Survey Measurement of Health: Implications for Social Science Research - Online
Date:
23/06/2025 - 24/06/2025
Organised by:
NCRM, University of Essex and University of Southampton
Presenter:
Dr Apostolos Davillas and Dr Paul Clarke
Level:
Entry (no or almost no prior knowledge)
Contact:
Jacqui Thorp
Training and Capacity Building Coordinator, National Centre for Research Methods, University of Southampton
Email: jmh6@soton.ac.uk

Venue: Online
Description:
The measurement of health in surveys involves collecting data from individuals about their health status, health-related behaviours, and experiences, often as part of multi-purpose surveys. These surveys may include both subjective self-reports (e.g., self-assessed health measures) and objectively measured health data (e.g., physical health assessments, blood-based biomarkers, or DNA data).
Survey measurement of health plays a vital role in advancing social science research on health. It is essential for the analysis of health inequalities, for informing policy decisions, and evaluating the effect of interventions. By capturing individual health behaviours alongside the social, economic, and environmental contexts influencing health outcomes, surveys offer a nuanced understanding of the complex interplay between society and health.
However, measurement error in health data can significantly affect and compromise the quality of social science research in health. Importantly, such errors are not confined to self-reported data. While self-reports are often susceptible to certain types of inaccuracies, other sources of error can arise, including those associated with nurse-administered health assessments or blood-based biomarker data.
Survey mode – e.g. face-to-face interview, telephone interview, online questionnaire - is also well known to affect the distribution of the survey variables so is a special case of measurement error. Mode effects are hypothesised to be driven by well-known sources of survey bias such as social desirability, positivity and satisficing and the presence (or not) of an interviewer. Mode effects can be defined in the same way as causal or treatment effects and estimated from mixed-mode surveys, and estimated using the same methods.
We provide an overview of methods for understanding measurement error and mode effects. We will also provide practical sessions and illustrative examples demonstrating the impact of measurement error and mode effects in the social and health sciences.
The course covers:
Collection of health data in multi-purpose social science surveys
Measurement errors in health data, including both self-reports and objective measures
Implications of measurement errors in health data for existing social science research in health
The nature of mode effects and the connection with classical measurement error
The definition and identification of different kinds of mode effect from mixed-mode surveys and a case study based on Wave 8 of Understanding Society.
Practical sessions with illustrative examples of measurement error and mode effects
By the end of the course participants will be able:
- Understand the basis on the process of survey measurement of health, including the collection of both self-reported and nurse-collected health data.
- Explain the role of survey measurement in advancing social science research, particularly in understanding health inequalities, guiding policy, and tracking interventions.
- Recognize the impact of measurement error in health data, including errors in self-reported, nurse-administered, and biomarker data.
- To understand the potential impact of survey mode on survey data, learn how to estimate different kinds of mode effects from mixed-mode surveys, and how to do so robustly using instrumental variable estimation.
- Apply practical knowledge of how measurement error in survey health data can affect the accuracy and interpretation of social science research.
This online course is aimed at Post-graduate researchers and analysts, including (but not limited to): Academics, Government Researchers, Third sector organisations, (Health) Consultancy analysts and Survey methodologists. Participants will need a basic knowledge of STATA.
Programme TBC
Day 1
9:00-11:00 Measurement error in self-reported health measures regularly available in large-scale multipurpose datasets
11:00-11:15 (Virtual) coffee break (Q&A session)
11:15-12:45 Beyond self-reported health measures – characterizing and quantifying measurement errors in administrative health data and nurse-collected bio-measures.
12:45-13:45 Lunch
13:45-14:45 Assessing the potential implications for the existing research in economics and social science that rely on health data
14:45-15:45 Practical sessions using Stata and illustrative examples
Day 2
9:30-11:00 Connection between mode effects and measurement error, definition of different mode effects, identification of mode effects from mixed-mode surveys where people non-randomly select survey mode
11:00-11:15 (Virtual) coffee break (Q&A session)
11:15-12:45 Case study: Using regression and instrumental variable-based methods to estimate mode effects from Wave 8 of Understanding Society
12:45-13:45 Lunch
13:45-14:45 Practical session using Stata and illustrative examples
Cost:
The fee per teaching day is:
• £60 per day for students registered at any University.
• £150 per day for staff at academic institutions, Research Councils researchers, public sector staff and staff at registered charity organisations and recognised research institutions.
• £350 per day for all other participants
In the event of cancellation by the delegate a full refund of the course fee is available up to two weeks prior to the course. NO refunds are available after this date.
If it is no longer possible to run a course due to circumstances beyond its control, NCRM reserves the right to cancel the course at its sole discretion at any time prior to the event. In this event every effort will be made to reschedule the course. If this is not possible or the new date is inconvenient a full refund of the course fee will be given. NCRM shall not be liable for any costs, losses or expenses that may be incurred as a result of its cancellation of a course, including but not limited to any travel or accommodation costs.
The University of Southampton’s Online Store T&Cs also continue to apply.
Website and registration:
Region:
South East
Keywords:
Quantitative Data Handling and Data Analysis, Stata, Survey measurement of health, biomarkers, mode effects, measurement error, social science health research, household surveys, data analysis
Related publications and presentations from our eprints archive:
Quantitative Data Handling and Data Analysis
Stata