V v Measuring Pedometer Accuracy in Free Living Conditions L. Paige Perilli, Erin Siebert, Caitlyn Elliott, & Joonkoo Yun COLLEGE OF PUBLIC HEALTH AND.

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v v Measuring Pedometer Accuracy in Free Living Conditions L. Paige Perilli, Erin Siebert, Caitlyn Elliott, & Joonkoo Yun COLLEGE OF PUBLIC HEALTH AND HUMAN SCIENCES Introduction Pedometers are a frequently used tool to measure physical activity (Stanish & Draheim, 2005). The accuracy of pedometers has been of interest given the popularity of the tool. Many potential sources of error, including missing data. This missing data can be a significant problem if researchers are interested in directly comparing between groups and/or conditions. Impossible to make direct comparisons without knowing how much data is missing. Purpose The purpose of the study is to examine how much information is missed when participants are asked to follow the common instructions of pedometer daily wear. Future Questions What are appropriate strategies to increase participant compliances regarding wear time. Log Reminders, s Social Support References Garnier, D., & Bénéfice, É. (2006). Reliable Method to Estimate Characteristics of Sleep and Physical Inactivity in Free-Living Conditions Using Accelerometry. Annals of Epidemiology, 16(5), 364– 369. doi: /j.annepidem /j.annepidem Stanish H.I., & Draheim, C.C. (2005). Walking habits of adults with mental retardation. Mental Retardation, 43, Omron 720 Pedometer Actical Accelerometer Wrist accelerometer is worn on the right wrist. The belt is to be worn around the waist with the pedometer and accelerometer over the illiac crest. Methods Participants 29 participants (16 males and 13 females) Recruited from a university community in the Northwest Equipment Pedometer: Omron ITC (Bannockburn, IL) Accelerometer - Actical (Mini-Mitter, Bend, OR) Research Design Participants were blinded for the specific research questions, but were told the overall objective of the study. Participants were randomly assigned to either the experimental or the control group Participants in experimental group were given a log to record wear time. Procedures All participants were asked to wear the belt from waking up until going to bed for at least seven consecutive days. One accelerometer strapped to wrist and a belt with an accelerometer and a pedometer to be worn over the iliac crest of hip. Methods – cont. Data Reduction To find the amount of missing wear time: Compared the activity of the wrist accelerometer to the hip accelerometer. Each day consists of 1,440 data points Missing wear time was estimated after rising in the morning and prior to bedtime. The following criteria of physical activity count from accelerometer were used as guidelines for missing wear time: Wake-up - at least 5 minutes in a row over 100 physical activity count Sleep - at least 5 minutes in a row under 25 (Garnier & Benefice, 2006), The pedometer data was compared with the accelerometer to see how many daily steps the data is missing. Comparing the wrist and hip data tells us how much pedometer data is missing. The wrist activity counts will then be used to calculate steps missed by now wearing the pedometer. Data Analysis To find the amount of missing wear time: The percent of time the participants wore the pedometer were calculated based on number of minutes spent awake divided by amount of minutes the participant wore his or her waist belt. One way ANOVA was run to compare difference of wear time between experimental and control groups. Preliminary Results These results are from 17 participants Participants on average wore their pedometers hours hours during weekdays hours during weekend days Participants were awake for an average of hours Weekdays hours Weekend days hours Subjects missed on average minutes of data Ranging minutes from to minutes Preliminary Results –cont. The overall percent of time participant did not wear pedometer belt while they were awake was 11.08% with 95% confidence interval (6.34%,15.81%) Experimental group missed 7.58% ranging from 3.13%-16.73% of their total wake time. Control group missed 14.66% ranging from 3.22% % of their total wake time. However, there was no statistical difference between the two groups, F(1,16) = 2.82, p >.05. Discussion Reported results are from a preliminary analysis of 17 subjects. More subjects are currently being recruited to increase sample size and target subjects are 80. Based upon preliminary analysis Participants are not wearing pedometer as instructed and it results in large amount of errors. Using the log does seem to increase subject compliance on wear time