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Hot Deck Multiple Imputation for Handling Missing Accelerometer Data.

Publication ,  Journal Article
Butera, NM; Li, S; Evenson, KR; Di, C; Buchner, DM; LaMonte, MJ; LaCroix, AZ; Herring, A
Published in: Statistics in biosciences
July 2019

Missing data due to non-wear are common in accelerometer studies measuring physical activity and sedentary behavior. Accelerometer output are high-dimensional time-series data that are episodic and often highly skewed, presenting unique challenges for handling missing data. Common methods for missing accelerometry either are ad-hoc, require restrictive parametric assumptions, or do not appropriately impute bouts. This study developed a flexible hot deck multiple imputation (MI; i.e., "replacing" missing data with observed values) procedure to handle missing accelerometry. For each missing segment of accelerometry, "donor pools" contained observed segments from either the same or different participants, and 10 imputed segments were randomly drawn from the donor pool according to selection weights, where the donor pool and selection weight depended on variables associated with non-wear and/or accelerometer-based measures. A simulation study of 2,550 women compared hot deck MI to two standard methods in the field: available case (AC) analysis (i.e., analyzing all observed accelerometry with no restriction on wear time or number of days) and complete case (CC) analysis (i.e., analyzing only participants that wore the accelerometer for ≥10 hours for 4-7 days). This was repeated using accelerometry from the entire 24-hour day and daytime (10am- 8pm) only, and data were missing at random. For the entire 24-hour day, MI produced less bias and better 95% confidence interval (CI) coverage than AC and CC. For the daytime only, MI produced less bias and better 95% CI coverage than AC; CC produced similar bias and 95% CI coverage, but longer 95% CIs than MI.

Duke Scholars

Published In

Statistics in biosciences

DOI

EISSN

1867-1772

ISSN

1867-1764

Publication Date

July 2019

Volume

11

Issue

2

Start / End Page

422 / 448

Related Subject Headings

  • 4905 Statistics
  • 3102 Bioinformatics and computational biology
 

Citation

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Butera, N. M., Li, S., Evenson, K. R., Di, C., Buchner, D. M., LaMonte, M. J., … Herring, A. (2019). Hot Deck Multiple Imputation for Handling Missing Accelerometer Data. Statistics in Biosciences, 11(2), 422–448. https://doi.org/10.1007/s12561-018-9225-4
Butera, Nicole M., Siying Li, Kelly R. Evenson, Chongzhi Di, David M. Buchner, Michael J. LaMonte, Andrea Z. LaCroix, and Amy Herring. “Hot Deck Multiple Imputation for Handling Missing Accelerometer Data.Statistics in Biosciences 11, no. 2 (July 2019): 422–48. https://doi.org/10.1007/s12561-018-9225-4.
Butera NM, Li S, Evenson KR, Di C, Buchner DM, LaMonte MJ, et al. Hot Deck Multiple Imputation for Handling Missing Accelerometer Data. Statistics in biosciences. 2019 Jul;11(2):422–48.
Butera, Nicole M., et al. “Hot Deck Multiple Imputation for Handling Missing Accelerometer Data.Statistics in Biosciences, vol. 11, no. 2, July 2019, pp. 422–48. Epmc, doi:10.1007/s12561-018-9225-4.
Butera NM, Li S, Evenson KR, Di C, Buchner DM, LaMonte MJ, LaCroix AZ, Herring A. Hot Deck Multiple Imputation for Handling Missing Accelerometer Data. Statistics in biosciences. 2019 Jul;11(2):422–448.
Journal cover image

Published In

Statistics in biosciences

DOI

EISSN

1867-1772

ISSN

1867-1764

Publication Date

July 2019

Volume

11

Issue

2

Start / End Page

422 / 448

Related Subject Headings

  • 4905 Statistics
  • 3102 Bioinformatics and computational biology