6533b7d9fe1ef96bd126c026
RESEARCH PRODUCT
Revealing the unique features of each individual’s muscle activation signatures
François HugFrançois HugFrançois HugJeroen AelesSebastian LapuschkinFabian HorstLilian Lacourpaillesubject
Computer sciencebusiness.industryRelevance (information retrieval)Muscle activationPattern recognitionArtificial intelligencebusinessLower limbSignature (logic)description
AbstractThere is growing evidence that each individual has unique movement patterns, or signatures. The exact origin of these movement signatures however, remains unknown. We developed an approach that can identify individual muscle activation signatures during two locomotor tasks (walking and pedalling). A linear Support Vector Machine was used to classify 78 participants based on their electromyographic (EMG) patterns measured on eight lower limb muscles. To provide insight into decision making by the machine learning classification model, a Layer-wise Relevance Propagation (LRP) approach was implemented. This enabled the model predictions to be decomposed into relevance scores for each individual input value. In other words, it provided information regarding which features of the time-varying EMG profiles were unique to each individual. Through extensive testing, we have shown that the LRP results, and by extent the activation signatures, are highly consistent between conditions and across days. In addition, they are minimally influenced by the dataset used to train the model. Additionally, we proposed a method for visualising each individual’s muscle activation signature, which has several potential clinical and scientific applications. This is the first study to provide conclusive evidence of the existence of individual muscle activation signatures.
year | journal | country | edition | language |
---|---|---|---|---|
2020-07-24 |