Literature DB >> 23489010

A Bayesian goodness of fit test and semiparametric generalization of logistic regression with measurement data.

Angela Schörgendorfer1, Adam J Branscum, Timothy E Hanson.   

Abstract

Logistic regression is a popular tool for risk analysis in medical and population health science. With continuous response data, it is common to create a dichotomous outcome for logistic regression analysis by specifying a threshold for positivity. Fitting a linear regression to the nondichotomized response variable assuming a logistic sampling model for the data has been empirically shown to yield more efficient estimates of odds ratios than ordinary logistic regression of the dichotomized endpoint. We illustrate that risk inference is not robust to departures from the parametric logistic distribution. Moreover, the model assumption of proportional odds is generally not satisfied when the condition of a logistic distribution for the data is violated, leading to biased inference from a parametric logistic analysis. We develop novel Bayesian semiparametric methodology for testing goodness of fit of parametric logistic regression with continuous measurement data. The testing procedures hold for any cutoff threshold and our approach simultaneously provides the ability to perform semiparametric risk estimation. Bayes factors are calculated using the Savage-Dickey ratio for testing the null hypothesis of logistic regression versus a semiparametric generalization. We propose a fully Bayesian and a computationally efficient empirical Bayesian approach to testing, and we present methods for semiparametric estimation of risks, relative risks, and odds ratios when parametric logistic regression fails. Theoretical results establish the consistency of the empirical Bayes test. Results from simulated data show that the proposed approach provides accurate inference irrespective of whether parametric assumptions hold or not. Evaluation of risk factors for obesity shows that different inferences are derived from an analysis of a real data set when deviations from a logistic distribution are permissible in a flexible semiparametric framework.
© 2013, The International Biometric Society.

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Year:  2013        PMID: 23489010     DOI: 10.1111/biom.12007

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  4 in total

1.  Risk of using logistic regression to illustrate exposure-response relationship of infectious diseases.

Authors:  Jinma Ren; Zhen Ning; Carmen S Kirkness; Carl V Asche; Huaping Wang
Journal:  BMC Infect Dis       Date:  2014-10-04       Impact factor: 3.090

2.  Using marginal standardisation to estimate relative risk without dichotomising continuous outcomes.

Authors:  Ying Chen; Yilin Ning; Shih Ling Kao; Nathalie C Støer; Falk Müller-Riemenschneider; Kavita Venkataraman; Eric Yin Hao Khoo; E-Shyong Tai; Chuen Seng Tan
Journal:  BMC Med Res Methodol       Date:  2019-07-29       Impact factor: 4.615

3.  Convex and Concave Model 3D Printing for Designing Right-side Bronchial Blocker for Infants.

Authors:  Xiaomin Duan; Wei Wang; Wenping Ma; Zhenhui Mao; Fangliang Xing; Xin Zhao
Journal:  Int J Bioprint       Date:  2022-04-29

4.  Wealth inequality as a predictor of HIV-related knowledge in Nigeria.

Authors:  Lena Faust; Sanni Yaya; Michael Ekholuenetale
Journal:  BMJ Glob Health       Date:  2017-12-20
  4 in total

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