Erasmus Summer Programme Courses
Take a look at all the courses in the Erasmus Summer Programme, and find the course right for you.
View all ESP coursesData Science in Epidemiology [ESP80]
Course highlights
EC points
0.7
Start date
19 August 2024
End date
23 August 2024
Course days
Monday to Friday (5 afternoons)
Course time
From 13:00 till 16:00 CEST
Faculty
Dr. Gennady Roshchupkin, Dr. Daniel Bos and Prof. Kamran Ikram,
Course fee
€ 525
Location
Erasmus MC, Rotterdam NL
Level
Intermediate
Prerequisites
Basic understanding of biostatistics, and epidemiology (as covered in ESP03 and ESP01).
Basic knowledge of programming (experience with R, python or any other scripting language).
Disciplines
- Epidemiology
- Clinical Research
- Methodology
Course Materials
Digitally, download instructions will be sent before the start of the course, by e-mail.
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Itai Magodoro
Zimbabwe
The professors - who are at the cutting edge in their respective fields - bring science to life!
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Description
Faculty: Dr. Gennady Roshchupkin, PhD, Dr. Daniel Bos, MD, PhD and Prof. Kamran Ikram, MD PhD
Data science is a multi-disciplinary field where – besides domain-specific expertise – several fundamental scientific disciplines converge including mathematics, statistics, computer science, engineering and epidemiology. The aim of this new field is to combine scientific methods and algorithms to extract knowledge and insights from structured and unstructured data. Recent advances in technology allow for the collection of enormous amounts of health-related data. Consequently, skills pertaining to handle and manipulate these data and to extract relevant information have become crucial to perform high quality research. Unfortunately, many (clinical) researchers without a technical background frequently experience troubles obtaining or developing these skills. The aim of this course is to bridge this gap in knowledge by providing an interactive and hands-on programme about data science and how it can be applied in epidemiological research.
Objectives
- Understand that epidemiology is at the core of data science in healthcare;
- Understand the basic of Machine Learning methods and neural networks algorithms;
- Understand the biases and fairness related to handling and analyzing health-related data.
Participant profile
Clinical researchers, clinical epidemiologists, computer scientists, those in health technology assessment or value-based healthcare.
Assessment
Attendance