Unknown

Dataset Information

0

Statistical Interactions from a Growth Curve Perspective.


ABSTRACT: Logistic regression is widely used to evaluate the association between risk factors and a binary outcome. The logistic curve is symmetric around its point of inflection. Alternative families of curves, such as the additive Gompertz or Guerrero-Johnson models, have been proposed in various scenarios due to their asymmetry: disease risk may initially increase rapidly and be followed by a longer period where the rate of growth slowly decreases. When modeling binary outcomes in relation to risk factors, an additive logistic model may not provide a good fit to the data. Suppose the outcome and an additive function of the risk factors are indeed related through an asymmetric function, but we model the relationship using a logistic function. We illustrate - both from a mathematical framework and through a simulation-based evaluation - that higher-order terms, such as pairwise interactions and quadratic terms, may be required in a logistic regression model to obtain a good fit to the data. Importantly, as significant higher-order terms may be a manifestation of model misspecification, these terms should be cautiously interpreted; a more pragmatic approach is to develop contrasts of disease risk coming from a good fitting model. We illustrate these concepts in 2 cohort studies examining early death for late-stage colorectal and pancreatic cancer cases, and 2 case-control studies investigating NAT2 acetylation, smoking, and advanced colorectal adenoma and bladder cancer.

SUBMITTER: Devlin SM 

PROVIDER: S-EPMC6377073 | biostudies-literature | 2016

REPOSITORIES: biostudies-literature

altmetric image

Publications

Statistical Interactions from a Growth Curve Perspective.

Devlin Sean M SM   Satagopan Jaya M JM  

Human heredity 20160101 1-2


Logistic regression is widely used to evaluate the association between risk factors and a binary outcome. The logistic curve is symmetric around its point of inflection. Alternative families of curves, such as the additive Gompertz or Guerrero-Johnson models, have been proposed in various scenarios due to their asymmetry: disease risk may initially increase rapidly and be followed by a longer period where the rate of growth slowly decreases. When modeling binary outcomes in relation to risk fact  ...[more]

Similar Datasets

2009-06-25 | GSE12977 | GEO
2019-07-31 | PXD008661 | Pride
| PRJEB9843 | ENA
| S-EPMC5932409 | biostudies-literature
2011-06-27 | GSE26777 | GEO
2011-06-27 | GSE26779 | GEO
| S-EPMC8340600 | biostudies-literature
| S-EPMC7255246 | biostudies-literature
| S-EPMC4102405 | biostudies-literature
2009-06-25 | GSE12923 | GEO