Competing risks occur frequently in follow-up clinical studies. To assess treatment or covariate effects, measures of clinical impact based on crude cumulative incidence should be considered, such as relative risks or the absolute risk reduction. In this work, transformation models through suitable link functions provide a straightforward approach to obtain point and interval estimates of such measures. An extension of the Klein and Andersen proposal, based on pseudo-values, is considered. Non-additive effects were tested by interactions between baseline (spline function on time) and covariates. The methods are applied to the evaluation of the impact of axillary lymph node nanometastases on metastatic relapse of breast cancer patients. Furt...
In medical research, investigators are often interested in estimating marginal survival distribution...
The course of a disease is frequently characterized by a sequence of non fatal events related to dis...
In survival analysis with competing risks, the treatment effect is typically expressed using cause-s...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
While nonparametric methods have been well established for inference on competing risks data, parame...
Prognostic studies often involve modeling competing risks, where an individual can experience only o...
International audiencePatients are frequently exposed to failure from several mutually exclusive cau...
In survival analyses, competing risks are encountered where the subjects under study are at risk for...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Most clinical studies use conventional methods for survival analysis and calculate the risk of the e...
Evaluation of a therapeutic strategy is complex when the course of a disease is characterized by the...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
The thesis concerns regression models related to the competing risks setting in survival analysis an...
Competing risks occur often in survival analysis. In present work, we study different ap- proaches t...
Competing risks is commonly encountered in survival data. While fundamental methods have been establ...
In medical research, investigators are often interested in estimating marginal survival distribution...
The course of a disease is frequently characterized by a sequence of non fatal events related to dis...
In survival analysis with competing risks, the treatment effect is typically expressed using cause-s...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
While nonparametric methods have been well established for inference on competing risks data, parame...
Prognostic studies often involve modeling competing risks, where an individual can experience only o...
International audiencePatients are frequently exposed to failure from several mutually exclusive cau...
In survival analyses, competing risks are encountered where the subjects under study are at risk for...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Most clinical studies use conventional methods for survival analysis and calculate the risk of the e...
Evaluation of a therapeutic strategy is complex when the course of a disease is characterized by the...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
The thesis concerns regression models related to the competing risks setting in survival analysis an...
Competing risks occur often in survival analysis. In present work, we study different ap- proaches t...
Competing risks is commonly encountered in survival data. While fundamental methods have been establ...
In medical research, investigators are often interested in estimating marginal survival distribution...
The course of a disease is frequently characterized by a sequence of non fatal events related to dis...
In survival analysis with competing risks, the treatment effect is typically expressed using cause-s...