fbpx
Wikipedia

Fractal physiology

Fractal physiology refers to the study of physiological systems using complexity science methods, such as chaos measure, entropy, and fractal dimensions. The underlying assumption is that biological systems are complex and exhibit non-linear patterns of activity, and that characterizing that complexity (using dedicated mathematical approaches) is useful to understand, and make inferences and predictions about the system.[1]

Main Findings edit

Neurophysiology edit

Quantifications of the complexity of brain activity is used in the context of neuropsychiatric diseases and mental states characterization, such as schizophrenia,[2] affective disorders,[3] or neurodegenerative disorders.[4] Particularly, diminished EEG complexity is typically associated with increased symptomatology.

Cardiovascular systems edit

The complexity of Heart Rate Variability is a useful predictor of cardiovascular health.[5]

Software edit

In Python, NeuroKit provides a comprehensive set of functions for complexity analysis of physiological data.[6][5] AntroPy implements several measures to quantify the complexity of time-series.[7]

In R, TSEntropies provides methods to quantify the entropy.[8] casnet implements a collection of analytic tools for studying signals recorded from complex adaptive systems.[9]

In MATLAB, The Neurophysiological Biomarker Toolbox (NBT) allows the computation of Detrended fluctuation analysis. EZ Entropy implements the entropy analysis of physiological time-series.[10]

See also edit

References edit

  1. ^ Bassingthwaighte, James B. (1994). Fractal physiology. New York: Published for the American Physiological Society by Oxford University Press. ISBN 0195080130.
  2. ^ an der Heiden, U. (February 2006). "Schizophrenia as a Dynamical Disease". Pharmacopsychiatry. 39: 36–42. doi:10.1055/s-2006-931487. PMID 16508894.
  3. ^ Tretter, F.; Gebicke-Haerter, P. J.; an der Heiden, U.; Rujescu, D.; Mewes, H. W.; Turck, C. W. (May 2011). "Affective Disorders as Complex Dynamic Diseases – a Perspective from Systems Biology". Pharmacopsychiatry. 44 (S 01): S2–S8. doi:10.1055/s-0031-1275278. PMID 21544742.
  4. ^ Smits, Fenne Margreeth; Porcaro, Camillo; Cottone, Carlo; Cancelli, Andrea; Rossini, Paolo Maria; Tecchio, Franca (12 February 2016). "Electroencephalographic Fractal Dimension in Healthy Ageing and Alzheimer's Disease". PLOS ONE. 11 (2): e0149587. Bibcode:2016PLoSO..1149587S. doi:10.1371/journal.pone.0149587. PMC 4752290. PMID 26872349.
  5. ^ a b Pham, Tam; Lau, Zen Juen; Chen, S. H. Annabel; Makowski, Dominique (9 June 2021). "Heart Rate Variability in Psychology: A Review of HRV Indices and an Analysis Tutorial". Sensors. 21 (12): 3998. Bibcode:2021Senso..21.3998P. doi:10.3390/s21123998. PMC 8230044. PMID 34207927.
  6. ^ Makowski, Dominique; Pham, Tam; Lau, Zen J.; Brammer, Jan C.; Lespinasse, François; Pham, Hung; Schölzel, Christopher; Chen, S. H. Annabel (August 2021). "NeuroKit2: A Python toolbox for neurophysiological signal processing". Behavior Research Methods. 53 (4): 1689–1696. doi:10.3758/s13428-020-01516-y. PMID 33528817. S2CID 231757711.
  7. ^ Vallat, Raphael (22 March 2022). "raphaelvallat/antropy". github.com. Retrieved 22 March 2022.
  8. ^ Tomcala, Jiri (8 October 2018). "TSEntropies". CRAN. Retrieved 22 March 2022.
  9. ^ Hasselman, Fred (6 March 2022). "casnet". github.com. Retrieved 22 March 2022.
  10. ^ Li, Peng (December 2019). "EZ Entropy: a software application for the entropy analysis of physiological time-series". BioMedical Engineering OnLine. 18 (1): 30. doi:10.1186/s12938-019-0650-5. PMC 6425722. PMID 30894180.


fractal, physiology, refers, study, physiological, systems, using, complexity, science, methods, such, chaos, measure, entropy, fractal, dimensions, underlying, assumption, that, biological, systems, complex, exhibit, linear, patterns, activity, that, characte. Fractal physiology refers to the study of physiological systems using complexity science methods such as chaos measure entropy and fractal dimensions The underlying assumption is that biological systems are complex and exhibit non linear patterns of activity and that characterizing that complexity using dedicated mathematical approaches is useful to understand and make inferences and predictions about the system 1 Contents 1 Main Findings 1 1 Neurophysiology 1 2 Cardiovascular systems 2 Software 3 See also 4 ReferencesMain Findings editThis section needs expansion You can help by adding to it March 2022 Neurophysiology edit Quantifications of the complexity of brain activity is used in the context of neuropsychiatric diseases and mental states characterization such as schizophrenia 2 affective disorders 3 or neurodegenerative disorders 4 Particularly diminished EEG complexity is typically associated with increased symptomatology Cardiovascular systems edit The complexity of Heart Rate Variability is a useful predictor of cardiovascular health 5 Software editIn Python NeuroKit provides a comprehensive set of functions for complexity analysis of physiological data 6 5 AntroPy implements several measures to quantify the complexity of time series 7 In R TSEntropies provides methods to quantify the entropy 8 casnet implements a collection of analytic tools for studying signals recorded from complex adaptive systems 9 In MATLAB The Neurophysiological Biomarker Toolbox NBT allows the computation of Detrended fluctuation analysis EZ Entropy implements the entropy analysis of physiological time series 10 See also editFractal dimension Entropy Complex systemReferences edit Bassingthwaighte James B 1994 Fractal physiology New York Published for the American Physiological Society by Oxford University Press ISBN 0195080130 an der Heiden U February 2006 Schizophrenia as a Dynamical Disease Pharmacopsychiatry 39 36 42 doi 10 1055 s 2006 931487 PMID 16508894 Tretter F Gebicke Haerter P J an der Heiden U Rujescu D Mewes H W Turck C W May 2011 Affective Disorders as Complex Dynamic Diseases a Perspective from Systems Biology Pharmacopsychiatry 44 S 01 S2 S8 doi 10 1055 s 0031 1275278 PMID 21544742 Smits Fenne Margreeth Porcaro Camillo Cottone Carlo Cancelli Andrea Rossini Paolo Maria Tecchio Franca 12 February 2016 Electroencephalographic Fractal Dimension in Healthy Ageing and Alzheimer s Disease PLOS ONE 11 2 e0149587 Bibcode 2016PLoSO 1149587S doi 10 1371 journal pone 0149587 PMC 4752290 PMID 26872349 a b Pham Tam Lau Zen Juen Chen S H Annabel Makowski Dominique 9 June 2021 Heart Rate Variability in Psychology A Review of HRV Indices and an Analysis Tutorial Sensors 21 12 3998 Bibcode 2021Senso 21 3998P doi 10 3390 s21123998 PMC 8230044 PMID 34207927 Makowski Dominique Pham Tam Lau Zen J Brammer Jan C Lespinasse Francois Pham Hung Scholzel Christopher Chen S H Annabel August 2021 NeuroKit2 A Python toolbox for neurophysiological signal processing Behavior Research Methods 53 4 1689 1696 doi 10 3758 s13428 020 01516 y PMID 33528817 S2CID 231757711 Vallat Raphael 22 March 2022 raphaelvallat antropy github com Retrieved 22 March 2022 Tomcala Jiri 8 October 2018 TSEntropies CRAN Retrieved 22 March 2022 Hasselman Fred 6 March 2022 casnet github com Retrieved 22 March 2022 Li Peng December 2019 EZ Entropy a software application for the entropy analysis of physiological time series BioMedical Engineering OnLine 18 1 30 doi 10 1186 s12938 019 0650 5 PMC 6425722 PMID 30894180 nbsp This chaos theory related article is a stub You can help Wikipedia by expanding it vte nbsp This biology article is a stub You can help Wikipedia by expanding it vte Retrieved from https en wikipedia org w index php title Fractal physiology amp oldid 1221069669, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.