Bias in Surface Electromyography Features across a Demographically Diverse Cohort
Aditi Agrawal, Celine John Philip, Giancarlo K. Sagastume, Marcus A. Battraw, Wilsaan M. Joiner + 3 more
TLDR
This study reveals that 33% of common sEMG features are significantly biased by demographic factors, impacting neuromotor interface fairness.
Key contributions
- Analyzed 147 sEMG features from 81 demographically diverse individuals performing hand gestures.
- Identified 33% (49 of 147) of common sEMG features are significantly associated with demographic factors.
- Demographic variables included age, sex, height, weight, skin properties, fat, and hair density.
- Findings underscore the importance of developing fair and unbiased sEMG-based neural interfaces.
Why it matters
Current sEMG technology suffers from performance inconsistencies across users, often requiring extensive personalization. This research quantifies how demographic biases affect sEMG features, which is crucial for developing fair and broadly deployable neural interfaces and assistive devices.
Original Abstract
Neuromotor decoding from upper-limb electromyography (sEMG) can enhance human-machine interfaces and offer a more natural means of controlling prosthetic limbs, virtual reality, and household electronics. Unfortunately, current sEMG technology does not always perform consistently across users because individual differences such as age and body mass index, among many others, can substantially alter signal quality. This variability makes sEMG characteristics highly idiosyncratic, often necessitating laborious personalization and iterative tuning to achieve reliable performance. This variability has particular import for sEMG-based assistive devices and neural interfaces, where demographic biases in sEMG features could undermine broad and fair deployment. In this study, we explore how demographic differences affect the sEMG signals produced and their implications for machine learning-based gesture decoding. We analyze the data set provided by, in which we derive 147 common sEMG features extracted from 81 demographically diverse individuals performing discrete hand gestures. Using mixed-effects linear models and partial least squares (PLS) analysis, which take into consideration demographic variables (including age, sex, height, weight, skin properties, subcutaneous fat, and hair density), we identify that 33\% (49 of 147) of commonly used sEMG features show significant associations with demographic characteristics. These results may help guide the development of fair and unbiased sEMG-based neural interfaces across a diverse population.
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