Data harmonisation refers to the process of making data from different sources more similar, which enhances comparability and increases the potential pool of data available for analysis. This module provides an overview of the basic concepts and limitations involved when considering data harmonisation.
This module will cover what data harmonisation is and why it’s important, the main types of harmonisation and how they differ, the ways in which harmonisation is undertaken, and the limitations of harmonisation.
Suggested citation: O’Neill, D., Kaye, N. & Hardy, R. (2020). Data harmonisation. CLOSER Learning Hub, London, UK: CLOSER
Data harmonisation is the process of making data collected by different studies or at different time periods more similar and comparable.
There are two main types of harmonisation:
Retrospective harmonisation
We do this when we make data that have already been collected more comparable (i.e. data that already exists).
Prospective harmonisation
We do this when we collect new data in a way that is intended to ensure it is comparable to data from other sources.
CLOSER’s Training Hub provides more advanced learning on data harmonisation in our Cross-study research section, which covers methods for harmonising data and detailed information about using cross-study research.
The Learning Hub is a resource for students and educators
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