TY - JOUR PY - 2016// TI - Model-robust inference for continuous threshold regression models JO - Biometrics A1 - Fong, Youyi A1 - Di, Chongzhi A1 - Huang, Ying A1 - Gilbert, Peter B. SP - 452 EP - 462 VL - 73 IS - 2 N2 - We study threshold regression models that allow the relationship between the outcome and a covariate of interest to change across a threshold value in the covariate. In particular, we focus on continuous threshold models, which experience no jump at the threshold. Continuous threshold regression functions can provide a useful summary of the association between outcome and the covariate of interest, because they offer a balance between flexibility and simplicity. Motivated by collaborative works in studying immune response biomarkers of transmission of infectious diseases, we study estimation of continuous threshold models in this article with particular attention to inference under model misspecification. We derive the limiting distribution of the maximum likelihood estimator, and propose both Wald and test-inversion confidence intervals. We evaluate finite sample performance of our methods, compare them with bootstrap confidence intervals, and provide guidelines for practitioners to choose the most appropriate method in real data analysis. We illustrate the application of our methods with examples from the HIV-1 immune correlates studies.

© 2016, The International Biometric Society.

Language: en

LA - en SN - 0006-341X UR - http://dx.doi.org/10.1111/biom.12623 ID - ref1 ER -