Incorrect least-squares regression coefficients in method-comparison analysis

Clin Chem. 1979 Mar;25(3):432-8.

Abstract

The least-squares method is frequently used to calculate the slope and intercept of the best line through a set of data points. However, least-squares regression slopes and intercepts may be incorrect if the underlying assumptions of the least-squares model are not met. Two factors in particular that may result in incorrect least-squares regression coefficients are: (a) imprecision in the measurement of the independent (x-axis) variable and (b) inclusion of outliers in the data analysis. We compared the methods of Deming, Mandel, and Bartlett in estimating the known slope of a regression line when the independent variable is measured with imprecision, and found the method of Deming to be the most useful. Significant error in the least-squares slope estimation occurs when the ratio of the standard deviation of measurement of a single x value to the standard deviation of the x-data set exceeds 0.2. Errors in the least-squares coefficients attributable to outliers can be avoided by eliminating data points whose vertical distance from the regression line exceed four times the standard error the estimate.

Publication types

  • Comparative Study

MeSH terms

  • Blood Chemical Analysis / methods*
  • Calcium / blood
  • Humans
  • Regression Analysis
  • Sodium / blood

Substances

  • Sodium
  • Calcium