Incomplete data are quite common in biomedical and other types of research, especially in longitudinal studies. During the last three decades, a vast amount of work has been done in the area. This has led, on the one hand, to a rich taxonomy of missing-data concepts, issues, and methods and, on the other hand, to a variety of data-analytic tools. Elements of taxonomy include: missing data patterns, mechanisms, and modeling frameworks; inferential paradigms; and sensitivity analysis frameworks. These are described in detail. A variety of concrete modeling devices is presented. To make matters concrete, two case studies are considered. The first one concerns quality of life among breast cancer patients, while the second one examines data from...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
In observational studies, collected data often differ from "gold standard" data preferred for statis...
Incomplete data are quite common in biomedical and other types of research, especially in longitudin...
Missing data are a prevailing problem in any type of data analyses. A participant variable is consid...
Longitudinal studies are almost always plagued by missing data. Examples include research data in pu...
Missing data (a) reside at threemissing data levels of analysis (item-, construct-, and person-level...
This article presents a review of popular parametric, semiparametric and ad-hoc approaches for analy...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
We provide conceptual introductions to missingness mechanisms—missing completely at random (MCAR), m...
Missing data arise almost ubiquitously in applied settings, and can pose a substantial threat to the...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Principled methods with which to appropriately analyze missing data have long existed; however, broa...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Background: Geriatric studies often miss data of frail participants. The aim of this paper is to exp...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
In observational studies, collected data often differ from "gold standard" data preferred for statis...
Incomplete data are quite common in biomedical and other types of research, especially in longitudin...
Missing data are a prevailing problem in any type of data analyses. A participant variable is consid...
Longitudinal studies are almost always plagued by missing data. Examples include research data in pu...
Missing data (a) reside at threemissing data levels of analysis (item-, construct-, and person-level...
This article presents a review of popular parametric, semiparametric and ad-hoc approaches for analy...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
We provide conceptual introductions to missingness mechanisms—missing completely at random (MCAR), m...
Missing data arise almost ubiquitously in applied settings, and can pose a substantial threat to the...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Principled methods with which to appropriately analyze missing data have long existed; however, broa...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Background: Geriatric studies often miss data of frail participants. The aim of this paper is to exp...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
In observational studies, collected data often differ from "gold standard" data preferred for statis...