| Literature DB >> 33429072 |
John Warmenhoven1, Norma Bargary2, Dominik Liebl3, Andrew Harrison4, Mark A Robinson5, Edward Gunning2, Giles Hooker6.
Abstract
Principal components analysis (PCA) of waveforms and functional PCA (fPCA) are statistical approaches used to explore patterns of variability in biomechanical curve data, with fPCA being an accepted statistical method grounded within the functional data analysis (FDA) statistical framework. This technical note demonstrates that PCA of waveforms is the most rudimentary form of FDA, and consequently can be rationalised within the FDA framework of statistical processes. Mathematical proofing applied demonstrations of both techniques, and an example of when fPCA may be of greater benefit to control over smoothing of functional principal components is provided using an open access motion sickness dataset. Finally, open access software is provided with this paper as means of priming the biomechanics community for using these methods as a part of future functional data explorations.Entities:
Keywords: Curves; PCA; Statistics; Variability
Year: 2020 PMID: 33429072 DOI: 10.1016/j.jbiomech.2020.110106
Source DB: PubMed Journal: J Biomech ISSN: 0021-9290 Impact factor: 2.712