Workshops & Seminars
The following courses are designed for researchers to establish a firm understanding of the appropriate statistical methods in order to glean insights from their own data in their respective field of work. This provides a sound foundation for good statistical practice and evidence generation through research.
Basic Principles of Biostatistics
This course establishes a fundamental understanding of statistics for young researchers in life sciences.
- Descriptive statistics & graphics
- Principles of statistical testing
- Statistical tests & interpretation
- Evaluation of fold change data
- Correlation and regression
- Study design and common pitfalls
Good Statistical Practice
Helping researchers understand common pitfalls and misconceptions in conducting statistical analyses and communicating results.
- Identifying uninformative or misleading plots
- Hierarchical data structures
- P-values and their limitations
- Statistical significance vs. biological relevance
- Multiple testing adjustments
Advanced Topics in Biostatistics
This course addresses advanced biostatistical questions including some theoretical background and real-life applications.
- Analysis of variance & group tests
- Regression models
- Supervised learning (classification & prediction)
- Unsupervised learning (clustering, PCA, …)
Intro to Statistical Programming with R
A gentle introduction to the use of R and Rstudio for data analysis.
- Objects, functions & help
- Data import
- Descriptive statistics
- First graphics for data
- Variable transformations
- Writing own functions
- First statistical analyses
Identifying Subgroups in Omics Data
An overview of unsupervised methods for identification of subgroups in Omics data using Bioconductor and the R programming language.
- Unsupervised learning
- Clustering techniques
- Dimension reduction
- Visualization & interpretation
- Validity & stability
Icons licensed under CC BY 4.0. © Laura Reen
Addressing exactly what your participants need…
The range of covered topics, content and workshop duration can be modified to focus exactly on your participants’ particular needs. Get in touch and let me know what topics are most relevant to your group.
What Participants say
Super satisfied by the course! Topics that I thought would be very hard were very well explained.
Enthusiastic speaker! It was always fun to listen and I learned a lot.
Thanks to the energy of the presenter, the most interesting statistics course so far!
Great course, perfect lecturer, easy to understand. Now I know what the p-value is.
Frequently Asked Questions
Course sizes differ depending on format and course content.
For statistics courses with a classroom setup, such as Basic Principles of Biostatistics and Good Scientific practice, anywhere between 10 to 50 participants is recommended. This interval has proven helpful for encouraging participants to interact with each other and to engage in discussions.
For seminars involving hands-on programming sessions, (e.g. Intro to R, Analysis of Omics data, and Subgroup Identification), group sizes of 8 to 20 are preferable. This ensures that individual programming questions can be addressed and resolved quickly.
The statistics courses, such as Basic Principles of Biostatistics and Good statistical practice, are intended for young life-science researchers and do not require any particular statistical knowledge. High school level mathematics suffices, as these seminars intend to establish an understanding of basic statistical aspects that researchers are confronted with during their own work and in scientific publications.
Similarly, the Introduction to R workshop is intended for absolute beginners and does not require any prior knowledge of programming. Participants should bring their own laptop for the practical session.
The seminars involving programming sessions with Bioconductor (e.g. Analysis of Omics data, and Subgroup Identification) require a basic understanding of statistical concepts and some prior experience with R programming. These courses are not useful for participants with no knowledge of R. Participants should bring their own laptop for the practical session.
In all my course types I strive to deliver engaging and rewarding learning experiences. I encourage students to discuss and interact by using polling software, which has been enthusiastically embraced by previous participants. I also find it important to maintain a welcoming atmosphere and to plan enough time for interaction and questions.
Seeing a full seminar room, I am very aware that each participant has taken time out of his/her packed schedule to attend this course. Therefore, it is my goal to turn the seminar into a fruitful experience by addressing their particular needs and making sure that they obtain the proper statistical tools needed to become successful researchers.
Rates vary depending on course content, format and length. Get in touch to discuss your specific case and I’ll happily provide an estimate.
Yes, all courses can be conducted in either German or in English, depending on the participants’ preferences.
I can be somewhat flexible and plan around your own calendar openings. Let’s have a short talk about what dates you have in mind and I’ll see what I can do.
Seminars generally take place at your institute/facilities, both to ease the logistics and to save on costs – though I am open to other options you may find more suitable.
I am based near Heidelberg and can conduct classes anywhere in Germany and the European Union overall. Locations such as Frankfurt, Darmstadt, Mainz, Wiesbaden, and Mannheim can easily be reached within an hour, thus eliminating my need for a hotel stay in these and similar locations.
Any broader traveling can be considered but will require adequate prior notice and assistance with logistics on your end.
A regular conference room setup is perfectly sufficient: a projector, good acoustics, WiFi.
For seminars involving hands-on programming sessions (e.g. Intro to R, Analysis of Omics data, and Subgroup Identification) sufficient electricity sockets are required.