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The effects of averaging on accuracy of IVIVC model predictions

โœ Scribed by Clare Gaynor; Adrian Dunne; John Davis


Publisher
John Wiley and Sons
Year
2009
Tongue
English
Weight
298 KB
Volume
98
Category
Article
ISSN
0022-3549

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โœฆ Synopsis


When using the method of deconvolution to establish an IVIVC model, the choice of whether or not to average the data before analysis is a crucial one. Averaging the data leads to a loss of information and current advice on best practise suggests that deconvolution take place at the individual subject level. This study compares each approach and concludes that averaging has a detrimental effect on the accuracy of predictions produced.


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