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Does within-person variability predict errors in healthy adults aged 18–90?

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Pages 1722-1731 | Received 17 Dec 2015, Accepted 07 Jun 2016, Published online: 12 Jul 2016
 

ABSTRACT

This study investigated within-person variability on basic psychomotor tasks in relation to errors on a higher order cognitive task. We were interested in whether more variable individuals were more prone to making errors, and whether this relationship varied with age. Variability was assessed using simple and choice reaction time, while errors of omission (misses) and commission (false alarms) were obtained from simple and complex visual search tasks. Data from 557 participants aged 18–90 years were included in the analysis. Greater variability was associated with more misses, and distribution analyses showed that slower responses were behind this effect. Variability was also associated with false alarms, but the pattern was inconsistent. Taking age into account revealed that the association between variability and misses in the simple visual search condition was stronger in older (aged 65–90 years) participants. The results suggest the relationship between greater variability and errors of omission (misses) may be related to inattention. Measures of variability may therefore provide valuable insights into individual differences in error rates and, more broadly, may also offer early warning of persons who are more prone to errors in visual search.

Acknowledgements

We would like to thank Rowena Handley for her assistance in collecting data for the Bunce et al. (2008) study.

Additional information

Funding

The Bunce et al. (2008) study was supported by the Economic and Social Research Council, UK [grant number RES-000-22-1399].

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