Scientific Reports (Jan 2024)

Relationship between neck kinematics and neck dissability index. An approach based on functional regression

  • Elisa Aragón-Basanta,
  • William Venegas,
  • Guillermo Ayala,
  • Alvaro Page,
  • Pilar Serra-Añó

DOI
https://doi.org/10.1038/s41598-023-50562-x
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Numerous studies use numerical variables of neck movement to predict the level of severity of a pathology. However, the correlation between these numerical variables and disability levels is low, less than 0.4 in the best cases, even less in subjects with nonspecific neck pain. This work aims to use Functional Data Analysis (FDA), in particular scalar-on-function regression, to predict the Neck Disability Index (NDI) of subjects with nonspecific neck pain using the complete movement as predictors. Several functional regression models have been implemented, doubling the multiple correlation coefficient obtained when only scalar predictors are used. The best predictive model considers the angular velocity curves as a predictor, obtaining a multiple correlation coefficient of 0.64. In addition, functional models facilitate the interpretation of the relationship between the kinematic curves and the NDI since they allow identifying which parts of the curves most influence the differences in the predicted variable. In this case, the movement’s braking phases contribute to a greater or lesser NDI. So, it is concluded that functional regression models have greater predictive capacity than usual ones by considering practically all the information in the curve while allowing a physical interpretation of the results.