Health-related quality of life assessment is important in the clinical evaluation of patients with metastatic disease that may offer useful information in understanding the clinical effectiveness of a treatment. To assess if a set of explicative variables impacts on the health-related quality of life, regression models are routinely adopted. However, the interest of researchers may be focussed on modelling other parts (e.g. quantiles) of this conditional distribution. In this paper, we present an approach based on quantile and M-quantile regression to achieve this goal. We applied the methodologies to a prospective, randomized, multi-centre clinical trial. In order to take into account the hierarchical nature of the data we extended the M-quantile regression model to a three-level random effects specification and estimated it by maximum likelihood

Borgoni, R., Del Bianco, P., Salvati, N., Schmid, T., Tzavidis, N. (2018). Modelling the distribution of health-related quality of life of advanced melanoma patients in a longitudinal multi-centre clinical trial using M-quantile random effects regression. STATISTICAL METHODS IN MEDICAL RESEARCH, 27(2), 549-563 [10.1177/0962280216636651].

Modelling the distribution of health-related quality of life of advanced melanoma patients in a longitudinal multi-centre clinical trial using M-quantile random effects regression

Borgoni, R;
2018

Abstract

Health-related quality of life assessment is important in the clinical evaluation of patients with metastatic disease that may offer useful information in understanding the clinical effectiveness of a treatment. To assess if a set of explicative variables impacts on the health-related quality of life, regression models are routinely adopted. However, the interest of researchers may be focussed on modelling other parts (e.g. quantiles) of this conditional distribution. In this paper, we present an approach based on quantile and M-quantile regression to achieve this goal. We applied the methodologies to a prospective, randomized, multi-centre clinical trial. In order to take into account the hierarchical nature of the data we extended the M-quantile regression model to a three-level random effects specification and estimated it by maximum likelihood
Articolo in rivista - Articolo scientifico
Hierarchical data; Phase III study; Rotterdam Symptom Checklist; quantile regression; robust estimation
English
2018
27
2
549
563
reserved
Borgoni, R., Del Bianco, P., Salvati, N., Schmid, T., Tzavidis, N. (2018). Modelling the distribution of health-related quality of life of advanced melanoma patients in a longitudinal multi-centre clinical trial using M-quantile random effects regression. STATISTICAL METHODS IN MEDICAL RESEARCH, 27(2), 549-563 [10.1177/0962280216636651].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/131782
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