| Literature DB >> 16188039 |
Abstract
BACKGROUND: The basal metabolic rate (BMR) of a mammal of mass M is commonly described by the power function alphaM(beta) where alpha and beta are constants determined by linear regression of the logarithm of BMR on the logarithm of M (i. e., beta is the slope and alpha is the intercept in regression analysis). Since Kleiber's demonstration that, for 13 measurements of BMR, the logarithm of BMR is closely approximated by a straight line with slope 0.75, it has often been assumed that the value of beta is exactly 3/4 (Kleiber's law).Entities:
Mesh:
Year: 2005 PMID: 16188039 PMCID: PMC1262780 DOI: 10.1186/1742-4682-2-39
Source DB: PubMed Journal: Theor Biol Med Model ISSN: 1742-4682 Impact factor: 2.432
Results of regression analysis of the logarithm of basal metabolic rate on the logarithm of body mass.
| Body mass | n | Slope | (95% CI) | Reference |
| 0.0025 – 367 kg | 391 | 0.707 | (0.691 – 0.724) | 10 |
| 0.0025 – 0.200 kg | 208 | 0.624 | (0.608 – 0.717) | 10 |
| 0.200 – 10.00 kg | 150 | 0.707 | (0.657 – 0.757) | 18 |
| 10.00 – 367 kg | 33 | 0.877 | (0.700 – 1.06) | 10 |
| 0.0024 – 326 kg | 619 | 0.687 | (0.674 – 0.701) | 11 |
| 0.0024 – 0.200 kg | 382 | 0.652 | (0.613 – 0.692) | 11 |
| 0.200 – 10.00 kg | 206 | 0.718 | (0.674 – 0.761) | 11 |
| 10.00 – 324 kg | 31 | 0.902 | (0.706 – 1.10) | 11 |
Minimal sum of squares of residuals (SSR) and P values from the F test for reduction of variance for models that predict the basal metabolic rate
| Model | SSR | P* | SSR/n | SSR | P* | SSR/n |
| Kleiber's Law | 18.87 | 0.0306 | 12.99 | 0.033 | ||
| Equation (1) | 16.62† | 0.057† | 0.0269† | 12.35‡ | 0.28‡ | .0316‡ |
| Equation (4) | 15.98† | 0.019† | 0.0258† | 11.26‡ | 0.070‡ | .0288‡ |
| Equation (5) | 15.90† | 0.017† | 0.0257† | 11.17‡ | 0.065‡ | .0286‡ |
| Equation (7) | 15.93† | 0.018† | 0.0257† | 11.13‡ | 0.065‡ | .0280‡ |
* P value for reduction of variance calculated using the F test. The variance in the numerator is the variance from the optimal fit of Kleiber's law.
† Calculated using data from reference 11
‡ Calculated using data from reference 10
Scaling exponents from LSLR of BMR predictions using Equation (4) or Equation (5) with parameters that optimise the fit to data of White and Seymour.
| Source of body-weight data | BMR predictions based on: | |
| Equation (4) | Equation (5) | |
| Heusner (10) | 0.701 | 0.704 |
| Kleiber (1, 3)† | 0.728 | 0.744 |
† To make the data of Kleiber comparable to other data sets analysed, multiple data points for a species were replaced by a single data point calculated as the average value of body weight and the average value of BMR for the species. The MLE and 95% CI for the scaling exponent calculated from LSLR are, respectively, 0.750 and 0.728 – 0.771.