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Validation of equations used to predict plasma osmolality in a healthy adult cohort.

Authors :
Heavens KR
Kenefick RW
Caruso EM
Spitz MG
Cheuvront SN
Source :
The American journal of clinical nutrition [Am J Clin Nutr] 2014 Nov; Vol. 100 (5), pp. 1252-6. Date of Electronic Publication: 2014 Aug 13.
Publication Year :
2014

Abstract

Background: Plasma osmometry and the osmol gap have long been used to provide clinicians with important diagnostic and prognostic patient information.<br />Objective: We compared different equations used for predicting plasma osmolality when its direct measurement was not practical or an osmol gap was of interest and identified the best performers.<br />Design: The osmolality of plasma was measured by using freezing point depression by microosmometer and osmolarity calculated from biosensor measures of select analytes according to the dictates of each formula tested. After a rigid analytic prescreen of 36 originally published equations, a bootstrap regression analysis was used to compare shrinkage and model agreement.<br />Results: Sixty healthy volunteers provided 163 plasma samples for analysis. Of 36 equations considered, 11 equations met the prescreen variables for the bootstrap regression analysis. Of the 11 equations, 8 equations met shrinkage and apparent model error thresholds, and 5 equations were deemed optimal with an original model osmol gap <5 mmol.<br />Conclusions: The use of bootstrap regression provides a unique insight for osmolality prediction equation performance from a very large theoretical population of healthy people. Of the original 36 equations evaluated, 5 equations appeared optimal for the prediction of osmolality when its direct measurement was not practical or an osmol gap was of interest. Note that 4 of 5 optimal equations were derived from a nonhealthy population.<br /> (© 2014 American Society for Nutrition.)

Details

Language :
English
ISSN :
1938-3207
Volume :
100
Issue :
5
Database :
MEDLINE
Journal :
The American journal of clinical nutrition
Publication Type :
Academic Journal
Accession number :
25332323
Full Text :
https://doi.org/10.3945/ajcn.114.091009