TY - JOUR
T1 - Nonlinear analysis of ambulatory activity patterns in community-dwelling older adults
AU - Cavanaugh, James T.
AU - Kochi, Naomi
AU - Stergiou, Nicholas
N1 - Funding Information:
This work was supported by the National Institutes of Health ( K25HD047194 , R21AG027072, and P30AG028716), the Department of Veterans Affairs, the Nebraska Research Initiative, and the Department of Physical Therapy of the University of New England.
PY - 2010
Y1 - 2010
N2 - BackgroundThe natural ambulatory activity patterns of older adults are not well understood. User-worn monitors illuminate patterns of ambulatory activity and generate data suitable for analysis using measures derived from nonlinear dynamics.MethodsAmbulatory activity data were collected continuously from 157 community-dwelling older adults for 2 weeks. Participants were separated post hoc into groups based on the mean number of steps per day: highly active (steps ≥ 10,000), moderately active (5,000 ≤ steps < 10,000 steps), and inactive (steps <5,000 steps). Detrended fluctuation analysis (DFA), entropy rate (ER), and approximate entropy (ApEn) were used to examine the complexity of daily time series composed of 1-minute step count values. Coefficient of variation was used to examine time series variability. Between-group differences for each parameter were evaluated using analysis of variance.ResultsAll groups displayed patterns of fluctuating step count values containing complex temporal structure. DFA, ER, and ApEn parameter values increased monotonically and significantly with increasing activity level (p <. 001). The variability of step count fluctuations did not differ among groups.ConclusionsHighly active participants had more complex patterns of ambulatory activity than less active participants. The results supported the idea that, in addition to the volume of activity produced by an individual, patterns of ambulatory activity contain unique information that shows promise for offering insights into walking behavior associated with healthy aging.
AB - BackgroundThe natural ambulatory activity patterns of older adults are not well understood. User-worn monitors illuminate patterns of ambulatory activity and generate data suitable for analysis using measures derived from nonlinear dynamics.MethodsAmbulatory activity data were collected continuously from 157 community-dwelling older adults for 2 weeks. Participants were separated post hoc into groups based on the mean number of steps per day: highly active (steps ≥ 10,000), moderately active (5,000 ≤ steps < 10,000 steps), and inactive (steps <5,000 steps). Detrended fluctuation analysis (DFA), entropy rate (ER), and approximate entropy (ApEn) were used to examine the complexity of daily time series composed of 1-minute step count values. Coefficient of variation was used to examine time series variability. Between-group differences for each parameter were evaluated using analysis of variance.ResultsAll groups displayed patterns of fluctuating step count values containing complex temporal structure. DFA, ER, and ApEn parameter values increased monotonically and significantly with increasing activity level (p <. 001). The variability of step count fluctuations did not differ among groups.ConclusionsHighly active participants had more complex patterns of ambulatory activity than less active participants. The results supported the idea that, in addition to the volume of activity produced by an individual, patterns of ambulatory activity contain unique information that shows promise for offering insights into walking behavior associated with healthy aging.
KW - Aging
KW - Locomotion
KW - Long-range correlations
KW - Nonlinear analysis
KW - Physical activity
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U2 - 10.1093/gerona/glp144
DO - 10.1093/gerona/glp144
M3 - Article
C2 - 19822625
AN - SCOPUS:75649093389
SN - 1079-5006
VL - 65
SP - 197
EP - 203
JO - Journals of Gerontology - Series A Biological Sciences and Medical Sciences
JF - Journals of Gerontology - Series A Biological Sciences and Medical Sciences
IS - 2
ER -