Rationale, aims, and objectivesTime to the occurrence of an event is often studied in health research. Survival analysis differs from other designs in that follow‐up times for individuals who do not experience the event by the end of the study (called censored) are accounted for in the analysis. Cox regression is the standard method for analysing censored data, but the assumptions required of these models are easily violated. In this paper, we introduce classification tree analysis (CTA) as a flexible alternative for modelling censored data. Classification tree analysis is a “decision‐tree”–like classification model that provides parsimonious, transparent (ie, easy to visually display and interpret) decision rules that maximize predictive a...
Survival analysis is a valuable tool for estimating the time until specific events, such as death or...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
One of the most popular uses for tree-based methods is in survival analysis for censored time data w...
Predicting health outcomes such as a disease onset, recovery or mortality is an important part of me...
Survival analysis with high dimensional data deals with the prediction of patient survival based ...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Interval-censored failure time data as a general type of survival data often arises in medicine and ...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
Survival outcome has been one of the major endpoints for clinical trials; it gives information on th...
Predicting time-to-event from longitudinal data where different events occur at different time point...
Survival analysis is a valuable tool for estimating the time until specific events, such as death or...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
One of the most popular uses for tree-based methods is in survival analysis for censored time data w...
Predicting health outcomes such as a disease onset, recovery or mortality is an important part of me...
Survival analysis with high dimensional data deals with the prediction of patient survival based ...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Interval-censored failure time data as a general type of survival data often arises in medicine and ...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
The Cox proportional hazard model may predict whether an individual belonging to a given group would...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Survival trees are a useful regression tool to model the relationship between a survival time and a...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
Survival outcome has been one of the major endpoints for clinical trials; it gives information on th...
Predicting time-to-event from longitudinal data where different events occur at different time point...
Survival analysis is a valuable tool for estimating the time until specific events, such as death or...
Survival analysis aims to study the occurrence of a particular event during a follow-up period. Rece...
One of the most popular uses for tree-based methods is in survival analysis for censored time data w...