Prediction of body cell mass, fat-free mass, and total body water with bioelectrical impedance analysis: effects of race, sex, and disease.

Am J Clin Nutr

Gastrointestinal Division, St Luke's-Roosevelt Hospital Center, College of Physicians and Surgeons, Columbia University, New York 10025, USA.

Published: September 1996

AI Article Synopsis

  • The study focuses on improving body composition estimation techniques, specifically body cell mass (BCM), fat-free mass (FFM), and total body water (TBW), using single-frequency bioelectrical impedance analysis (BIA) on diverse subjects, including healthy individuals and those with HIV.
  • It was found that using specific transformations and race- and sex-specific equations significantly enhanced the accuracy of the estimates, even though the addition of weight to the model was less critical.
  • The final predictive equations were validated through internal and external methods, indicating that these simplified techniques can reliably be used in clinical settings for body composition analysis.

Article Abstract

The inability to precisely estimate body composition with simple, inexpensive, and easily applied techniques is an impediment to clinical investigations in nutrition. In this study, predictive equations for body cell mass (BCM), fat-free mass (FFM), and total body water (TBW) were derived from direct measurements through use of single-frequency bioelectrical impedance analysis (BIA) in 332 subjects, including white, black, and Hispanic men and women, who were both healthy control subjects and patients infected with the human immunodeficiency virus (HIV). Preliminary studies showed more accurate predictions of BCM when parallel-transformed values of reactance were used rather than the values reported by the bioelectrical impedance analyzer. Modeling equations derived after logarithmic transformation of height, reactance, and impedance were more accurate predictors than equations using height2/resistance, and the use of sex-specific equations further improved accuracy. The effect of adding weight to the modeling equation was less important than the BIA measurements. The resulting equations were validated internally, and race and disease (HIV infection) were shown not to affect the predictions. The equation for FFM was validated externally against results derived from hydrodensitometry in 440 healthy individuals; the SEE was < 5%. These results indicate that body composition can be estimated with simple and easily applied techniques, and that the estimates are sufficiently precise for use in clinical investigation and practice.

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http://dx.doi.org/10.1093/ajcn/64.3.489SDOI Listing

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