the online introduction at https://biostat.ku.dk/r/ , although it is often best achieved by attending the in-person course. The estimated number of hours to complete the online introduction is 10 to 15 hours, depending on your R- and technical skills.
• RECOMMENDED: Familiarity with the most basic statistical concepts e.g., from completing a statistics course during previous education and from reading research papers.
Statistical software
The focus of this course is not on how to use statistical software. But statistical software is needed for all data analyses and examples that illustrate the statistical methods.
The free statistical software R will be used throughout the course
. The participants are expected to use their own laptops during the course, to have installed all relevant software and to have downloaded all data for use during the course.
Participants
Ph.D. students and visiting researchers. Max. 30 participants.
Relevance to graduate programs
The course is relevant to PhD students from the following graduate programs at the Graduate School of Health and Medical Sciences, UCPH:
All graduate programmes
Language
English
Form
Forum lectures and computer exercises. Most course days require preparation (usually 1-2 hours).
A homework assignment
is handed out. Participants work with their own data or data related to their own research provided by their PhD supervisor. The homework assignment is turned in during the second last week of the course. Before the deadline you can attend one day (non mandatory), where you can work on the assignment and receive feedback from the teachers.
This highly ambitious course gives many ECTS points, if
- you attend 80% of all teaching units (we count the signatures)
- you present the results of your homework on the last course day.
Course director
Associate professor Paul Blanche, Section of Biostatistics
Teachers
Associate professor Paul Blanche, assistant professor Alessandra Meddis, and others, all affiliated to the Section of Biostatistics.
Dates
24, 26 February, 3, 5, 10, 12, 17, 19, 24, 26 March, 2 April 2025, all days 8-15. The 26th of March is optional.
Course location
CSS
Registration
Please register before 17 January 2025.
Seats to PhD students from other Danish universities will be allocated on a first-come, first-served basis and according to the applicable rules. Applications from other participants will be considered after the last day of enrolment.
Note: All applicants are asked to submit invoice details in case of no-show, late cancellation or obligation to pay the course fee (typically non-PhD students). If you are a PhD student, your participation in the course must be in agreement with your principal supervisor.
Search
Click the search button to search Courses.
Choose course area
Course Catalogue
Choose sub area
Communication & Teaching
Online Courses
Responsible Conduct of Research
Specialist Courses
Statistics
PhD Supervision for Academic staff
Course calendar
See which courses you can attend and when
Jan
Feb
Mar
Apr
May
Jun
Jul
Aug
Sep
Oct
Nov
Dec
Processing...
RadEditor - HTML WYSIWYG Editor. MS Word-like content editing experience thanks to a rich set of formatting tools, dropdowns, dialogs, system modules and built-in spell-check.
RadEditor's components - toolbar, content area, modes and modules
Toolbar's wrapper
Paragraph Style
Font Name
Real font size
Apply CSS Class
Custom Links
Zoom
Content area wrapper
RadEditor hidden textarea
RadEditor's bottom area: Design, Html and Preview modes, Statistics module and resize handle.
It contains RadEditor's Modes/views (HTML, Design and Preview), Statistics and Resizer
Editor Mode buttons
Statistics module
Editor resizer
Design
HTML
Preview
RadEditor - please enable JavaScript to use the rich text editor.
RadEditor's Modules - special tools used to provide extra information such as Tag Inspector, Real Time HTML Viewer, Tag Properties and other.
N
ew courses
Courses are published regularly. High demand courses are announced in spring and autumn.
Learn which courses are announced on fixed dates