\u3cp\u3eRetrospective clinical datasets are often characterized by a relatively small sample size and many missing data. In this case, a common way for handling the missingness consists in discarding from the analysis patients with missing covariates, further reducing the sample size. Alternatively, if the mechanism that generated the missing allows, incomplete data can be imputed on the basis of the observed data, avoiding the reduction of the sample size and allowing methods to deal with complete data later on. Moreover, methodologies for data imputation might depend on the particular purpose and might achieve better results by considering specific characteristics of the domain. The problem of missing data treatment is studied in the con...
Background: A Bayesian network meta-analysis (NMA) model is a statistical method aimed at estimating...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
In this thesis multiple imputation, survival analysis, and propensity score analysis are combined in...
BackgroundAvailability of linked biomedical and social science data has risen dramatically in past d...
The selection of variables used to predict a time to event outcome is a common and important issue w...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
Rationale This paper presents a Bayesian approach using WinBUGS for analysing survival data in which...
According to the estimations of the World Health Organization and the International Agency for Resea...
Incomplete data are a common feature in many domains, from clinical trials to industrial application...
In survival analysis, censored observations can be regarded as missing event time data. For analysis...
Data sets with missing values are a pervasive problem within medical research. Building lifetime pre...
Missing values are common in medical datasets and may be amenable to data imputation when modelling ...
The rich ITS data is a precious resource for transportatio n researchers and practitioners. However,...
© 2015 Elsevier Inc. The goal is to investigate the prediction performance of tree-based techniques ...
Data mining and machine learning approaches can be used to predict breast cancer recurrence. However...
Background: A Bayesian network meta-analysis (NMA) model is a statistical method aimed at estimating...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
In this thesis multiple imputation, survival analysis, and propensity score analysis are combined in...
BackgroundAvailability of linked biomedical and social science data has risen dramatically in past d...
The selection of variables used to predict a time to event outcome is a common and important issue w...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
Rationale This paper presents a Bayesian approach using WinBUGS for analysing survival data in which...
According to the estimations of the World Health Organization and the International Agency for Resea...
Incomplete data are a common feature in many domains, from clinical trials to industrial application...
In survival analysis, censored observations can be regarded as missing event time data. For analysis...
Data sets with missing values are a pervasive problem within medical research. Building lifetime pre...
Missing values are common in medical datasets and may be amenable to data imputation when modelling ...
The rich ITS data is a precious resource for transportatio n researchers and practitioners. However,...
© 2015 Elsevier Inc. The goal is to investigate the prediction performance of tree-based techniques ...
Data mining and machine learning approaches can be used to predict breast cancer recurrence. However...
Background: A Bayesian network meta-analysis (NMA) model is a statistical method aimed at estimating...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
In this thesis multiple imputation, survival analysis, and propensity score analysis are combined in...