In clinical studies of hematologic and oncologic diseases, the outcomes of interest are generally composite time to event endpoints which are usually defined by occurrence of different event types. Nonetheless, clinicians are interested in studying only one event type, which leads to a competing risks situation. In this context, Pepe and Mori presented a quantity directly derived from the cumulative incidence: the conditional probability. This function defines the probability that a given event occurs, conditionally on not having had a competing event by that time. The objective of this paper is to present this conditional cumulative incidence function and to compare its use to the cumulative incidence in different data sets. Different scen...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
BackgroundIn many studies, some information might not be available for the whole cohort, some covari...
In clinical studies of hematologic and oncologic diseases, the outcomes of interest are generally co...
International audienceIn clinical studies of hematologic and oncologic diseases, the outcomes of int...
Statistical techniques such as Kaplan-Meier estimate is commonly used and interpreted as the probabi...
Background In studies of all-cause mortality, the fundamental epidemiological concepts of rate and r...
Item does not contain fulltextBACKGROUND: In studies of all-cause mortality, the fundamental epidemi...
Estimating cumulative event probabilities in time-to-event data can be complicated by competing even...
This study was funded by FEDER through the Operational Program Competitiveness and Internationalizat...
Studies in cardiology often record the time to multiple disease events such as death, myocardial inf...
Studies in cardiology often record the time to multiple disease events such as death, myocardial inf...
While nonparametric methods have been well established for inference on competing risks data, parame...
<div><div><p class="abstract"><strong>BACKGROUND:</strong> Competing risks arise when the subject is...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
BackgroundIn many studies, some information might not be available for the whole cohort, some covari...
In clinical studies of hematologic and oncologic diseases, the outcomes of interest are generally co...
International audienceIn clinical studies of hematologic and oncologic diseases, the outcomes of int...
Statistical techniques such as Kaplan-Meier estimate is commonly used and interpreted as the probabi...
Background In studies of all-cause mortality, the fundamental epidemiological concepts of rate and r...
Item does not contain fulltextBACKGROUND: In studies of all-cause mortality, the fundamental epidemi...
Estimating cumulative event probabilities in time-to-event data can be complicated by competing even...
This study was funded by FEDER through the Operational Program Competitiveness and Internationalizat...
Studies in cardiology often record the time to multiple disease events such as death, myocardial inf...
Studies in cardiology often record the time to multiple disease events such as death, myocardial inf...
While nonparametric methods have been well established for inference on competing risks data, parame...
<div><div><p class="abstract"><strong>BACKGROUND:</strong> Competing risks arise when the subject is...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
BackgroundIn many studies, some information might not be available for the whole cohort, some covari...