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Rudolph, Jacqueline E.; Cole, Stephen R.; & Edwards, Jessie K. (2018). Parametric Assumptions Equate to Hidden Observations: Comparing the Efficiency of Nonparametric and Parametric Models for Estimating Time to Aids or Death in a Cohort of HIV-Positive Women. BMC Medical Research Methodology, 18(1), 142. PMCID: PMC6245810

Abstract

BACKGROUND: When conducting a survival analysis, researchers might consider two broad classes of models: nonparametric models and parametric models. While nonparametric models are more flexible because they make few assumptions regarding the shape of the data distribution, parametric models are more efficient. Here we sought to make concrete the difference in efficiency between these two model types using effective sample size.
METHODS: We compared cumulative risk of AIDS or death estimated using four survival models - nonparametric, generalized gamma, Weibull, and exponential - and data from 1164 HIV patients who were alive and AIDS-free in 1995. We added pseudo-observations to the sample until the spread of the 95% confidence limits for the nonparametric model became less than that for the parametric models.
RESULTS: We found the 3-parameter generalized gamma to be a good fit to the nonparametric risk curve, but the 1-parameter exponential both underestimated and overestimated the risk at different times. Using two year-risk as an example, we had to add 354, 593, and 3960 observations for the nonparametric model to be as efficient as the generalized gamma, Weibull, and exponential models, respectively.
CONCLUSIONS: These added observations represent the hidden observations underlying the efficiency gained through parametric model form assumptions. If the model is correctly specified, the efficiency gain may be justified, as appeared to be the case for the generalized gamma model. Otherwise, precision will be improved, but at the cost of specification bias, as was the case for the exponential model.

URL

http://dx.doi.org/10.1186/s12874-018-0605-8

Reference Type

Journal Article

Year Published

2018

Journal Title

BMC Medical Research Methodology

Author(s)

Rudolph, Jacqueline E.
Cole, Stephen R.
Edwards, Jessie K.

Article Type

Regular

PMCID

PMC6245810

Data Set/Study

Women’s Interagency Human Immunodeficiency Virus (HIV) Study (WIHS)

Continent/Country

United States

State

Nonspecific

Sex/Gender

Women

ORCiD

Edwards, J -0000-0002-1741-335X