Periodic Reporting for period 1 - LABDA (Learning network for Advanced Behavioural Data Analysis)
Periodo di rendicontazione: 2023-02-01 al 2025-01-31
Objective
LABDA aims to train a new generation of creative and innovative public health researchers with strong analytical and data science skills, and a deep understanding of all aspects of wearable sensor data analysis, that are able to develop sound analysis methods and apply these in various contexts. Via training-through-research, 12 doctoral fellows collaboratively work towards (i) sound and accessible methods for advanced 24/7 movement behaviour data analysis, (ii) linking multimodal data, and (iii) a taxonomy to enable interoperability and data harmonisation.
Impact
Results are combined in an open source LABDA toolbox supporting the accessibility of advanced analysis methods, including a decision tree to guide users to the optimal method for their (research) question and data. LABDA will gain evidence informing optimised, tailored public health recommendations and improved personal wearable feedback concerning 24/7 movement behaviour. After the project, LABDA fellows will be in an excellent position to pursue careers in academia (epidemiology, data science), commercial business (wearable technology, consultancy), or government (public health policy).
Intersectionality is a sociological analytical framework for understanding how groups' and individuals' social and political identities result in unique combinations of discrimination and privilege. One fellow conducted a systematic review summarizing all studies in the field of sports and physical activity that applied an intersectional lens. This review will inform intersectional analytical approaches as well as summarize the evidence inequalities in physical activity. A number of fellows are conducting intersectional analyses on various datasets.