Exact(3)
Logistic regression analysis was applied to examine whether hearing impairment was associated with CKD and was fitted with increasing degrees of adjustment: a model adjusted for age (Model 1) and a model adjusted for age, sex, smoking, alcohol, BMI, DM, HTN, dyslipidemia, and microalbuminuria (Model 2).
As β1 decreased to −0.006 (−0.028; 0.015) after full adjustment, a model in which β1 was fixed at zero was fitted additionally.
As with the separate analyses, eQTLs were identified using an additive linear model with sex, race and age included as covariates for adjustment; a model for dependence between tissues was also used for the association of each gene-SNP pair.
Similar(57)
Large and complex models tend to require long periods of vocational adjustment before a model is fully understood.
We propose a new form of model (improved accuracy) associated with a generalized modelling protocol (response to the adjustment) through a model generator named HEMERA.
In addition, these alternative methods 5– 8 require prior training or parametric adjustment of a model for a species family, whereas UFM does not.
Second, since this adjustment produces a model with identical coefficients (i.e., β k ) except for the intercept (i.e., β 0 )—which increases from −8.1 to −3.6 we can change the intercept directly in the quadratic model.
This ad-hoc measure can result in negative estimates since variance components do not automatically decrease with more adjustment in a model as error sums of squares do; negative estimates were truncated to zero.
A more conclusive and consequent step would be to replace the non-informative response model for nonresponse adjustments by a model that uses the information collected from nonresponding schools.
Since the distances to be covered and the diffusion constant of G-Actin are known quantities not amenable to much adjustment, an improved model in this regard would necessarily rely on some change in the rate of convective transport.
Their structural adjustment policies serve a model of economic governance that transfers risk on to the shoulders of ordinary workers and the young.
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