TY - JOUR
T1 - Methodology for generating continuous prediction equations for pulmonary function measures
AU - Sherrill, Duane L.
AU - Lebowitz, Michael D.
AU - Knudson, Ronald J.
AU - Burrows, Benjamin
N1 - Funding Information:
The authors thank Srinivosan Vijay-Anand for his assistance in developing the necessary software. This work was supported by SCOR Grant HL 114136 from the National Heart, Lung, and Blood Institute and BRSG 2507 RR05675-20.
PY - 1991/6
Y1 - 1991/6
N2 - A mathematical procedure is described for fitting piecewise linear equations constrained to join at estimable multiple junctions or breakpoints. The model parameters, a combination of both linear and nonlinear, are estimated using a "Separable Least Squares" algorithm. In this algorithm the linear parameters, estimated using the General Linear Model, are nested within the iterations of a nonlinear optimization routine. This formulation allows additional covariates to be included in the model and can be easily expanded to include and number of line segments, both linear and nonlinear. The procedure is demonstrated by estimating continuous lung function reference equations for healthy normal subjects. Comparison of these reference equations with previously published equations derived for the same subjects, illustrates the advantages of having continuous equations throughout the age range of the data.
AB - A mathematical procedure is described for fitting piecewise linear equations constrained to join at estimable multiple junctions or breakpoints. The model parameters, a combination of both linear and nonlinear, are estimated using a "Separable Least Squares" algorithm. In this algorithm the linear parameters, estimated using the General Linear Model, are nested within the iterations of a nonlinear optimization routine. This formulation allows additional covariates to be included in the model and can be easily expanded to include and number of line segments, both linear and nonlinear. The procedure is demonstrated by estimating continuous lung function reference equations for healthy normal subjects. Comparison of these reference equations with previously published equations derived for the same subjects, illustrates the advantages of having continuous equations throughout the age range of the data.
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U2 - 10.1016/0010-4809(91)90047-Z
DO - 10.1016/0010-4809(91)90047-Z
M3 - Article
C2 - 1868694
AN - SCOPUS:0025772863
SN - 0010-4809
VL - 24
SP - 249
EP - 260
JO - Computers and Biomedical Research
JF - Computers and Biomedical Research
IS - 3
ER -