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Data imputation for accelerometer-measured physical activity: the combined approach 123

Data imputation for accelerometer-measured physical activity: the combined approach 123
Data imputation for accelerometer-measured physical activity: the combined approach 123
Background: Accelerometers are gaining popularity for the assessment of the physical activity level; however, compliance is a problem that results in missing data. Data from study days in which the accelerometer is not worn for a number of hours that are sufficient to reach a predetermined cutoff value are considered invalid and discarded. The problem of missing data is commonly handled by imputation; however, all traditional imputation methods ignore the available information from invalid days. Objective: In this study, I propose a new approach to the imputation of missing accelerometer data that takes into account the data available from invalid days. Design: A total of 4069 participants in NHANES waves 2003-2004 and 2005-2006 who provided 7 d of valid accelerometer data were used to illustrate this new approach. The method of imputation was a combined approach that combined the available data from valid days and invalid days to impute missing values. Simulation studies were carried out to compare this new combined approach with the traditional imputation method for 1) accuracy and 2) effect-size estimation of the sexphysical activity relation by using the root mean squared error (RMSE). Results: The combined approach performed significantly better than traditional imputation method (all t tests P<0..001), with the percentage reduction of the RMSE for accuracy and effect-size estimation that ranged from 12.4% to 17.3% and 19.8% to 32.9%, respectively. Conclusion: The combined approach significantly outperforms the traditional imputation algorithm.
0002-9165
965-971
Lee, Paul H.
02620eab-ae7f-4a1c-bad1-8a50e7e48951
Lee, Paul H.
02620eab-ae7f-4a1c-bad1-8a50e7e48951

Lee, Paul H. (2013) Data imputation for accelerometer-measured physical activity: the combined approach 123. American Journal of Clinical Nutrition, 97 (5), 965-971. (doi:10.3945/ajcn.112.052738).

Record type: Article

Abstract

Background: Accelerometers are gaining popularity for the assessment of the physical activity level; however, compliance is a problem that results in missing data. Data from study days in which the accelerometer is not worn for a number of hours that are sufficient to reach a predetermined cutoff value are considered invalid and discarded. The problem of missing data is commonly handled by imputation; however, all traditional imputation methods ignore the available information from invalid days. Objective: In this study, I propose a new approach to the imputation of missing accelerometer data that takes into account the data available from invalid days. Design: A total of 4069 participants in NHANES waves 2003-2004 and 2005-2006 who provided 7 d of valid accelerometer data were used to illustrate this new approach. The method of imputation was a combined approach that combined the available data from valid days and invalid days to impute missing values. Simulation studies were carried out to compare this new combined approach with the traditional imputation method for 1) accuracy and 2) effect-size estimation of the sexphysical activity relation by using the root mean squared error (RMSE). Results: The combined approach performed significantly better than traditional imputation method (all t tests P<0..001), with the percentage reduction of the RMSE for accuracy and effect-size estimation that ranged from 12.4% to 17.3% and 19.8% to 32.9%, respectively. Conclusion: The combined approach significantly outperforms the traditional imputation algorithm.

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More information

Accepted/In Press date: 13 February 2013
Published date: 1 May 2013

Identifiers

Local EPrints ID: 479923
URI: http://eprints.soton.ac.uk/id/eprint/479923
ISSN: 0002-9165
PURE UUID: f99f4d78-0904-4cf3-bca6-6e0c8df48ffe
ORCID for Paul H. Lee: ORCID iD orcid.org/0000-0002-5729-6450

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Date deposited: 28 Jul 2023 16:52
Last modified: 17 Mar 2024 04:16

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Author: Paul H. Lee ORCID iD

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