The Intensity Inequality Index for Physical Activity: A New Metric for Integrative Analysis of Movement.

J Phys Act Health

Applied Sports Technology Exercise and Medicine Research Centre, Swansea University, Swansea, Wales, United Kingdom.

Published: September 2025


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Article Abstract

Background: Wearable sensors recording acceleration provide a powerful tool for analysis of physical activity (PA). Continuous, high-rate data acquisition over extended periods gives highly resolved measurement of movement intensity. While increased complexity of PA analytics allows for deeper insight, it brings a challenge to statistical testing, where commonly used approaches require a single defining metric for PA per participant.

Methods: We adapt an econometric measure to obtain a statistical test metric for movement intensity-the intensity inequality index, I≠. This is a "Gini coefficient for movement" that quantifies the inequality in distribution of time spent across a range of activity intensity values. The I≠ metric is calculated using a graphical method on plots of cumulative time versus cumulative intensity level. Hypothesis testing of I≠ is performed on 24-hour activity traces of 58 children, aged 7-11 years, to assess statistical differences in PA between typically developing children and those suspected of having developmental coordination disorder.

Results: The I≠ test metric provided high statistical confidence with low sample numbers: P < .05 for n ≥ 30. When differentiating between groups, I≠ halved the sample size required for a statistical power of 80% at α = .05, in comparison to the alternative metrics of intensity gradient or log ratio of minutes at low and moderate to high intensity.

Conclusions: The inequality index provides a metric that is based on the accumulated time-counts across an activity intensity distribution. This integrative description of the distribution makes it a powerful statistical metric for PA.

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http://dx.doi.org/10.1123/jpah.2025-0127DOI Listing

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