The importance of preventing and treating incomplete data in effectiveness studies is nowadays emphasized. However, most of the publications focus on randomized clinical trials (RCT). One flexible technique for statistical inference with missing data is multiple imputation (MI). Since methods such as MI rely on the assumption of missing data being at random (MAR), a sensitivity analysis for testing the robustness against departures from this assumption is required. In this paper we present a sensitivity analysis technique based on posterior predictive checking, which takes into consideration the concept of clinical significance used in the evaluation of intra-individual changes. We demonstrate the possibilities this technique can offer with...
Within epidemiological and clinical research, missing data are a common issue which are often inapp...
Analysis of longitudinal randomised controlled trials is frequently complicated because patients dev...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
The importance of preventing and treating incomplete data in effectiveness studies is nowadays empha...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Missing data due to loss to follow-up or intercurrent events are unintended, but unfortunately inevi...
© 2016 Dr. Panteha Hayati RezvanBackground: Missing data commonly occur in medical research, in part...
Randomized controlled trials provide essential evidence for the evaluation of new and existing medic...
Randomized controlled trials provide essential evidence for the evaluation of new and existing medic...
Missing data are a common issue in cost-effectiveness analysis (CEA) alongside randomised trials and...
It is important to understand the effects of a drug as actually taken (effectiveness) and when taken...
Missing data due to loss to follow-up or intercurrent events are unintended, but unfortunately inevi...
<p>Background: Missing values are a common problem for data analyses in observational studies, which...
BACKGROUND: Multiple Imputation as usually implemented assumes that data are Missing At Random (MAR)...
BACKGROUND: Multiple Imputation as usually implemented assumes that data are Missing At Random (MAR)...
Within epidemiological and clinical research, missing data are a common issue which are often inapp...
Analysis of longitudinal randomised controlled trials is frequently complicated because patients dev...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
The importance of preventing and treating incomplete data in effectiveness studies is nowadays empha...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Missing data due to loss to follow-up or intercurrent events are unintended, but unfortunately inevi...
© 2016 Dr. Panteha Hayati RezvanBackground: Missing data commonly occur in medical research, in part...
Randomized controlled trials provide essential evidence for the evaluation of new and existing medic...
Randomized controlled trials provide essential evidence for the evaluation of new and existing medic...
Missing data are a common issue in cost-effectiveness analysis (CEA) alongside randomised trials and...
It is important to understand the effects of a drug as actually taken (effectiveness) and when taken...
Missing data due to loss to follow-up or intercurrent events are unintended, but unfortunately inevi...
<p>Background: Missing values are a common problem for data analyses in observational studies, which...
BACKGROUND: Multiple Imputation as usually implemented assumes that data are Missing At Random (MAR)...
BACKGROUND: Multiple Imputation as usually implemented assumes that data are Missing At Random (MAR)...
Within epidemiological and clinical research, missing data are a common issue which are often inapp...
Analysis of longitudinal randomised controlled trials is frequently complicated because patients dev...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...