Statistical considerations in the analysis of accelerometry-based activity monitor data
- PMID: 22157776
- DOI: 10.1249/MSS.0b013e3182399e0f
Statistical considerations in the analysis of accelerometry-based activity monitor data
Abstract
We review and discuss three statistical aspects of accelerometer-based estimates of physical activity energy expenditure (PAEE):1) the nature of the relationship between accelerometer output and PAEE;2) statistical aspects of calibration studies; and 3) two specialized statistical methods that are applicable to the problem of measurement error modeling and missing data methods.We call for a continuing development of statistical methods that use more characteristics of the accelerometer signal to estimate PAEE, advocate the use of bias and SE statistics and inclusion of cross-validation in accelerometer research designs, and encourage more efforts to understand systematic and random errors in accelerometer-based estimates of PAEE.
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